This table lists the benchmark results for the high-res multi-view scenario. The following metrics are evaluated:

(*) For exact definitions, detailing how potentially incomplete ground truth is taken into account, see our paper.

The datasets are grouped into different categories, and result averages are computed for a category and method if results of the method are available for all datasets within the category. Note that the category "all" includes both the high-res multi-view and the low-res many-view scenarios.

Methods with suffix _ROB may participate in the Robust Vision Challenge.

Click a dataset result cell to show a visualization of the reconstruction. For training datasets, ground truth and accuracy / completeness visualizations are also available. The visualizations may not work with mobile browsers.




Method Infoallhigh-res
multi-view
indooroutdoorbotani.boulde.bridgedoorexhibi.lectur.living.loungeobserv.old co.statueterrac.
sort bysorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
LCM-MVSNet99.93 199.92 199.94 199.99 199.97 199.90 199.89 1499.98 199.99 199.96 199.77 2100.00 199.81 16100.00 199.85 30
Gipumacopyleft99.03 8899.16 6298.64 23699.94 298.51 11499.32 2699.75 4399.58 3898.60 30099.62 4098.22 11399.51 43297.70 20899.73 19997.89 469
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
OurMVSNet-221017-099.37 2899.31 4199.53 3899.91 398.98 7299.63 799.58 10399.44 5299.78 3999.76 1596.39 26599.92 6599.44 5499.92 7199.68 73
pmmvs699.67 399.70 399.60 1699.90 499.27 2699.53 999.76 3999.64 2699.84 3099.83 499.50 999.87 13599.36 5799.92 7199.64 86
PS-MVSNAJss99.46 1799.49 1699.35 8099.90 498.15 14999.20 4999.65 7799.48 4499.92 899.71 2298.07 12899.96 1399.53 48100.00 199.93 11
testf199.25 4099.16 6299.51 4999.89 699.63 398.71 10699.69 5798.90 13699.43 10899.35 11298.86 3599.67 34697.81 19199.81 14099.24 301
APD_test299.25 4099.16 6299.51 4999.89 699.63 398.71 10699.69 5798.90 13699.43 10899.35 11298.86 3599.67 34697.81 19199.81 14099.24 301
ANet_high99.57 1099.67 699.28 9699.89 698.09 15899.14 5899.93 699.82 899.93 699.81 899.17 2099.94 4199.31 61100.00 199.82 36
anonymousdsp99.51 1499.47 2199.62 999.88 999.08 6999.34 2399.69 5798.93 13299.65 6399.72 2198.93 3399.95 2599.11 77100.00 199.82 36
v7n99.53 1299.57 1399.41 6999.88 998.54 11299.45 1499.61 9299.66 2399.68 5799.66 3298.44 8499.95 2599.73 2899.96 2899.75 62
mvs_tets99.63 699.67 699.49 5599.88 998.61 10499.34 2399.71 4899.27 7499.90 1499.74 1899.68 499.97 699.55 4399.99 599.88 20
test_fmvsmconf0.01_n99.57 1099.63 1099.36 7499.87 1298.13 15298.08 19799.95 299.45 5099.98 299.75 1699.80 199.97 699.82 1299.99 599.99 2
jajsoiax99.58 999.61 1199.48 5799.87 1298.61 10499.28 4099.66 7199.09 11099.89 1899.68 2599.53 799.97 699.50 5099.99 599.87 22
test_djsdf99.52 1399.51 1599.53 3899.86 1498.74 9299.39 2099.56 12199.11 10099.70 5199.73 2099.00 2799.97 699.26 6599.98 1299.89 16
MIMVSNet199.38 2799.32 3999.55 2899.86 1499.19 4199.41 1799.59 10099.59 3699.71 4999.57 4997.12 21499.90 8199.21 7099.87 10099.54 143
LTVRE_ROB98.40 199.67 399.71 299.56 2699.85 1699.11 6499.90 199.78 3699.63 2899.78 3999.67 3099.48 1099.81 22699.30 6299.97 2199.77 53
Andreas Kuhn, Heiko Hirschmüller, Daniel Scharstein, Helmut Mayer: A TV Prior for High-Quality Scalable Multi-View Stereo Reconstruction. International Journal of Computer Vision 2016
UniMVSNet_ETH3D99.69 299.69 499.69 399.84 1799.34 1999.69 599.58 10399.90 399.86 2499.78 1399.58 699.95 2599.00 8799.95 3999.78 50
SixPastTwentyTwo98.75 13898.62 15499.16 11899.83 1897.96 18199.28 4098.20 42699.37 6099.70 5199.65 3692.65 40099.93 5399.04 8499.84 11499.60 102
sc_t199.62 799.66 899.53 3899.82 1999.09 6899.50 1199.63 8299.88 499.86 2499.80 1199.03 2499.89 9799.48 5299.93 5799.60 102
Baseline_NR-MVSNet98.98 9898.86 11599.36 7499.82 1998.55 10997.47 30899.57 11199.37 6099.21 17499.61 4396.76 24299.83 19798.06 16499.83 12699.71 65
pm-mvs199.44 1999.48 1899.33 8999.80 2198.63 10199.29 3699.63 8299.30 7199.65 6399.60 4599.16 2299.82 20999.07 8099.83 12699.56 130
TransMVSNet (Re)99.44 1999.47 2199.36 7499.80 2198.58 10799.27 4299.57 11199.39 5899.75 4499.62 4099.17 2099.83 19799.06 8299.62 26699.66 80
K. test v398.00 26897.66 29899.03 14899.79 2397.56 22899.19 5392.47 53099.62 3299.52 8799.66 3289.61 44199.96 1399.25 6799.81 14099.56 130
test_fmvsmconf0.1_n99.49 1599.54 1499.34 8399.78 2498.11 15497.77 25599.90 1299.33 6699.97 399.66 3299.71 399.96 1399.79 1999.99 599.96 8
APD_test198.83 12298.66 14699.34 8399.78 2499.47 898.42 15199.45 17998.28 20098.98 21499.19 16097.76 15899.58 40396.57 32299.55 29798.97 363
test_vis3_rt99.14 6299.17 6099.07 13899.78 2498.38 12498.92 8399.94 397.80 24899.91 1299.67 3097.15 21298.91 50199.76 2399.56 29299.92 12
EGC-MVSNET85.24 51080.54 51399.34 8399.77 2799.20 3899.08 6299.29 26212.08 55020.84 55299.42 8997.55 17899.85 15997.08 26699.72 20898.96 366
Anonymous2024052198.69 15198.87 11198.16 31899.77 2795.11 38999.08 6299.44 18799.34 6599.33 13899.55 5694.10 36799.94 4199.25 6799.96 2899.42 219
FC-MVSNet-test99.27 3799.25 5299.34 8399.77 2798.37 12699.30 3599.57 11199.61 3499.40 11799.50 6897.12 21499.85 15999.02 8699.94 5199.80 45
test_vis1_n98.31 22798.50 17597.73 36599.76 3094.17 42298.68 10999.91 1096.31 37699.79 3899.57 4992.85 39699.42 45799.79 1999.84 11499.60 102
test_fmvs399.12 6999.41 2698.25 30599.76 3095.07 39099.05 6899.94 397.78 25199.82 3499.84 398.56 7399.71 31099.96 199.96 2899.97 4
XXY-MVS99.14 6299.15 6799.10 13099.76 3097.74 21298.85 9399.62 8998.48 18199.37 12599.49 7498.75 4799.86 14598.20 15299.80 15299.71 65
TDRefinement99.42 2399.38 2899.55 2899.76 3099.33 2099.68 699.71 4899.38 5999.53 8399.61 4398.64 6199.80 23598.24 14799.84 11499.52 161
dtuonlycased97.70 30398.19 23696.24 45699.75 3489.51 51794.69 48499.64 7998.23 20299.46 10198.57 34198.25 10799.85 15995.65 38299.44 33599.36 252
fmvsm_s_conf0.1_n_a99.17 5299.30 4498.80 19799.75 3496.59 30897.97 22899.86 1798.22 20499.88 2199.71 2298.59 6799.84 17999.73 2899.98 1299.98 3
tt080598.69 15198.62 15498.90 17899.75 3499.30 2199.15 5796.97 46998.86 14298.87 24997.62 43898.63 6398.96 49799.41 5698.29 46098.45 433
test_vis1_n_192098.40 20798.92 10296.81 43599.74 3790.76 50798.15 18599.91 1098.33 19199.89 1899.55 5695.07 32899.88 11599.76 2399.93 5799.79 47
usedtu_dtu_shiyan298.99 9498.86 11599.39 7299.73 3898.71 9899.05 6899.47 17099.16 9499.49 9499.12 18796.34 27199.93 5398.05 16699.36 34799.54 143
FOURS199.73 3899.67 299.43 1599.54 13299.43 5499.26 157
PEN-MVS99.41 2499.34 3599.62 999.73 3899.14 5799.29 3699.54 13299.62 3299.56 7499.42 8998.16 12299.96 1398.78 10299.93 5799.77 53
lessismore_v098.97 16299.73 3897.53 23186.71 54899.37 12599.52 6789.93 43699.92 6598.99 8899.72 20899.44 210
SteuartSystems-ACMMP98.79 13198.54 16799.54 3199.73 3899.16 4898.23 17499.31 24697.92 23898.90 23798.90 25898.00 13499.88 11596.15 35799.72 20899.58 117
Skip Steuart: Steuart Systems R&D Blog.
PVSNet_Blended_VisFu98.17 25198.15 24498.22 31199.73 3895.15 38697.36 32299.68 6494.45 45698.99 21399.27 13296.87 23199.94 4197.13 26399.91 8099.57 124
Vis-MVSNetpermissive99.34 2999.36 3299.27 9999.73 3898.26 13899.17 5499.78 3699.11 10099.27 15399.48 7598.82 3899.95 2598.94 9199.93 5799.59 109
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
tt0320-xc99.64 599.68 599.50 5499.72 4598.98 7299.51 1099.85 1999.86 699.88 2199.82 599.02 2699.90 8199.54 4499.95 3999.61 100
SSC-MVS98.71 14298.74 12898.62 24299.72 4596.08 33698.74 9998.64 39799.74 1299.67 5999.24 14594.57 34699.95 2599.11 7799.24 37399.82 36
test_f98.67 16198.87 11198.05 33399.72 4595.59 35598.51 13599.81 3296.30 37899.78 3999.82 596.14 27998.63 50999.82 1299.93 5799.95 9
ACMH96.65 799.25 4099.24 5399.26 10199.72 4598.38 12499.07 6599.55 12698.30 19599.65 6399.45 8499.22 1799.76 27298.44 13199.77 17299.64 86
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
tt032099.61 899.65 999.48 5799.71 4998.94 7999.54 899.83 2699.87 599.89 1899.82 598.75 4799.90 8199.54 4499.95 3999.59 109
fmvsm_s_conf0.1_n99.16 5699.33 3798.64 23699.71 4996.10 33197.87 24199.85 1998.56 17799.90 1499.68 2598.69 5799.85 15999.72 3099.98 1299.97 4
PS-CasMVS99.40 2599.33 3799.62 999.71 4999.10 6599.29 3699.53 13699.53 4199.46 10199.41 9498.23 11099.95 2598.89 9699.95 3999.81 41
DTE-MVSNet99.43 2299.35 3399.66 799.71 4999.30 2199.31 3099.51 14499.64 2699.56 7499.46 8098.23 11099.97 698.78 10299.93 5799.72 64
WR-MVS_H99.33 3099.22 5499.65 899.71 4999.24 2999.32 2699.55 12699.46 4999.50 9399.34 11697.30 20199.93 5398.90 9499.93 5799.77 53
HPM-MVS_fast99.01 9098.82 12199.57 2199.71 4999.35 1699.00 7399.50 14997.33 30198.94 23298.86 26998.75 4799.82 20997.53 22599.71 21799.56 130
ACMH+96.62 999.08 7999.00 9499.33 8999.71 4998.83 8798.60 12199.58 10399.11 10099.53 8399.18 16498.81 3999.67 34696.71 30699.77 17299.50 169
PMVScopyleft91.26 2097.86 28697.94 26997.65 37499.71 4997.94 18498.52 13098.68 39298.99 12497.52 40499.35 11297.41 19498.18 51691.59 49399.67 24596.82 506
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
FE-MVSNET299.15 5799.22 5498.94 16799.70 5797.49 23298.62 11899.67 7098.85 14599.34 13599.54 6298.47 7799.81 22698.93 9299.91 8099.51 165
KinetiMVS99.03 8899.02 9099.03 14899.70 5797.48 23598.43 14899.29 26299.70 1599.60 7199.07 20096.13 28199.94 4199.42 5599.87 10099.68 73
FIs99.14 6299.09 8299.29 9599.70 5798.28 13699.13 5999.52 14299.48 4499.24 16799.41 9496.79 23999.82 20998.69 11299.88 9599.76 58
VPNet98.87 11298.83 12099.01 15399.70 5797.62 22598.43 14899.35 22799.47 4799.28 15199.05 20896.72 24699.82 20998.09 16199.36 34799.59 109
fmvsm_s_conf0.1_n_299.20 5099.38 2898.65 23499.69 6196.08 33697.49 30399.90 1299.53 4199.88 2199.64 3798.51 7699.90 8199.83 1099.98 1299.97 4
test_cas_vis1_n_192098.33 22298.68 14197.27 40799.69 6192.29 47898.03 20899.85 1997.62 26399.96 499.62 4093.98 36899.74 29199.52 4999.86 10799.79 47
MP-MVS-pluss98.57 17898.23 23099.60 1699.69 6199.35 1697.16 34599.38 21394.87 44298.97 21898.99 23298.01 13399.88 11597.29 24699.70 22799.58 117
MP-MVS-pluss: MP-MVS-pluss. MP-MVS-pluss
SDMVSNet99.23 4599.32 3998.96 16499.68 6497.35 24598.84 9599.48 15999.69 1799.63 6699.68 2599.03 2499.96 1397.97 17799.92 7199.57 124
sd_testset99.28 3699.31 4199.19 11299.68 6498.06 16899.41 1799.30 25499.69 1799.63 6699.68 2599.25 1699.96 1397.25 24999.92 7199.57 124
test_fmvs1_n98.09 25998.28 21997.52 39299.68 6493.47 45698.63 11699.93 695.41 42799.68 5799.64 3791.88 41599.48 44199.82 1299.87 10099.62 92
CHOSEN 1792x268897.49 31997.14 33698.54 26599.68 6496.09 33496.50 39299.62 8991.58 50398.84 25498.97 23992.36 40399.88 11596.76 29899.95 3999.67 78
tfpnnormal98.90 10898.90 10598.91 17599.67 6897.82 20299.00 7399.44 18799.45 5099.51 9299.24 14598.20 11799.86 14595.92 36799.69 23399.04 349
MTAPA98.88 11198.64 15099.61 1399.67 6899.36 1598.43 14899.20 29098.83 14998.89 24098.90 25896.98 22599.92 6597.16 25699.70 22799.56 130
test_fmvsmvis_n_192099.26 3999.49 1698.54 26599.66 7096.97 28598.00 21699.85 1999.24 7799.92 899.50 6899.39 1299.95 2599.89 399.98 1298.71 408
mvs5depth99.30 3399.59 1298.44 28199.65 7195.35 37499.82 399.94 399.83 799.42 11299.94 298.13 12599.96 1399.63 3699.96 28100.00 1
fmvsm_l_conf0.5_n_a99.19 5199.27 4798.94 16799.65 7197.05 28097.80 25099.76 3998.70 15999.78 3999.11 18998.79 4399.95 2599.85 699.96 2899.83 33
WB-MVS98.52 19398.55 16598.43 28299.65 7195.59 35598.52 13098.77 38099.65 2599.52 8799.00 23094.34 35699.93 5398.65 11498.83 42399.76 58
CP-MVSNet99.21 4799.09 8299.56 2699.65 7198.96 7899.13 5999.34 23399.42 5599.33 13899.26 13897.01 22399.94 4198.74 10799.93 5799.79 47
HPM-MVScopyleft98.79 13198.53 16999.59 2099.65 7199.29 2399.16 5599.43 19396.74 35498.61 29798.38 36798.62 6499.87 13596.47 33499.67 24599.59 109
Chunlin Ren, Qingshan Xu, Shikun Zhang, Jiaqi Yang: Hierarchical Prior Mining for Non-local Multi-View Stereo. ICCV 2023
RPSCF98.62 17098.36 20499.42 6799.65 7199.42 1098.55 12699.57 11197.72 25698.90 23799.26 13896.12 28399.52 42695.72 37899.71 21799.32 273
NormalMVS98.26 23597.97 26599.15 12399.64 7797.83 19798.28 16899.43 19399.24 7798.80 26398.85 27289.76 43999.94 4198.04 16799.67 24599.68 73
lecture99.25 4099.12 7199.62 999.64 7799.40 1198.89 8899.51 14499.19 8999.37 12599.25 14398.36 9099.88 11598.23 14999.67 24599.59 109
fmvsm_l_conf0.5_n99.21 4799.28 4699.02 15199.64 7797.28 25797.82 24699.76 3998.73 15199.82 3499.09 19898.81 3999.95 2599.86 499.96 2899.83 33
test_fmvsmconf_n99.44 1999.48 1899.31 9499.64 7798.10 15797.68 27099.84 2399.29 7299.92 899.57 4999.60 599.96 1399.74 2799.98 1299.89 16
TSAR-MVS + MP.98.63 16798.49 18099.06 14499.64 7797.90 19098.51 13598.94 34496.96 33499.24 16798.89 26497.83 15199.81 22696.88 28899.49 32299.48 188
Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition
PM-MVS98.82 12598.72 13299.12 12699.64 7798.54 11297.98 22499.68 6497.62 26399.34 13599.18 16497.54 18099.77 26697.79 19399.74 19599.04 349
Elysia99.15 5799.14 6899.18 11399.63 8397.92 18698.50 13799.43 19399.67 2099.70 5199.13 18396.66 24999.98 499.54 4499.96 2899.64 86
StellarMVS99.15 5799.14 6899.18 11399.63 8397.92 18698.50 13799.43 19399.67 2099.70 5199.13 18396.66 24999.98 499.54 4499.96 2899.64 86
KD-MVS_self_test99.25 4099.18 5999.44 6599.63 8399.06 7098.69 10899.54 13299.31 6999.62 6999.53 6497.36 19899.86 14599.24 6999.71 21799.39 232
EU-MVSNet97.66 30798.50 17595.13 49799.63 8385.84 53298.35 16298.21 42598.23 20299.54 7999.46 8095.02 32999.68 34198.24 14799.87 10099.87 22
HyFIR lowres test97.19 34996.60 38098.96 16499.62 8797.28 25795.17 46899.50 14994.21 46199.01 20898.32 37786.61 46299.99 297.10 26599.84 11499.60 102
E5new99.05 8399.11 7498.85 18299.60 8897.30 25198.42 15199.63 8298.73 15199.26 15799.39 10198.71 5199.70 31998.43 13399.84 11499.54 143
E6new99.05 8399.11 7498.85 18299.60 8897.30 25198.42 15199.63 8298.73 15199.26 15799.39 10198.71 5199.70 31998.43 13399.84 11499.54 143
E699.05 8399.11 7498.85 18299.60 8897.30 25198.42 15199.63 8298.73 15199.26 15799.39 10198.71 5199.70 31998.43 13399.84 11499.54 143
E599.05 8399.11 7498.85 18299.60 8897.30 25198.42 15199.63 8298.73 15199.26 15799.39 10198.71 5199.70 31998.43 13399.84 11499.54 143
fmvsm_l_conf0.5_n_999.32 3299.43 2498.98 16099.59 9297.18 27197.44 31299.83 2699.56 3999.91 1299.34 11699.36 1399.93 5399.83 1099.98 1299.85 30
fmvsm_l_conf0.5_n_399.45 1899.48 1899.34 8399.59 9298.21 14697.82 24699.84 2399.41 5799.92 899.41 9499.51 899.95 2599.84 999.97 2199.87 22
aaatest99.45 6499.58 9498.93 8098.68 10999.60 9496.46 37099.53 8398.77 29299.83 19796.67 31199.64 25799.58 117
MED-MVS99.01 9098.84 11999.52 4499.58 9498.93 8098.68 10999.60 9498.85 14599.53 8399.16 17197.87 14999.83 19796.67 31199.62 26699.81 41
TestfortrainingZip a99.09 7398.92 10299.61 1399.58 9499.17 4398.68 10999.27 26998.85 14599.61 7099.16 17197.14 21399.86 14598.39 13899.57 28899.81 41
FE-MVSNET98.59 17598.50 17598.87 17999.58 9497.30 25198.08 19799.74 4496.94 33698.97 21899.10 19296.94 22799.74 29197.33 24299.86 10799.55 137
mmtdpeth99.30 3399.42 2598.92 17399.58 9496.89 29399.48 1399.92 899.92 298.26 34299.80 1198.33 9699.91 7499.56 4199.95 3999.97 4
ACMMP_NAP98.75 13898.48 18199.57 2199.58 9499.29 2397.82 24699.25 27796.94 33698.78 26599.12 18798.02 13299.84 17997.13 26399.67 24599.59 109
nrg03099.40 2599.35 3399.54 3199.58 9499.13 6098.98 7699.48 15999.68 1999.46 10199.26 13898.62 6499.73 29899.17 7499.92 7199.76 58
VDDNet98.21 24397.95 26699.01 15399.58 9497.74 21299.01 7197.29 45799.67 2098.97 21899.50 6890.45 43399.80 23597.88 18499.20 38299.48 188
COLMAP_ROBcopyleft96.50 1098.99 9498.85 11899.41 6999.58 9499.10 6598.74 9999.56 12199.09 11099.33 13899.19 16098.40 8699.72 30895.98 36599.76 18899.42 219
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
test_fmvsm_n_192099.33 3099.45 2398.99 15699.57 10397.73 21497.93 23099.83 2699.22 8099.93 699.30 12699.42 1199.96 1399.85 699.99 599.29 284
ZNCC-MVS98.68 15798.40 19399.54 3199.57 10399.21 3298.46 14599.29 26297.28 30898.11 35498.39 36598.00 13499.87 13596.86 29199.64 25799.55 137
MSP-MVS98.40 20798.00 26099.61 1399.57 10399.25 2898.57 12499.35 22797.55 27499.31 14797.71 43194.61 34599.88 11596.14 35899.19 38599.70 70
Zhenlong Yuan, Cong Liu, Fei Shen, Zhaoxin Li, Jingguo luo, Tianlu Mao and Zhaoqi Wang: MSP-MVS: Multi-granularity Segmentation Prior Guided Multi-View Stereo. AAAI2025
testgi98.32 22398.39 19698.13 32099.57 10395.54 35897.78 25299.49 15797.37 29899.19 17697.65 43598.96 3099.49 43796.50 33398.99 41199.34 262
MP-MVScopyleft98.46 19998.09 24999.54 3199.57 10399.22 3198.50 13799.19 29497.61 26697.58 39898.66 32297.40 19599.88 11594.72 40999.60 27599.54 143
Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo.
LPG-MVS_test98.71 14298.46 18599.47 6199.57 10398.97 7498.23 17499.48 15996.60 36199.10 18999.06 20198.71 5199.83 19795.58 38799.78 16499.62 92
LGP-MVS_train99.47 6199.57 10398.97 7499.48 15996.60 36199.10 18999.06 20198.71 5199.83 19795.58 38799.78 16499.62 92
IS-MVSNet98.19 24697.90 27599.08 13699.57 10397.97 17899.31 3098.32 41999.01 12398.98 21499.03 21391.59 41799.79 24895.49 39099.80 15299.48 188
viewdifsd2359ckpt1198.84 11999.04 8798.24 30799.56 11195.51 36097.38 31799.70 5499.16 9499.57 7299.40 9898.26 10599.71 31098.55 12599.82 13399.50 169
viewmsd2359difaftdt98.84 11999.04 8798.24 30799.56 11195.51 36097.38 31799.70 5499.16 9499.57 7299.40 9898.26 10599.71 31098.55 12599.82 13399.50 169
dcpmvs_298.78 13399.11 7497.78 35599.56 11193.67 45099.06 6699.86 1799.50 4399.66 6099.26 13897.21 20999.99 298.00 17299.91 8099.68 73
test_040298.76 13798.71 13598.93 17099.56 11198.14 15198.45 14799.34 23399.28 7398.95 22498.91 25598.34 9599.79 24895.63 38399.91 8098.86 384
EPP-MVSNet98.30 22898.04 25699.07 13899.56 11197.83 19799.29 3698.07 43299.03 12198.59 30299.13 18392.16 40899.90 8196.87 28999.68 23999.49 177
ACMMPcopyleft98.75 13898.50 17599.52 4499.56 11199.16 4898.87 8999.37 21797.16 32498.82 25999.01 22697.71 16199.87 13596.29 34999.69 23399.54 143
Qingshan Xu, Weihang Kong, Wenbing Tao, Marc Pollefeys: Multi-Scale Geometric Consistency Guided and Planar Prior Assisted Multi-View Stereo. IEEE Transactions on Pattern Analysis and Machine Intelligence
casdiffseed41469214799.09 7399.12 7199.01 15399.55 11797.91 18898.30 16699.68 6499.04 11999.19 17699.37 10598.98 2899.61 38798.13 15699.83 12699.50 169
fmvsm_s_conf0.5_n_a99.10 7299.20 5898.78 20499.55 11796.59 30897.79 25199.82 3198.21 20699.81 3699.53 6498.46 8299.84 17999.70 3399.97 2199.90 15
fmvsm_s_conf0.5_n99.09 7399.26 5098.61 24699.55 11796.09 33497.74 26399.81 3298.55 17899.85 2799.55 5698.60 6699.84 17999.69 3599.98 1299.89 16
FMVSNet199.17 5299.17 6099.17 11599.55 11798.24 14099.20 4999.44 18799.21 8299.43 10899.55 5697.82 15499.86 14598.42 13799.89 9499.41 222
Vis-MVSNet (Re-imp)97.46 32197.16 33398.34 29599.55 11796.10 33198.94 8198.44 41298.32 19398.16 34898.62 33488.76 44699.73 29893.88 43599.79 15999.18 323
ACMM96.08 1298.91 10698.73 13099.48 5799.55 11799.14 5798.07 20199.37 21797.62 26399.04 20398.96 24398.84 3799.79 24897.43 23699.65 25599.49 177
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
hybridcas99.08 7999.13 7098.92 17399.54 12397.61 22698.22 17899.66 7199.27 7499.40 11799.24 14598.47 7799.70 31998.59 11899.80 15299.46 200
test_fmvs298.70 14798.97 9897.89 34699.54 12394.05 42798.55 12699.92 896.78 35299.72 4799.78 1396.60 25499.67 34699.91 299.90 8899.94 10
mPP-MVS98.64 16598.34 20899.54 3199.54 12399.17 4398.63 11699.24 28397.47 28398.09 35698.68 31697.62 17099.89 9796.22 35299.62 26699.57 124
XVG-ACMP-BASELINE98.56 18098.34 20899.22 10999.54 12398.59 10697.71 26699.46 17597.25 31298.98 21498.99 23297.54 18099.84 17995.88 36899.74 19599.23 303
Casviewmambapermissive99.12 6999.12 7199.09 13499.53 12798.08 16298.34 16499.66 7199.35 6499.35 13099.23 15198.39 8899.72 30898.46 12999.81 14099.47 197
viewmacassd2359aftdt98.86 11698.87 11198.83 19099.53 12797.32 25097.70 26899.64 7998.22 20499.25 16599.27 13298.40 8699.61 38797.98 17699.87 10099.55 137
region2R98.69 15198.40 19399.54 3199.53 12799.17 4398.52 13099.31 24697.46 28898.44 32498.51 34997.83 15199.88 11596.46 33599.58 28499.58 117
PGM-MVS98.66 16298.37 20299.55 2899.53 12799.18 4298.23 17499.49 15797.01 33398.69 28098.88 26698.00 13499.89 9795.87 37199.59 27999.58 117
E498.87 11298.88 10898.81 19499.52 13197.23 26197.62 28199.61 9298.58 17299.18 18199.33 11998.29 9999.69 32997.99 17599.83 12699.52 161
Patchmatch-RL test97.26 34197.02 34397.99 33999.52 13195.53 35996.13 42199.71 4897.47 28399.27 15399.16 17184.30 48899.62 37997.89 18199.77 17298.81 393
ACMMPR98.70 14798.42 19199.54 3199.52 13199.14 5798.52 13099.31 24697.47 28398.56 30898.54 34497.75 15999.88 11596.57 32299.59 27999.58 117
DKM-HiRes98.14 25497.80 28299.16 11899.51 13498.40 12196.70 37499.63 8297.55 27497.45 41298.74 29993.27 38299.54 41997.78 19499.55 29799.53 157
fmvsm_s_conf0.5_n_999.17 5299.38 2898.53 26799.51 13495.82 34997.62 28199.78 3699.72 1499.90 1499.48 7598.66 5999.89 9799.85 699.93 5799.89 16
AstraMVS98.16 25398.07 25498.41 28599.51 13495.86 34698.00 21695.14 50898.97 12799.43 10899.24 14593.25 38399.84 17999.21 7099.87 10099.54 143
fmvsm_s_conf0.5_n_899.13 6699.26 5098.74 21799.51 13496.44 32197.65 27699.65 7799.66 2399.78 3999.48 7597.92 14299.93 5399.72 3099.95 3999.87 22
GST-MVS98.61 17198.30 21699.52 4499.51 13499.20 3898.26 17299.25 27797.44 29198.67 28498.39 36597.68 16299.85 15996.00 36399.51 31099.52 161
Anonymous2023120698.21 24398.21 23198.20 31299.51 13495.43 37098.13 18799.32 24196.16 38598.93 23398.82 28296.00 28899.83 19797.32 24499.73 19999.36 252
ACMP95.32 1598.41 20498.09 24999.36 7499.51 13498.79 9097.68 27099.38 21395.76 40898.81 26198.82 28298.36 9099.82 20994.75 40699.77 17299.48 188
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
RoMa-HiRes98.68 15798.52 17099.16 11899.50 14198.35 13098.01 21499.71 4896.94 33699.35 13098.66 32296.38 26799.63 37498.39 13899.71 21799.48 188
LuminaMVS98.39 21498.20 23298.98 16099.50 14197.49 23297.78 25297.69 44198.75 15099.49 9499.25 14392.30 40699.94 4199.14 7599.88 9599.50 169
DVP-MVScopyleft98.77 13698.52 17099.52 4499.50 14199.21 3298.02 21198.84 36997.97 23299.08 19199.02 21497.61 17299.88 11596.99 27499.63 26299.48 188
Zhenlong Yuan, Jinguo Luo, Fei Shen, Zhaoxin Li, Cong Liu, Tianlu Mao, Zhaoqi Wang: DVP-MVS: Synergize Depth-Edge and Visibility Prior for Multi-View Stereo. AAAI2025
test_0728_SECOND99.60 1699.50 14199.23 3098.02 21199.32 24199.88 11596.99 27499.63 26299.68 73
test072699.50 14199.21 3298.17 18399.35 22797.97 23299.26 15799.06 20197.61 172
AllTest98.44 20298.20 23299.16 11899.50 14198.55 10998.25 17399.58 10396.80 35098.88 24499.06 20197.65 16599.57 40594.45 41699.61 27399.37 244
TestCases99.16 11899.50 14198.55 10999.58 10396.80 35098.88 24499.06 20197.65 16599.57 40594.45 41699.61 27399.37 244
XVG-OURS98.53 18998.34 20899.11 12899.50 14198.82 8995.97 43199.50 14997.30 30699.05 20198.98 23799.35 1499.32 47295.72 37899.68 23999.18 323
EG-PatchMatch MVS98.99 9499.01 9298.94 16799.50 14197.47 23698.04 20699.59 10098.15 22299.40 11799.36 11198.58 7299.76 27298.78 10299.68 23999.59 109
fmvsm_s_conf0.5_n_299.14 6299.31 4198.63 24099.49 15096.08 33697.38 31799.81 3299.48 4499.84 3099.57 4998.46 8299.89 9799.82 1299.97 2199.91 13
SED-MVS98.91 10698.72 13299.49 5599.49 15099.17 4398.10 19499.31 24698.03 22899.66 6099.02 21498.36 9099.88 11596.91 28199.62 26699.41 222
IU-MVS99.49 15099.15 5298.87 36092.97 48699.41 11496.76 29899.62 26699.66 80
test_241102_ONE99.49 15099.17 4399.31 24697.98 23199.66 6098.90 25898.36 9099.48 441
UA-Net99.47 1699.40 2799.70 299.49 15099.29 2399.80 499.72 4699.82 899.04 20399.81 898.05 13199.96 1398.85 9899.99 599.86 28
HFP-MVS98.71 14298.44 18899.51 4999.49 15099.16 4898.52 13099.31 24697.47 28398.58 30498.50 35397.97 13899.85 15996.57 32299.59 27999.53 157
VPA-MVSNet99.30 3399.30 4499.28 9699.49 15098.36 12999.00 7399.45 17999.63 2899.52 8799.44 8598.25 10799.88 11599.09 7999.84 11499.62 92
XVG-OURS-SEG-HR98.49 19698.28 21999.14 12499.49 15098.83 8796.54 38899.48 15997.32 30399.11 18698.61 33699.33 1599.30 47596.23 35198.38 45499.28 287
fmvsm_s_conf0.5_n_1199.21 4799.34 3598.80 19799.48 15896.56 31397.97 22899.69 5799.63 2899.84 3099.54 6298.21 11599.94 4199.76 2399.95 3999.88 20
114514_t96.50 38795.77 40798.69 22799.48 15897.43 24297.84 24599.55 12681.42 54296.51 46998.58 34095.53 31199.67 34693.41 45299.58 28498.98 359
IterMVS-LS98.55 18498.70 13898.09 32599.48 15894.73 40597.22 33999.39 21198.97 12799.38 12199.31 12596.00 28899.93 5398.58 11999.97 2199.60 102
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
fmvsm_s_conf0.5_n_1099.15 5799.27 4798.78 20499.47 16196.56 31397.75 26199.71 4899.60 3599.74 4699.44 8597.96 13999.95 2599.86 499.94 5199.82 36
fmvsm_s_conf0.5_n_599.07 8299.10 8098.99 15699.47 16197.22 26497.40 31499.83 2697.61 26699.85 2799.30 12698.80 4199.95 2599.71 3299.90 8899.78 50
v899.01 9099.16 6298.57 25399.47 16196.31 32698.90 8499.47 17099.03 12199.52 8799.57 4996.93 22899.81 22699.60 3799.98 1299.60 102
SSC-MVS3.298.53 18998.79 12497.74 36299.46 16493.62 45396.45 39599.34 23399.33 6698.93 23398.70 31297.90 14399.90 8199.12 7699.92 7199.69 72
fmvsm_s_conf0.5_n_399.22 4699.37 3198.78 20499.46 16496.58 31197.65 27699.72 4699.47 4799.86 2499.50 6898.94 3199.89 9799.75 2699.97 2199.86 28
XVS98.72 14198.45 18699.53 3899.46 16499.21 3298.65 11499.34 23398.62 16697.54 40298.63 33197.50 18699.83 19796.79 29499.53 30499.56 130
X-MVStestdata94.32 45992.59 48199.53 3899.46 16499.21 3298.65 11499.34 23398.62 16697.54 40245.85 54897.50 18699.83 19796.79 29499.53 30499.56 130
test20.0398.78 13398.77 12798.78 20499.46 16497.20 26797.78 25299.24 28399.04 11999.41 11498.90 25897.65 16599.76 27297.70 20899.79 15999.39 232
guyue98.01 26797.93 27198.26 30399.45 16995.48 36598.08 19796.24 48898.89 13899.34 13599.14 18191.32 42499.82 20999.07 8099.83 12699.48 188
CSCG98.68 15798.50 17599.20 11099.45 16998.63 10198.56 12599.57 11197.87 24298.85 25198.04 40697.66 16499.84 17996.72 30499.81 14099.13 338
GeoE99.05 8398.99 9699.25 10499.44 17198.35 13098.73 10399.56 12198.42 18598.91 23698.81 28598.94 3199.91 7498.35 14199.73 19999.49 177
v14898.45 20198.60 15998.00 33799.44 17194.98 39297.44 31299.06 32298.30 19599.32 14498.97 23996.65 25199.62 37998.37 14099.85 10999.39 232
v1098.97 9999.11 7498.55 26099.44 17196.21 33098.90 8499.55 12698.73 15199.48 9699.60 4596.63 25399.83 19799.70 3399.99 599.61 100
V4298.78 13398.78 12698.76 21199.44 17197.04 28198.27 17199.19 29497.87 24299.25 16599.16 17196.84 23299.78 26099.21 7099.84 11499.46 200
MDA-MVSNet-bldmvs97.94 27597.91 27498.06 33199.44 17194.96 39396.63 38299.15 31098.35 18898.83 25699.11 18994.31 35899.85 15996.60 31998.72 43299.37 244
viewdifsd2359ckpt0798.71 14298.86 11598.26 30399.43 17695.65 35497.20 34099.66 7199.20 8499.29 14999.01 22698.29 9999.73 29897.92 18099.75 19299.39 232
casdiffmvs_mvgpermissive99.12 6999.16 6298.99 15699.43 17697.73 21498.00 21699.62 8999.22 8099.55 7799.22 15398.93 3399.75 28498.66 11399.81 14099.50 169
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
SSM_040498.90 10899.01 9298.57 25399.42 17896.59 30898.13 18799.66 7199.09 11099.30 14899.02 21498.79 4399.89 9797.87 18699.80 15299.23 303
test111196.49 38896.82 35995.52 48899.42 17887.08 52999.22 4687.14 54799.11 10099.46 10199.58 4788.69 44799.86 14598.80 10099.95 3999.62 92
v2v48298.56 18098.62 15498.37 29299.42 17895.81 35097.58 29099.16 30597.90 24099.28 15199.01 22695.98 29399.79 24899.33 5999.90 8899.51 165
OPM-MVS98.56 18098.32 21499.25 10499.41 18198.73 9597.13 34799.18 29897.10 32798.75 27198.92 25298.18 11899.65 36696.68 31099.56 29299.37 244
Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS).
PMMVS298.07 26198.08 25298.04 33499.41 18194.59 41194.59 48999.40 20997.50 28098.82 25998.83 27996.83 23499.84 17997.50 22899.81 14099.71 65
E298.70 14798.68 14198.73 21999.40 18397.10 27897.48 30499.57 11198.09 22599.00 20999.20 15797.90 14399.67 34697.73 20599.77 17299.43 214
E398.69 15198.68 14198.73 21999.40 18397.10 27897.48 30499.57 11198.09 22599.00 20999.20 15797.90 14399.67 34697.73 20599.77 17299.43 214
ELoFTR97.81 29697.74 28798.04 33499.39 18595.79 35197.28 33399.58 10394.13 46499.38 12199.37 10593.31 38199.60 39197.23 25099.96 2898.74 406
test_one_060199.39 18599.20 3899.31 24698.49 18098.66 28699.02 21497.64 168
mvsany_test398.87 11298.92 10298.74 21799.38 18796.94 28998.58 12399.10 31696.49 36799.96 499.81 898.18 11899.45 45198.97 8999.79 15999.83 33
patch_mono-298.51 19498.63 15298.17 31599.38 18794.78 40297.36 32299.69 5798.16 21798.49 31799.29 12997.06 21799.97 698.29 14599.91 8099.76 58
test250692.39 49391.89 49593.89 51399.38 18782.28 54899.32 2666.03 55599.08 11498.77 26899.57 4966.26 53899.84 17998.71 11099.95 3999.54 143
ECVR-MVScopyleft96.42 39496.61 37895.85 47799.38 18788.18 52499.22 4686.00 54999.08 11499.36 12899.57 4988.47 45299.82 20998.52 12799.95 3999.54 143
casdiffmvspermissive98.95 10299.00 9498.81 19499.38 18797.33 24797.82 24699.57 11199.17 9399.35 13099.17 16998.35 9499.69 32998.46 12999.73 19999.41 222
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
baseline98.96 10199.02 9098.76 21199.38 18797.26 25998.49 14099.50 14998.86 14299.19 17699.06 20198.23 11099.69 32998.71 11099.76 18899.33 268
TranMVSNet+NR-MVSNet99.17 5299.07 8599.46 6399.37 19398.87 8598.39 15799.42 20099.42 5599.36 12899.06 20198.38 8999.95 2598.34 14299.90 8899.57 124
fmvsm_s_conf0.5_n_699.08 7999.21 5798.69 22799.36 19496.51 31597.62 28199.68 6498.43 18499.85 2799.10 19299.12 2399.88 11599.77 2299.92 7199.67 78
tttt051795.64 43094.98 44397.64 37799.36 19493.81 44598.72 10490.47 54198.08 22798.67 28498.34 37273.88 52499.92 6597.77 19799.51 31099.20 313
test_part299.36 19499.10 6599.05 201
v114498.60 17398.66 14698.41 28599.36 19495.90 34397.58 29099.34 23397.51 27999.27 15399.15 17796.34 27199.80 23599.47 5399.93 5799.51 165
CP-MVS98.70 14798.42 19199.52 4499.36 19499.12 6298.72 10499.36 22197.54 27798.30 33698.40 36497.86 15099.89 9796.53 33199.72 20899.56 130
RoMa-SfM98.46 19998.27 22299.02 15199.35 19998.32 13397.56 29299.70 5495.88 39999.38 12198.65 32596.41 26399.46 44897.78 19499.71 21799.28 287
DKM98.18 24897.95 26698.85 18299.35 19998.31 13496.68 37699.69 5796.90 34298.61 29798.77 29294.41 35198.93 49997.32 24499.84 11499.32 273
diffmvs_AUTHOR98.50 19598.59 16198.23 31099.35 19995.48 36596.61 38499.60 9498.37 18698.90 23799.00 23097.37 19799.76 27298.22 15099.85 10999.46 200
Test_1112_low_res96.99 36696.55 38298.31 29899.35 19995.47 36895.84 44399.53 13691.51 50596.80 45198.48 35691.36 42399.83 19796.58 32099.53 30499.62 92
DeepC-MVS97.60 498.97 9998.93 10199.10 13099.35 19997.98 17798.01 21499.46 17597.56 27299.54 7999.50 6898.97 2999.84 17998.06 16499.92 7199.49 177
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
1112_ss97.29 34096.86 35598.58 25099.34 20496.32 32596.75 37099.58 10393.14 48296.89 44597.48 44892.11 41199.86 14596.91 28199.54 30099.57 124
test-26052499.33 20599.02 7199.25 27799.23 16996.59 25599.85 15998.10 16099.62 266
reproduce_model99.15 5798.97 9899.67 499.33 20599.44 998.15 18599.47 17099.12 9999.52 8799.32 12498.31 9799.90 8197.78 19499.73 19999.66 80
DenseAffine98.10 25697.86 27898.84 18899.32 20797.93 18596.62 38399.76 3996.68 35998.65 28798.72 30394.46 34999.33 47096.76 29899.75 19299.25 297
MVSMamba_PlusPlus98.83 12298.98 9798.36 29399.32 20796.58 31198.90 8499.41 20499.75 1098.72 27599.50 6896.17 27899.94 4199.27 6499.78 16498.57 426
fmvsm_s_conf0.5_n_499.01 9099.22 5498.38 28999.31 20995.48 36597.56 29299.73 4598.87 14099.75 4499.27 13298.80 4199.86 14599.80 1799.90 8899.81 41
SF-MVS98.53 18998.27 22299.32 9199.31 20998.75 9198.19 17999.41 20496.77 35398.83 25698.90 25897.80 15599.82 20995.68 38199.52 30799.38 241
CPTT-MVS97.84 29297.36 32099.27 9999.31 20998.46 11798.29 16799.27 26994.90 44197.83 38198.37 36894.90 33199.84 17993.85 43799.54 30099.51 165
UnsupCasMVSNet_eth97.89 28097.60 30498.75 21399.31 20997.17 27397.62 28199.35 22798.72 15798.76 27098.68 31692.57 40199.74 29197.76 20195.60 52999.34 262
fmvsm_s_conf0.5_n_798.83 12299.04 8798.20 31299.30 21394.83 40097.23 33599.36 22198.64 16199.84 3099.43 8898.10 12799.91 7499.56 4199.96 2899.87 22
pmmvs-eth3d98.47 19898.34 20898.86 18199.30 21397.76 21097.16 34599.28 26695.54 41899.42 11299.19 16097.27 20499.63 37497.89 18199.97 2199.20 313
viewcassd2359sk1198.55 18498.51 17298.67 23099.29 21596.99 28497.39 31599.54 13297.73 25498.81 26199.08 19997.55 17899.66 35997.52 22799.67 24599.36 252
SymmetryMVS98.05 26397.71 29399.09 13499.29 21597.83 19798.28 16897.64 44699.24 7798.80 26398.85 27289.76 43999.94 4198.04 16799.50 31899.49 177
Anonymous2023121199.27 3799.27 4799.26 10199.29 21598.18 14799.49 1299.51 14499.70 1599.80 3799.68 2596.84 23299.83 19799.21 7099.91 8099.77 53
viewmanbaseed2359cas98.58 17798.54 16798.70 22599.28 21897.13 27797.47 30899.55 12697.55 27498.96 22398.92 25297.77 15799.59 39697.59 21999.77 17299.39 232
UnsupCasMVSNet_bld97.30 33896.92 35098.45 27999.28 21896.78 30296.20 41599.27 26995.42 42498.28 34098.30 37993.16 38699.71 31094.99 40097.37 49798.87 383
EC-MVSNet99.09 7399.05 8699.20 11099.28 21898.93 8099.24 4499.84 2399.08 11498.12 35398.37 36898.72 5099.90 8199.05 8399.77 17298.77 401
mamba_040898.80 12998.88 10898.55 26099.27 22196.50 31698.00 21699.60 9498.93 13299.22 17198.84 27798.59 6799.89 9797.74 20399.72 20899.27 290
SSM_0407298.80 12998.88 10898.56 25899.27 22196.50 31698.00 21699.60 9498.93 13299.22 17198.84 27798.59 6799.90 8197.74 20399.72 20899.27 290
SSM_040798.86 11698.96 10098.55 26099.27 22196.50 31698.04 20699.66 7199.09 11099.22 17199.02 21498.79 4399.87 13597.87 18699.72 20899.27 290
reproduce-ours99.09 7398.90 10599.67 499.27 22199.49 598.00 21699.42 20099.05 11799.48 9699.27 13298.29 9999.89 9797.61 21699.71 21799.62 92
our_new_method99.09 7398.90 10599.67 499.27 22199.49 598.00 21699.42 20099.05 11799.48 9699.27 13298.29 9999.89 9797.61 21699.71 21799.62 92
DPE-MVScopyleft98.59 17598.26 22599.57 2199.27 22199.15 5297.01 35099.39 21197.67 25999.44 10798.99 23297.53 18299.89 9795.40 39299.68 23999.66 80
Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025
IterMVS-SCA-FT97.85 29198.18 23896.87 43199.27 22191.16 49995.53 45399.25 27799.10 10799.41 11499.35 11293.10 38999.96 1398.65 11499.94 5199.49 177
v119298.60 17398.66 14698.41 28599.27 22195.88 34597.52 29899.36 22197.41 29399.33 13899.20 15796.37 26999.82 20999.57 3999.92 7199.55 137
N_pmnet97.63 30997.17 33298.99 15699.27 22197.86 19495.98 43093.41 52795.25 43199.47 10098.90 25895.63 30799.85 15996.91 28199.73 19999.27 290
PMatch-SfM97.89 28097.64 30098.66 23299.26 23097.44 24196.08 42599.51 14496.72 35598.47 32099.13 18393.62 37899.70 31997.14 26098.80 42698.83 386
viewdifsd2359ckpt1398.39 21498.29 21898.70 22599.26 23097.19 26897.51 30099.48 15996.94 33698.58 30498.82 28297.47 19299.55 41397.21 25299.33 35499.34 262
FPMVS93.44 47792.23 48697.08 41899.25 23297.86 19495.61 45097.16 46392.90 48993.76 52598.65 32575.94 52195.66 54279.30 54297.49 49097.73 481
aaEdge-Enhanced98.61 17198.33 21399.44 6599.24 23398.93 8097.45 31099.06 32298.14 22399.06 19398.77 29296.97 22699.82 20996.67 31199.64 25799.58 117
new-patchmatchnet98.35 21798.74 12897.18 41299.24 23392.23 48096.42 39999.48 15998.30 19599.69 5599.53 6497.44 19399.82 20998.84 9999.77 17299.49 177
MCST-MVS98.00 26897.63 30299.10 13099.24 23398.17 14896.89 36298.73 38995.66 41097.92 37197.70 43397.17 21199.66 35996.18 35699.23 37699.47 197
UniMVSNet (Re)98.87 11298.71 13599.35 8099.24 23398.73 9597.73 26599.38 21398.93 13299.12 18598.73 30196.77 24099.86 14598.63 11699.80 15299.46 200
jason97.45 32397.35 32197.76 35999.24 23393.93 43995.86 44098.42 41594.24 46098.50 31698.13 39694.82 33599.91 7497.22 25199.73 19999.43 214
jason: jason.
IterMVS97.73 30098.11 24896.57 44399.24 23390.28 51095.52 45599.21 28898.86 14299.33 13899.33 11993.11 38899.94 4198.49 12899.94 5199.48 188
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
v124098.55 18498.62 15498.32 29699.22 23995.58 35797.51 30099.45 17997.16 32499.45 10699.24 14596.12 28399.85 15999.60 3799.88 9599.55 137
ITE_SJBPF98.87 17999.22 23998.48 11699.35 22797.50 28098.28 34098.60 33897.64 16899.35 46793.86 43699.27 36798.79 399
h-mvs3397.77 29897.33 32399.10 13099.21 24197.84 19698.35 16298.57 40399.11 10098.58 30499.02 21488.65 45099.96 1398.11 15896.34 51599.49 177
v14419298.54 18798.57 16398.45 27999.21 24195.98 33997.63 28099.36 22197.15 32699.32 14499.18 16495.84 30099.84 17999.50 5099.91 8099.54 143
APDe-MVScopyleft98.99 9498.79 12499.60 1699.21 24199.15 5298.87 8999.48 15997.57 27099.35 13099.24 14597.83 15199.89 9797.88 18499.70 22799.75 62
Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition
DP-MVS98.93 10498.81 12399.28 9699.21 24198.45 11898.46 14599.33 23999.63 2899.48 9699.15 17797.23 20799.75 28497.17 25599.66 25399.63 91
viewmambapermissive98.57 17898.66 14698.31 29899.20 24595.89 34496.92 36099.57 11198.71 15899.02 20799.04 21097.48 19099.71 31098.28 14699.70 22799.35 258
SR-MVS-dyc-post98.81 12798.55 16599.57 2199.20 24599.38 1298.48 14399.30 25498.64 16198.95 22498.96 24397.49 18999.86 14596.56 32699.39 34399.45 206
RE-MVS-def98.58 16299.20 24599.38 1298.48 14399.30 25498.64 16198.95 22498.96 24397.75 15996.56 32699.39 34399.45 206
v192192098.54 18798.60 15998.38 28999.20 24595.76 35397.56 29299.36 22197.23 31899.38 12199.17 16996.02 28699.84 17999.57 3999.90 8899.54 143
E3new98.41 20498.34 20898.62 24299.19 24996.90 29297.32 32599.50 14997.40 29598.63 29198.92 25297.21 20999.65 36697.34 24099.52 30799.31 278
thisisatest053095.27 44394.45 45597.74 36299.19 24994.37 41597.86 24290.20 54297.17 32398.22 34397.65 43573.53 52599.90 8196.90 28699.35 35098.95 367
Anonymous2024052998.93 10498.87 11199.12 12699.19 24998.22 14599.01 7198.99 34099.25 7699.54 7999.37 10597.04 21899.80 23597.89 18199.52 30799.35 258
APD-MVS_3200maxsize98.84 11998.61 15899.53 3899.19 24999.27 2698.49 14099.33 23998.64 16199.03 20698.98 23797.89 14799.85 15996.54 33099.42 33999.46 200
HQP_MVS97.99 27197.67 29598.93 17099.19 24997.65 22197.77 25599.27 26998.20 21097.79 38497.98 41194.90 33199.70 31994.42 41899.51 31099.45 206
plane_prior799.19 24997.87 193
ab-mvs98.41 20498.36 20498.59 24999.19 24997.23 26199.32 2698.81 37497.66 26098.62 29599.40 9896.82 23599.80 23595.88 36899.51 31098.75 404
F-COLMAP97.30 33896.68 36999.14 12499.19 24998.39 12397.27 33499.30 25492.93 48796.62 46098.00 40995.73 30399.68 34192.62 47498.46 45299.35 258
viewdifsd2359ckpt0998.13 25597.92 27298.77 20999.18 25797.35 24597.29 32999.53 13695.81 40598.09 35698.47 35796.34 27199.66 35997.02 27099.51 31099.29 284
SR-MVS98.71 14298.43 18999.57 2199.18 25799.35 1698.36 16099.29 26298.29 19898.88 24498.85 27297.53 18299.87 13596.14 35899.31 35999.48 188
UniMVSNet_NR-MVSNet98.86 11698.68 14199.40 7199.17 25998.74 9297.68 27099.40 20999.14 9899.06 19398.59 33996.71 24799.93 5398.57 12199.77 17299.53 157
LF4IMVS97.90 27897.69 29498.52 26999.17 25997.66 21997.19 34499.47 17096.31 37697.85 38098.20 39196.71 24799.52 42694.62 41099.72 20898.38 443
SMA-MVScopyleft98.40 20798.03 25799.51 4999.16 26199.21 3298.05 20499.22 28694.16 46398.98 21499.10 19297.52 18499.79 24896.45 33699.64 25799.53 157
Yufeng Yin; Xiaoyan Liu; Zichao Zhang: SMA-MVS: Segmentation-Guided Multi-Scale Anchor Deformation Patch Multi-View Stereo. IEEE Transactions on Circuits and Systems for Video Technology
DU-MVS98.82 12598.63 15299.39 7299.16 26198.74 9297.54 29699.25 27798.84 14899.06 19398.76 29796.76 24299.93 5398.57 12199.77 17299.50 169
NR-MVSNet98.95 10298.82 12199.36 7499.16 26198.72 9799.22 4699.20 29099.10 10799.72 4798.76 29796.38 26799.86 14598.00 17299.82 13399.50 169
MVS_111021_LR98.30 22898.12 24798.83 19099.16 26198.03 17096.09 42499.30 25497.58 26998.10 35598.24 38798.25 10799.34 46896.69 30999.65 25599.12 339
dtuplus98.32 22398.39 19698.10 32399.15 26595.29 37896.68 37699.51 14497.32 30399.18 18199.15 17797.61 17299.62 37997.19 25399.74 19599.38 241
DSMNet-mixed97.42 32697.60 30496.87 43199.15 26591.46 48898.54 12899.12 31392.87 49097.58 39899.63 3996.21 27799.90 8195.74 37799.54 30099.27 290
hybridnocas0798.32 22398.37 20298.17 31599.14 26795.51 36096.67 37899.56 12197.85 24498.75 27198.95 24796.65 25199.63 37498.00 17299.78 16499.37 244
D2MVS97.84 29297.84 28097.83 35199.14 26794.74 40496.94 35698.88 35895.84 40198.89 24098.96 24394.40 35399.69 32997.55 22299.95 3999.05 345
pmmvs597.64 30897.49 31198.08 32899.14 26795.12 38896.70 37499.05 32693.77 47398.62 29598.83 27993.23 38499.75 28498.33 14499.76 18899.36 252
hybrid98.22 24098.27 22298.08 32899.13 27095.24 38096.61 38499.53 13697.43 29298.46 32198.97 23996.75 24599.65 36697.84 18999.69 23399.35 258
SPE-MVS-test99.13 6699.09 8299.26 10199.13 27098.97 7499.31 3099.88 1599.44 5298.16 34898.51 34998.64 6199.93 5398.91 9399.85 10998.88 382
VDD-MVS98.56 18098.39 19699.07 13899.13 27098.07 16598.59 12297.01 46699.59 3699.11 18699.27 13294.82 33599.79 24898.34 14299.63 26299.34 262
save fliter99.11 27397.97 17896.53 39099.02 33498.24 201
APD-MVScopyleft98.10 25697.67 29599.42 6799.11 27398.93 8097.76 25899.28 26694.97 43998.72 27598.77 29297.04 21899.85 15993.79 43899.54 30099.49 177
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
EI-MVSNet-UG-set98.69 15198.71 13598.62 24299.10 27596.37 32397.23 33598.87 36099.20 8499.19 17698.99 23297.30 20199.85 15998.77 10599.79 15999.65 85
EI-MVSNet98.40 20798.51 17298.04 33499.10 27594.73 40597.20 34098.87 36098.97 12799.06 19399.02 21496.00 28899.80 23598.58 11999.82 13399.60 102
CVMVSNet96.25 40497.21 33193.38 52199.10 27580.56 55297.20 34098.19 42896.94 33699.00 20999.02 21489.50 44399.80 23596.36 34399.59 27999.78 50
EI-MVSNet-Vis-set98.68 15798.70 13898.63 24099.09 27896.40 32297.23 33598.86 36599.20 8499.18 18198.97 23997.29 20399.85 15998.72 10999.78 16499.64 86
HPM-MVS++copyleft98.10 25697.64 30099.48 5799.09 27899.13 6097.52 29898.75 38697.46 28896.90 44497.83 42496.01 28799.84 17995.82 37599.35 35099.46 200
DP-MVS Recon97.33 33596.92 35098.57 25399.09 27897.99 17496.79 36599.35 22793.18 48197.71 38898.07 40495.00 33099.31 47393.97 43199.13 39398.42 440
MVS_111021_HR98.25 23898.08 25298.75 21399.09 27897.46 23895.97 43199.27 26997.60 26897.99 36698.25 38598.15 12499.38 46396.87 28999.57 28899.42 219
BP-MVS197.40 32896.97 34698.71 22399.07 28296.81 29898.34 16497.18 46198.58 17298.17 34598.61 33684.01 49099.94 4198.97 8999.78 16499.37 244
9.1497.78 28499.07 28297.53 29799.32 24195.53 41998.54 31298.70 31297.58 17599.76 27294.32 42399.46 325
PAPM_NR96.82 37496.32 39398.30 30099.07 28296.69 30697.48 30498.76 38295.81 40596.61 46196.47 47994.12 36699.17 48690.82 50997.78 48299.06 344
TAMVS98.24 23998.05 25598.80 19799.07 28297.18 27197.88 23898.81 37496.66 36099.17 18499.21 15594.81 33899.77 26696.96 27999.88 9599.44 210
CLD-MVS97.49 31997.16 33398.48 27699.07 28297.03 28294.71 48099.21 28894.46 45398.06 35997.16 46397.57 17699.48 44194.46 41599.78 16498.95 367
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
CS-MVS99.13 6699.10 8099.24 10699.06 28799.15 5299.36 2299.88 1599.36 6398.21 34498.46 35898.68 5899.93 5399.03 8599.85 10998.64 419
thres100view90094.19 46393.67 46795.75 48099.06 28791.35 49298.03 20894.24 52098.33 19197.40 41694.98 51279.84 50699.62 37983.05 53598.08 47296.29 514
thres600view794.45 45793.83 46496.29 45399.06 28791.53 48797.99 22394.24 52098.34 18997.44 41495.01 51079.84 50699.67 34684.33 53298.23 46197.66 484
onestephybrid0198.40 20798.39 19698.42 28399.05 29096.23 32896.73 37299.41 20498.18 21398.65 28799.02 21497.02 22199.69 32997.73 20599.70 22799.33 268
plane_prior199.05 290
YYNet197.60 31097.67 29597.39 40399.04 29293.04 46395.27 46498.38 41897.25 31298.92 23598.95 24795.48 31599.73 29896.99 27498.74 43099.41 222
MDA-MVSNet_test_wron97.60 31097.66 29897.41 40299.04 29293.09 45995.27 46498.42 41597.26 31198.88 24498.95 24795.43 31799.73 29897.02 27098.72 43299.41 222
MIMVSNet96.62 38196.25 39897.71 36699.04 29294.66 40899.16 5596.92 47497.23 31897.87 37699.10 19286.11 46899.65 36691.65 49199.21 38098.82 388
PMatch-Up-SfM97.79 29797.48 31498.72 22199.03 29597.78 20796.05 42799.48 15996.90 34298.72 27599.18 16492.00 41399.71 31097.15 25998.77 42798.69 412
usedtu_dtu_shiyan197.37 33097.13 33798.11 32199.03 29595.40 37194.47 49298.99 34096.87 34597.97 36797.81 42592.12 40999.75 28497.49 23399.43 33799.16 333
FE-MVSNET397.37 33097.13 33798.11 32199.03 29595.40 37194.47 49298.99 34096.87 34597.97 36797.81 42592.12 40999.75 28497.49 23399.43 33799.16 333
icg_test_0407_298.20 24598.38 20097.65 37499.03 29594.03 43095.78 44599.45 17998.16 21799.06 19398.71 30598.27 10399.68 34197.50 22899.45 32799.22 308
IMVS_040798.39 21498.64 15097.66 37299.03 29594.03 43098.10 19499.45 17998.16 21799.06 19398.71 30598.27 10399.71 31097.50 22899.45 32799.22 308
IMVS_040498.07 26198.20 23297.69 36799.03 29594.03 43096.67 37899.45 17998.16 21798.03 36398.71 30596.80 23899.82 20997.50 22899.45 32799.22 308
IMVS_040398.34 21898.56 16497.66 37299.03 29594.03 43097.98 22499.45 17998.16 21798.89 24098.71 30597.90 14399.74 29197.50 22899.45 32799.22 308
PatchMatch-RL97.24 34496.78 36298.61 24699.03 29597.83 19796.36 40399.06 32293.49 47897.36 42097.78 42795.75 30299.49 43793.44 45198.77 42798.52 428
ArgMatch-SfM97.96 27497.72 29198.66 23299.02 30397.33 24796.49 39399.52 14295.46 42298.71 27998.29 38296.14 27999.69 32996.30 34799.56 29298.97 363
viewmambaseed2359dif98.19 24698.26 22597.99 33999.02 30395.03 39196.59 38799.53 13696.21 38099.00 20998.99 23297.62 17099.61 38797.62 21599.72 20899.33 268
GDP-MVS97.50 31697.11 33998.67 23099.02 30396.85 29698.16 18499.71 4898.32 19398.52 31598.54 34483.39 49499.95 2598.79 10199.56 29299.19 319
ZD-MVS99.01 30698.84 8699.07 32194.10 46698.05 36198.12 39896.36 27099.86 14592.70 47399.19 385
CDPH-MVS97.26 34196.66 37399.07 13899.00 30798.15 14996.03 42899.01 33791.21 50997.79 38497.85 42296.89 23099.69 32992.75 47199.38 34699.39 232
diffmvspermissive98.22 24098.24 22998.17 31599.00 30795.44 36996.38 40199.58 10397.79 25098.53 31398.50 35396.76 24299.74 29197.95 17999.64 25799.34 262
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
WR-MVS98.40 20798.19 23699.03 14899.00 30797.65 22196.85 36398.94 34498.57 17498.89 24098.50 35395.60 30999.85 15997.54 22499.85 10999.59 109
plane_prior698.99 31097.70 21794.90 331
ArgMatch-Sym97.83 29497.54 30698.71 22398.98 31197.65 22196.25 41399.43 19395.60 41398.85 25197.98 41195.72 30499.56 40895.54 38999.50 31898.92 373
xiu_mvs_v1_base_debu97.86 28698.17 23996.92 42898.98 31193.91 44096.45 39599.17 30297.85 24498.41 32797.14 46598.47 7799.92 6598.02 16999.05 39996.92 502
xiu_mvs_v1_base97.86 28698.17 23996.92 42898.98 31193.91 44096.45 39599.17 30297.85 24498.41 32797.14 46598.47 7799.92 6598.02 16999.05 39996.92 502
xiu_mvs_v1_base_debi97.86 28698.17 23996.92 42898.98 31193.91 44096.45 39599.17 30297.85 24498.41 32797.14 46598.47 7799.92 6598.02 16999.05 39996.92 502
MVP-Stereo98.08 26097.92 27298.57 25398.96 31596.79 29997.90 23699.18 29896.41 37298.46 32198.95 24795.93 29799.60 39196.51 33298.98 41499.31 278
Qingsong Yan: MVP-Stereo: A Parallel Multi-View Patchmatch Stereo Method with Dilation Matching for Photogrammetric Application.
SD-MVS98.40 20798.68 14197.54 39098.96 31597.99 17497.88 23899.36 22198.20 21099.63 6699.04 21098.76 4695.33 54496.56 32699.74 19599.31 278
Zhenlong Yuan, Jiakai Cao, Zhaoxin Li, Hao Jiang and Zhaoqi Wang: SD-MVS: Segmentation-driven Deformation Multi-View Stereo with Spherical Refinement and EM optimization. AAAI2024
新几何198.91 17598.94 31797.76 21098.76 38287.58 53396.75 45398.10 40094.80 33999.78 26092.73 47299.00 40999.20 313
USDC97.41 32797.40 31697.44 40098.94 31793.67 45095.17 46899.53 13694.03 46998.97 21899.10 19295.29 32099.34 46895.84 37499.73 19999.30 282
tfpn200view994.03 46793.44 46995.78 47998.93 31991.44 49097.60 28794.29 51797.94 23697.10 42894.31 52079.67 50899.62 37983.05 53598.08 47296.29 514
testdata98.09 32598.93 31995.40 37198.80 37690.08 51897.45 41298.37 36895.26 32199.70 31993.58 44598.95 41799.17 327
thres40094.14 46593.44 46996.24 45698.93 31991.44 49097.60 28794.29 51797.94 23697.10 42894.31 52079.67 50899.62 37983.05 53598.08 47297.66 484
TAPA-MVS96.21 1196.63 38095.95 40398.65 23498.93 31998.09 15896.93 35899.28 26683.58 53998.13 35297.78 42796.13 28199.40 45993.52 44799.29 36598.45 433
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
test22298.92 32396.93 29095.54 45298.78 37985.72 53696.86 44898.11 39994.43 35099.10 39899.23 303
PVSNet_BlendedMVS97.55 31597.53 30897.60 38198.92 32393.77 44796.64 38199.43 19394.49 45197.62 39499.18 16496.82 23599.67 34694.73 40799.93 5799.36 252
PVSNet_Blended96.88 36996.68 36997.47 39898.92 32393.77 44794.71 48099.43 19390.98 51297.62 39497.36 45796.82 23599.67 34694.73 40799.56 29298.98 359
MSDG97.71 30297.52 30998.28 30298.91 32696.82 29794.42 49499.37 21797.65 26198.37 33398.29 38297.40 19599.33 47094.09 42999.22 37798.68 416
Anonymous20240521197.90 27897.50 31099.08 13698.90 32798.25 13998.53 12996.16 48998.87 14099.11 18698.86 26990.40 43499.78 26097.36 23999.31 35999.19 319
原ACMM198.35 29498.90 32796.25 32798.83 37392.48 49496.07 48098.10 40095.39 31899.71 31092.61 47598.99 41199.08 341
GBi-Net98.65 16398.47 18399.17 11598.90 32798.24 14099.20 4999.44 18798.59 16998.95 22499.55 5694.14 36399.86 14597.77 19799.69 23399.41 222
test198.65 16398.47 18399.17 11598.90 32798.24 14099.20 4999.44 18798.59 16998.95 22499.55 5694.14 36399.86 14597.77 19799.69 23399.41 222
FMVSNet298.49 19698.40 19398.75 21398.90 32797.14 27698.61 12099.13 31298.59 16999.19 17699.28 13094.14 36399.82 20997.97 17799.80 15299.29 284
OMC-MVS97.88 28397.49 31199.04 14798.89 33298.63 10196.94 35699.25 27795.02 43798.53 31398.51 34997.27 20499.47 44493.50 44999.51 31099.01 354
VortexMVS97.98 27298.31 21597.02 42198.88 33391.45 48998.03 20899.47 17098.65 16099.55 7799.47 7891.49 42199.81 22699.32 6099.91 8099.80 45
MVSFormer98.26 23598.43 18997.77 35698.88 33393.89 44399.39 2099.56 12199.11 10098.16 34898.13 39693.81 37299.97 699.26 6599.57 28899.43 214
lupinMVS97.06 35996.86 35597.65 37498.88 33393.89 44395.48 45697.97 43493.53 47698.16 34897.58 43993.81 37299.91 7496.77 29799.57 28899.17 327
dmvs_re95.98 41695.39 42797.74 36298.86 33697.45 23998.37 15995.69 50397.95 23496.56 46395.95 48990.70 43197.68 52488.32 52096.13 51998.11 457
DELS-MVS98.27 23398.20 23298.48 27698.86 33696.70 30595.60 45199.20 29097.73 25498.45 32398.71 30597.50 18699.82 20998.21 15199.59 27998.93 372
Christian Sormann, Emanuele Santellani, Mattia Rossi, Andreas Kuhn, Friedrich Fraundorfer: DELS-MVS: Deep Epipolar Line Search for Multi-View Stereo. Winter Conference on Applications of Computer Vision (WACV), 2023
TinyColmap97.89 28097.98 26297.60 38198.86 33694.35 41696.21 41499.44 18797.45 29099.06 19398.88 26697.99 13799.28 47994.38 42299.58 28499.18 323
LCM-MVSNet-Re98.64 16598.48 18199.11 12898.85 33998.51 11498.49 14099.83 2698.37 18699.69 5599.46 8098.21 11599.92 6594.13 42899.30 36398.91 377
pmmvs497.58 31397.28 32498.51 27098.84 34096.93 29095.40 46098.52 40993.60 47598.61 29798.65 32595.10 32799.60 39196.97 27899.79 15998.99 358
NP-MVS98.84 34097.39 24496.84 469
sss97.21 34796.93 34898.06 33198.83 34295.22 38496.75 37098.48 41194.49 45197.27 42297.90 41892.77 39799.80 23596.57 32299.32 35799.16 333
PVSNet93.40 1795.67 42895.70 41095.57 48698.83 34288.57 52092.50 52997.72 43992.69 49296.49 47296.44 48093.72 37599.43 45593.61 44299.28 36698.71 408
MVEpermissive83.40 2292.50 49291.92 49494.25 50698.83 34291.64 48592.71 52783.52 55195.92 39786.46 54695.46 50395.20 32295.40 54380.51 54098.64 44195.73 522
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
testing3-293.78 47193.91 46293.39 52098.82 34581.72 55097.76 25895.28 50698.60 16896.54 46496.66 47465.85 54199.62 37996.65 31598.99 41198.82 388
ambc98.24 30798.82 34595.97 34198.62 11899.00 33999.27 15399.21 15596.99 22499.50 43396.55 32999.50 31899.26 296
旧先验198.82 34597.45 23998.76 38298.34 37295.50 31499.01 40899.23 303
test_vis1_rt97.75 29997.72 29197.83 35198.81 34896.35 32497.30 32899.69 5794.61 44997.87 37698.05 40596.26 27598.32 51398.74 10798.18 46498.82 388
WTY-MVS96.67 37896.27 39797.87 34998.81 34894.61 41096.77 36897.92 43694.94 44097.12 42797.74 43091.11 42699.82 20993.89 43498.15 46899.18 323
3Dnovator+97.89 398.69 15198.51 17299.24 10698.81 34898.40 12199.02 7099.19 29498.99 12498.07 35899.28 13097.11 21699.84 17996.84 29299.32 35799.47 197
dtuonly96.49 38897.28 32494.10 50998.80 35183.27 54493.66 51699.48 15995.10 43597.87 37698.30 37995.61 30899.68 34196.98 27799.75 19299.33 268
LoFTR97.97 27397.79 28398.53 26798.80 35197.47 23697.01 35099.55 12695.55 41699.46 10199.22 15394.22 36199.44 45396.45 33699.82 13398.68 416
QAPM97.31 33696.81 36198.82 19298.80 35197.49 23299.06 6699.19 29490.22 51697.69 39099.16 17196.91 22999.90 8190.89 50799.41 34099.07 343
VNet98.42 20398.30 21698.79 20198.79 35497.29 25698.23 17498.66 39499.31 6998.85 25198.80 28694.80 33999.78 26098.13 15699.13 39399.31 278
DPM-MVS96.32 39895.59 41798.51 27098.76 35597.21 26694.54 49198.26 42291.94 50096.37 47397.25 46193.06 39199.43 45591.42 49698.74 43098.89 379
3Dnovator98.27 298.81 12798.73 13099.05 14598.76 35597.81 20599.25 4399.30 25498.57 17498.55 31099.33 11997.95 14099.90 8197.16 25699.67 24599.44 210
PLCcopyleft94.65 1696.51 38595.73 40998.85 18298.75 35797.91 18896.42 39999.06 32290.94 51395.59 48997.38 45594.41 35199.59 39690.93 50598.04 47799.05 345
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
BH-untuned96.83 37296.75 36597.08 41898.74 35893.33 45796.71 37398.26 42296.72 35598.44 32497.37 45695.20 32299.47 44491.89 48697.43 49498.44 436
hse-mvs297.46 32197.07 34098.64 23698.73 35997.33 24797.45 31097.64 44699.11 10098.58 30497.98 41188.65 45099.79 24898.11 15897.39 49698.81 393
CDS-MVSNet97.69 30497.35 32198.69 22798.73 35997.02 28396.92 36098.75 38695.89 39898.59 30298.67 31892.08 41299.74 29196.72 30499.81 14099.32 273
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
SD_040396.28 40195.83 40597.64 37798.72 36194.30 41798.87 8998.77 38097.80 24896.53 46598.02 40897.34 19999.47 44476.93 54499.48 32399.16 333
EIA-MVS98.00 26897.74 28798.80 19798.72 36198.09 15898.05 20499.60 9497.39 29696.63 45995.55 49897.68 16299.80 23596.73 30399.27 36798.52 428
LFMVS97.20 34896.72 36698.64 23698.72 36196.95 28898.93 8294.14 52299.74 1298.78 26599.01 22684.45 48599.73 29897.44 23599.27 36799.25 297
new_pmnet96.99 36696.76 36397.67 37098.72 36194.89 39795.95 43598.20 42692.62 49398.55 31098.54 34494.88 33499.52 42693.96 43299.44 33598.59 425
Fast-Effi-MVS+97.67 30697.38 31898.57 25398.71 36597.43 24297.23 33599.45 17994.82 44496.13 47796.51 47698.52 7599.91 7496.19 35498.83 42398.37 445
TEST998.71 36598.08 16295.96 43399.03 33191.40 50695.85 48597.53 44296.52 25899.76 272
train_agg97.10 35496.45 38999.07 13898.71 36598.08 16295.96 43399.03 33191.64 50195.85 48597.53 44296.47 26099.76 27293.67 44199.16 38899.36 252
TSAR-MVS + GP.98.18 24897.98 26298.77 20998.71 36597.88 19296.32 40698.66 39496.33 37499.23 16998.51 34997.48 19099.40 45997.16 25699.46 32599.02 352
FA-MVS(test-final)96.99 36696.82 35997.50 39498.70 36994.78 40299.34 2396.99 46795.07 43698.48 31999.33 11988.41 45399.65 36696.13 36098.92 42098.07 460
AUN-MVS96.24 40695.45 42398.60 24898.70 36997.22 26497.38 31797.65 44495.95 39695.53 49697.96 41682.11 50299.79 24896.31 34597.44 49398.80 398
our_test_397.39 32997.73 29096.34 45198.70 36989.78 51594.61 48898.97 34396.50 36699.04 20398.85 27295.98 29399.84 17997.26 24899.67 24599.41 222
ppachtmachnet_test97.50 31697.74 28796.78 43798.70 36991.23 49894.55 49099.05 32696.36 37399.21 17498.79 28896.39 26599.78 26096.74 30199.82 13399.34 262
PCF-MVS92.86 1894.36 45893.00 47798.42 28398.70 36997.56 22893.16 52699.11 31579.59 54397.55 40197.43 45292.19 40799.73 29879.85 54199.45 32797.97 466
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
ttmdpeth97.91 27798.02 25897.58 38398.69 37494.10 42698.13 18798.90 35497.95 23497.32 42199.58 4795.95 29698.75 50696.41 33999.22 37799.87 22
ETV-MVS98.03 26497.86 27898.56 25898.69 37498.07 16597.51 30099.50 14998.10 22497.50 40695.51 49998.41 8599.88 11596.27 35099.24 37397.71 483
test_prior98.95 16698.69 37497.95 18299.03 33199.59 39699.30 282
mvsmamba97.57 31497.26 32698.51 27098.69 37496.73 30498.74 9997.25 45897.03 33297.88 37599.23 15190.95 42799.87 13596.61 31899.00 40998.91 377
agg_prior98.68 37897.99 17499.01 33795.59 48999.77 266
test_898.67 37998.01 17195.91 43999.02 33491.64 50195.79 48897.50 44696.47 26099.76 272
HQP-NCC98.67 37996.29 40896.05 38895.55 492
ACMP_Plane98.67 37996.29 40896.05 38895.55 492
CNVR-MVS98.17 25197.87 27799.07 13898.67 37998.24 14097.01 35098.93 34797.25 31297.62 39498.34 37297.27 20499.57 40596.42 33899.33 35499.39 232
HQP-MVS97.00 36596.49 38598.55 26098.67 37996.79 29996.29 40899.04 32996.05 38895.55 49296.84 46993.84 37099.54 41992.82 46799.26 37199.32 273
MM98.22 24097.99 26198.91 17598.66 38496.97 28597.89 23794.44 51499.54 4098.95 22499.14 18193.50 37999.92 6599.80 1799.96 2899.85 30
test_fmvs197.72 30197.94 26997.07 42098.66 38492.39 47597.68 27099.81 3295.20 43499.54 7999.44 8591.56 41999.41 45899.78 2199.77 17299.40 231
BridgeMVS98.63 16798.72 13298.38 28998.66 38496.68 30798.90 8499.42 20098.99 12498.97 21899.19 16095.81 30199.85 15998.77 10599.77 17298.60 422
thres20093.72 47393.14 47595.46 49198.66 38491.29 49496.61 38494.63 51297.39 29696.83 44993.71 52379.88 50599.56 40882.40 53898.13 46995.54 523
wuyk23d96.06 40997.62 30391.38 52598.65 38898.57 10898.85 9396.95 47196.86 34899.90 1499.16 17199.18 1998.40 51289.23 51899.77 17277.18 547
NCCC97.86 28697.47 31599.05 14598.61 38998.07 16596.98 35398.90 35497.63 26297.04 43497.93 41795.99 29299.66 35995.31 39398.82 42599.43 214
DeepC-MVS_fast96.85 698.30 22898.15 24498.75 21398.61 38997.23 26197.76 25899.09 31897.31 30598.75 27198.66 32297.56 17799.64 37196.10 36299.55 29799.39 232
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
testing393.51 47592.09 48897.75 36098.60 39194.40 41497.32 32595.26 50797.56 27296.79 45295.50 50053.57 55399.77 26695.26 39598.97 41599.08 341
thisisatest051594.12 46693.16 47496.97 42598.60 39192.90 46593.77 51490.61 54094.10 46696.91 44195.87 49274.99 52299.80 23594.52 41399.12 39698.20 452
GA-MVS95.86 42295.32 43297.49 39598.60 39194.15 42393.83 51397.93 43595.49 42096.68 45797.42 45383.21 49599.30 47596.22 35298.55 44999.01 354
dmvs_testset92.94 48792.21 48795.13 49798.59 39490.99 50297.65 27692.09 53396.95 33594.00 52193.55 52492.34 40596.97 53472.20 54592.52 53997.43 493
OPU-MVS98.82 19298.59 39498.30 13598.10 19498.52 34898.18 11898.75 50694.62 41099.48 32399.41 222
MSLP-MVS++98.02 26598.14 24697.64 37798.58 39695.19 38597.48 30499.23 28597.47 28397.90 37398.62 33497.04 21898.81 50497.55 22299.41 34098.94 371
test1298.93 17098.58 39697.83 19798.66 39496.53 46595.51 31399.69 32999.13 39399.27 290
CL-MVSNet_self_test97.44 32497.22 33098.08 32898.57 39895.78 35294.30 49898.79 37796.58 36398.60 30098.19 39294.74 34299.64 37196.41 33998.84 42298.82 388
PS-MVSNAJ97.08 35797.39 31796.16 46498.56 39992.46 47395.24 46698.85 36897.25 31297.49 40795.99 48898.07 12899.90 8196.37 34198.67 44096.12 519
CNLPA97.17 35196.71 36798.55 26098.56 39998.05 16996.33 40598.93 34796.91 34197.06 43297.39 45494.38 35499.45 45191.66 49099.18 38798.14 456
xiu_mvs_v2_base97.16 35297.49 31196.17 46298.54 40192.46 47395.45 45798.84 36997.25 31297.48 40896.49 47798.31 9799.90 8196.34 34498.68 43996.15 518
alignmvs97.35 33396.88 35498.78 20498.54 40198.09 15897.71 26697.69 44199.20 8497.59 39795.90 49188.12 45699.55 41398.18 15398.96 41698.70 411
FE-MVS95.66 42994.95 44597.77 35698.53 40395.28 37999.40 1996.09 49393.11 48397.96 36999.26 13879.10 51299.77 26692.40 48098.71 43498.27 450
Effi-MVS+98.02 26597.82 28198.62 24298.53 40397.19 26897.33 32499.68 6497.30 30696.68 45797.46 45198.56 7399.80 23596.63 31698.20 46398.86 384
baseline195.96 41995.44 42497.52 39298.51 40593.99 43798.39 15796.09 49398.21 20698.40 33297.76 42986.88 46099.63 37495.42 39189.27 54298.95 367
MVS_Test98.18 24898.36 20497.67 37098.48 40694.73 40598.18 18099.02 33497.69 25798.04 36299.11 18997.22 20899.56 40898.57 12198.90 42198.71 408
MGCFI-Net98.34 21898.28 21998.51 27098.47 40797.59 22798.96 7899.48 15999.18 9297.40 41695.50 50098.66 5999.50 43398.18 15398.71 43498.44 436
BH-RMVSNet96.83 37296.58 38197.58 38398.47 40794.05 42796.67 37897.36 45196.70 35897.87 37697.98 41195.14 32699.44 45390.47 51198.58 44799.25 297
sasdasda98.34 21898.26 22598.58 25098.46 40997.82 20298.96 7899.46 17599.19 8997.46 40995.46 50398.59 6799.46 44898.08 16298.71 43498.46 430
canonicalmvs98.34 21898.26 22598.58 25098.46 40997.82 20298.96 7899.46 17599.19 8997.46 40995.46 50398.59 6799.46 44898.08 16298.71 43498.46 430
MVS-HIRNet94.32 45995.62 41390.42 52898.46 40975.36 55396.29 40889.13 54495.25 43195.38 49899.75 1692.88 39499.19 48594.07 43099.39 34396.72 509
MatchFormer97.07 35896.92 35097.49 39598.44 41295.92 34296.79 36599.14 31193.08 48499.32 14499.10 19293.89 36999.03 49292.78 47099.78 16497.52 489
PHI-MVS98.29 23197.95 26699.34 8398.44 41299.16 4898.12 19199.38 21396.01 39298.06 35998.43 36197.80 15599.67 34695.69 38099.58 28499.20 313
DVP-MVS++98.90 10898.70 13899.51 4998.43 41499.15 5299.43 1599.32 24198.17 21499.26 15799.02 21498.18 11899.88 11597.07 26799.45 32799.49 177
MSC_two_6792asdad99.32 9198.43 41498.37 12698.86 36599.89 9797.14 26099.60 27599.71 65
No_MVS99.32 9198.43 41498.37 12698.86 36599.89 9797.14 26099.60 27599.71 65
Fast-Effi-MVS+-dtu98.27 23398.09 24998.81 19498.43 41498.11 15497.61 28699.50 14998.64 16197.39 41897.52 44598.12 12699.95 2596.90 28698.71 43498.38 443
OpenMVS_ROBcopyleft95.38 1495.84 42495.18 44097.81 35398.41 41897.15 27597.37 32198.62 39883.86 53898.65 28798.37 36894.29 35999.68 34188.41 51998.62 44596.60 510
SIFT-CM-Cal96.28 40196.31 39496.16 46498.39 41998.11 15493.46 52196.47 48594.81 44598.49 31798.43 36194.48 34897.34 53092.60 47699.70 22793.02 537
DeepPCF-MVS96.93 598.32 22398.01 25999.23 10898.39 41998.97 7495.03 47299.18 29896.88 34499.33 13898.78 29098.16 12299.28 47996.74 30199.62 26699.44 210
Patchmatch-test96.55 38496.34 39297.17 41498.35 42193.06 46098.40 15697.79 43797.33 30198.41 32798.67 31883.68 49399.69 32995.16 39899.31 35998.77 401
AdaColmapbinary97.14 35396.71 36798.46 27898.34 42297.80 20696.95 35598.93 34795.58 41596.92 43997.66 43495.87 29999.53 42290.97 50499.14 39198.04 461
OpenMVScopyleft96.65 797.09 35696.68 36998.32 29698.32 42397.16 27498.86 9299.37 21789.48 52196.29 47599.15 17796.56 25699.90 8192.90 46499.20 38297.89 469
MG-MVS96.77 37596.61 37897.26 40898.31 42493.06 46095.93 43698.12 43196.45 37197.92 37198.73 30193.77 37499.39 46191.19 50199.04 40299.33 268
TestfortrainingZip98.97 16298.30 42598.43 12098.68 10998.26 42297.76 25298.86 25098.16 39595.15 32599.47 44497.55 48799.02 352
SIFT-NN-NCMNet95.39 44095.22 43795.92 47398.29 42698.34 13293.58 51894.60 51394.07 46894.84 50797.53 44294.37 35596.62 53791.01 50398.64 44192.80 540
SIFT-UMatch96.33 39796.47 38695.89 47598.29 42697.95 18293.84 51297.24 45995.78 40798.72 27598.04 40693.45 38096.81 53593.14 45999.73 19992.91 539
test_yl96.69 37696.29 39597.90 34498.28 42895.24 38097.29 32997.36 45198.21 20698.17 34597.86 42086.27 46499.55 41394.87 40498.32 45698.89 379
DCV-MVSNet96.69 37696.29 39597.90 34498.28 42895.24 38097.29 32997.36 45198.21 20698.17 34597.86 42086.27 46499.55 41394.87 40498.32 45698.89 379
SIFT-NCM-Cal96.56 38396.68 36996.20 46098.27 43098.44 11994.40 49596.67 47995.29 42997.63 39398.17 39396.40 26496.59 53993.61 44299.66 25393.57 530
SIFT-NN-UMatch95.38 44195.26 43495.75 48098.25 43197.78 20793.24 52595.66 50594.01 47095.10 50397.47 45093.12 38796.78 53692.42 47998.04 47792.69 542
CHOSEN 280x42095.51 43595.47 42195.65 48598.25 43188.27 52393.25 52498.88 35893.53 47694.65 51197.15 46486.17 46699.93 5397.41 23799.93 5798.73 407
SIFT-NN-CMatch95.63 43195.48 42096.08 46898.24 43398.00 17292.71 52794.29 51794.20 46295.85 48597.26 46095.72 30497.01 53291.99 48499.02 40693.23 534
SCA96.41 39596.66 37395.67 48398.24 43388.35 52295.85 44296.88 47596.11 38697.67 39198.67 31893.10 38999.85 15994.16 42499.22 37798.81 393
DeepMVS_CXcopyleft93.44 51998.24 43394.21 42094.34 51664.28 54791.34 53794.87 51689.45 44492.77 54777.54 54393.14 53893.35 533
MS-PatchMatch97.68 30597.75 28697.45 39998.23 43693.78 44697.29 32998.84 36996.10 38798.64 29098.65 32596.04 28599.36 46496.84 29299.14 39199.20 313
SIFT-ConvMatch96.57 38296.62 37696.43 44798.20 43798.27 13793.88 51196.88 47595.29 42998.88 24498.25 38595.18 32497.43 52893.22 45799.83 12693.59 529
BH-w/o95.13 44794.89 44795.86 47698.20 43791.31 49395.65 44997.37 45093.64 47496.52 46895.70 49693.04 39299.02 49488.10 52195.82 52797.24 499
SIFT-MNN95.92 42095.97 40295.74 48298.18 43998.00 17294.17 50296.99 46795.74 40997.16 42697.90 41890.71 43095.79 54193.71 44099.21 38093.44 531
mvs_anonymous97.83 29498.16 24296.87 43198.18 43991.89 48297.31 32798.90 35497.37 29898.83 25699.46 8096.28 27499.79 24898.90 9498.16 46798.95 367
PRO-TEST97.94 27598.16 24297.26 40898.17 44193.56 45598.36 16099.22 28698.46 18297.93 37099.41 9494.82 33599.87 13597.64 21299.45 32798.35 448
SIFT-PCN-Cal96.34 39696.46 38896.01 47198.17 44196.89 29393.48 52097.35 45494.84 44399.35 13098.30 37994.70 34397.92 52092.03 48399.88 9593.21 536
miper_lstm_enhance97.18 35097.16 33397.25 41098.16 44392.85 46695.15 47099.31 24697.25 31298.74 27498.78 29090.07 43599.78 26097.19 25399.80 15299.11 340
RRT-MVS97.88 28397.98 26297.61 38098.15 44493.77 44798.97 7799.64 7999.16 9498.69 28099.42 8991.60 41699.89 9797.63 21498.52 45199.16 333
ET-MVSNet_ETH3D94.30 46193.21 47397.58 38398.14 44594.47 41394.78 47993.24 52994.72 44689.56 54195.87 49278.57 51699.81 22696.91 28197.11 50598.46 430
ADS-MVSNet295.43 43994.98 44396.76 43898.14 44591.74 48397.92 23397.76 43890.23 51496.51 46998.91 25585.61 47499.85 15992.88 46596.90 50798.69 412
ADS-MVSNet95.24 44494.93 44696.18 46198.14 44590.10 51297.92 23397.32 45690.23 51496.51 46998.91 25585.61 47499.74 29192.88 46596.90 50798.69 412
SIFT-UM-Cal96.49 38896.62 37696.12 46798.13 44897.89 19193.35 52298.44 41295.48 42198.63 29198.34 37295.45 31697.45 52792.22 48299.50 31893.02 537
SIFT-PointCN96.45 39396.47 38696.39 44998.13 44897.54 23093.31 52397.23 46094.67 44898.68 28398.32 37794.64 34497.81 52293.50 44999.77 17293.83 527
c3_l97.36 33297.37 31997.31 40498.09 45093.25 45895.01 47399.16 30597.05 32998.77 26898.72 30392.88 39499.64 37196.93 28099.76 18899.05 345
balanced_ft_v198.28 23298.35 20798.10 32398.08 45196.23 32899.23 4599.26 27598.34 18997.46 40999.42 8995.38 31999.88 11598.60 11799.34 35298.17 454
FMVSNet397.50 31697.24 32898.29 30198.08 45195.83 34897.86 24298.91 35397.89 24198.95 22498.95 24787.06 45999.81 22697.77 19799.69 23399.23 303
PAPM91.88 50290.34 50496.51 44498.06 45392.56 47192.44 53097.17 46286.35 53490.38 54096.01 48786.61 46299.21 48470.65 54795.43 53097.75 479
Effi-MVS+-dtu98.26 23597.90 27599.35 8098.02 45499.49 598.02 21199.16 30598.29 19897.64 39297.99 41096.44 26299.95 2596.66 31498.93 41998.60 422
eth_miper_zixun_eth97.23 34597.25 32797.17 41498.00 45592.77 46894.71 48099.18 29897.27 31098.56 30898.74 29991.89 41499.69 32997.06 26999.81 14099.05 345
ALIKED-LG97.10 35496.63 37598.50 27497.96 45698.68 10097.75 26199.68 6495.86 40098.36 33598.33 37691.58 41899.04 49190.87 50899.31 35997.77 478
HY-MVS95.94 1395.90 42195.35 42997.55 38997.95 45794.79 40198.81 9896.94 47292.28 49795.17 50198.57 34189.90 43799.75 28491.20 50097.33 50198.10 458
UGNet98.53 18998.45 18698.79 20197.94 45896.96 28799.08 6298.54 40699.10 10796.82 45099.47 7896.55 25799.84 17998.56 12499.94 5199.55 137
Wanjuan Su, Qingshan Xu, Wenbing Tao: Uncertainty-guided Multi-view Stereo Network for Depth Estimation. IEEE Transactions on Circuits and Systems for Video Technology, 2022
MAR-MVS96.47 39195.70 41098.79 20197.92 45999.12 6298.28 16898.60 39992.16 49895.54 49596.17 48594.77 34199.52 42689.62 51598.23 46197.72 482
Zhenyu Xu, Yiguang Liu, Xuelei Shi, Ying Wang, Yunan Zheng: MARMVS: Matching Ambiguity Reduced Multiple View Stereo for Efficient Large Scale Scene Reconstruction. CVPR 2020
MVSTER96.86 37196.55 38297.79 35497.91 46094.21 42097.56 29298.87 36097.49 28299.06 19399.05 20880.72 50399.80 23598.44 13199.82 13399.37 244
SIFT-NN-PointCN96.06 40996.11 40095.91 47497.88 46197.73 21493.49 51997.51 44893.22 48096.57 46298.26 38496.23 27696.60 53892.54 47799.27 36793.40 532
API-MVS97.04 36196.91 35397.42 40197.88 46198.23 14498.18 18098.50 41097.57 27097.39 41896.75 47296.77 24099.15 48890.16 51299.02 40694.88 525
PDCNetPlus95.22 44594.73 45296.70 44097.85 46391.14 50093.94 51099.97 193.06 48598.95 22498.89 26474.32 52399.14 48995.63 38399.93 5799.82 36
myMVS_eth3d2892.92 48892.31 48494.77 50097.84 46487.59 52796.19 41696.11 49197.08 32894.27 51493.49 52666.07 54098.78 50591.78 48897.93 48197.92 468
miper_ehance_all_eth97.06 35997.03 34297.16 41697.83 46593.06 46094.66 48599.09 31895.99 39498.69 28098.45 35992.73 39999.61 38796.79 29499.03 40398.82 388
cl____97.02 36296.83 35897.58 38397.82 46694.04 42994.66 48599.16 30597.04 33098.63 29198.71 30588.68 44999.69 32997.00 27299.81 14099.00 357
DIV-MVS_self_test97.02 36296.84 35797.58 38397.82 46694.03 43094.66 48599.16 30597.04 33098.63 29198.71 30588.69 44799.69 32997.00 27299.81 14099.01 354
SIFT-NCMNet96.30 39996.40 39096.03 47097.80 46897.68 21892.34 53196.94 47295.55 41698.84 25498.63 33194.17 36297.63 52593.57 44699.71 21792.77 541
CANet97.87 28597.76 28598.19 31497.75 46995.51 36096.76 36999.05 32697.74 25396.93 43898.21 39095.59 31099.89 9797.86 18899.93 5799.19 319
UBG93.25 48192.32 48396.04 46997.72 47090.16 51195.92 43895.91 49796.03 39193.95 52393.04 53069.60 53099.52 42690.72 51097.98 47998.45 433
mvsany_test197.60 31097.54 30697.77 35697.72 47095.35 37495.36 46197.13 46494.13 46499.71 4999.33 11997.93 14199.30 47597.60 21898.94 41898.67 418
PVSNet_089.98 2191.15 50390.30 50593.70 51597.72 47084.34 54190.24 53697.42 44990.20 51793.79 52493.09 52990.90 42998.89 50386.57 52872.76 54997.87 471
CR-MVSNet96.28 40195.95 40397.28 40697.71 47394.22 41898.11 19298.92 35192.31 49696.91 44199.37 10585.44 47799.81 22697.39 23897.36 49997.81 474
RPMNet97.02 36296.93 34897.30 40597.71 47394.22 41898.11 19299.30 25499.37 6096.91 44199.34 11686.72 46199.87 13597.53 22597.36 49997.81 474
ETVMVS92.60 49191.08 50097.18 41297.70 47593.65 45296.54 38895.70 50196.51 36494.68 51092.39 53461.80 54999.50 43386.97 52497.41 49598.40 441
pmmvs395.03 44994.40 45796.93 42797.70 47592.53 47295.08 47197.71 44088.57 52897.71 38898.08 40379.39 51099.82 20996.19 35499.11 39798.43 438
baseline293.73 47292.83 47996.42 44897.70 47591.28 49596.84 36489.77 54393.96 47292.44 53395.93 49079.14 51199.77 26692.94 46296.76 51198.21 451
WBMVS95.18 44694.78 44896.37 45097.68 47889.74 51695.80 44498.73 38997.54 27798.30 33698.44 36070.06 52899.82 20996.62 31799.87 10099.54 143
tpm94.67 45494.34 45995.66 48497.68 47888.42 52197.88 23894.90 50994.46 45396.03 48498.56 34378.66 51499.79 24895.88 36895.01 53298.78 400
ALIKED-MNN95.97 41895.30 43398.00 33797.66 48098.12 15396.98 35399.41 20491.11 51194.04 52097.30 45991.56 41998.61 51089.99 51399.63 26297.28 498
CANet_DTU97.26 34197.06 34197.84 35097.57 48194.65 40996.19 41698.79 37797.23 31895.14 50298.24 38793.22 38599.84 17997.34 24099.84 11499.04 349
testing1193.08 48492.02 49096.26 45597.56 48290.83 50596.32 40695.70 50196.47 36992.66 53193.73 52264.36 54499.59 39693.77 43997.57 48698.37 445
tpm293.09 48392.58 48294.62 50397.56 48286.53 53097.66 27495.79 50086.15 53594.07 51998.23 38975.95 52099.53 42290.91 50696.86 51097.81 474
testing9193.32 47992.27 48596.47 44697.54 48491.25 49696.17 42096.76 47897.18 32293.65 52693.50 52565.11 54399.63 37493.04 46097.45 49298.53 427
TR-MVS95.55 43395.12 44196.86 43497.54 48493.94 43896.49 39396.53 48494.36 45997.03 43696.61 47594.26 36099.16 48786.91 52696.31 51697.47 491
testing9993.04 48591.98 49396.23 45897.53 48690.70 50896.35 40495.94 49696.87 34593.41 52793.43 52763.84 54599.59 39693.24 45697.19 50298.40 441
131495.74 42695.60 41596.17 46297.53 48692.75 46998.07 20198.31 42091.22 50894.25 51596.68 47395.53 31199.03 49291.64 49297.18 50396.74 508
CostFormer93.97 46893.78 46594.51 50497.53 48685.83 53397.98 22495.96 49589.29 52394.99 50598.63 33178.63 51599.62 37994.54 41296.50 51398.09 459
FMVSNet596.01 41395.20 43998.41 28597.53 48696.10 33198.74 9999.50 14997.22 32198.03 36399.04 21069.80 52999.88 11597.27 24799.71 21799.25 297
PMMVS96.51 38595.98 40198.09 32597.53 48695.84 34794.92 47598.84 36991.58 50396.05 48295.58 49795.68 30699.66 35995.59 38698.09 47198.76 403
reproduce_monomvs95.00 45195.25 43594.22 50797.51 49183.34 54397.86 24298.44 41298.51 17999.29 14999.30 12667.68 53499.56 40898.89 9699.81 14099.77 53
PAPR95.29 44294.47 45497.75 36097.50 49295.14 38794.89 47798.71 39191.39 50795.35 49995.48 50294.57 34699.14 48984.95 53197.37 49798.97 363
testing22291.96 50090.37 50396.72 43997.47 49392.59 47096.11 42394.76 51096.83 34992.90 52992.87 53157.92 55199.55 41386.93 52597.52 48898.00 465
PatchT96.65 37996.35 39197.54 39097.40 49495.32 37797.98 22496.64 48199.33 6696.89 44599.42 8984.32 48799.81 22697.69 21097.49 49097.48 490
tpm cat193.29 48093.13 47693.75 51497.39 49584.74 53697.39 31597.65 44483.39 54094.16 51698.41 36382.86 49899.39 46191.56 49495.35 53197.14 500
PatchmatchNetpermissive95.58 43295.67 41295.30 49697.34 49687.32 52897.65 27696.65 48095.30 42897.07 43198.69 31484.77 48299.75 28494.97 40298.64 44198.83 386
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
SP-LightGlue97.22 34697.01 34497.88 34797.33 49797.19 26896.38 40199.08 32097.28 30896.53 46597.50 44692.36 40398.70 50897.84 18998.76 42997.74 480
Patchmtry97.35 33396.97 34698.50 27497.31 49896.47 31998.18 18098.92 35198.95 13198.78 26599.37 10585.44 47799.85 15995.96 36699.83 12699.17 327
LS3D98.63 16798.38 20099.36 7497.25 49999.38 1299.12 6199.32 24199.21 8298.44 32498.88 26697.31 20099.80 23596.58 32099.34 35298.92 373
IB-MVS91.63 1992.24 49790.90 50196.27 45497.22 50091.24 49794.36 49793.33 52892.37 49592.24 53594.58 51966.20 53999.89 9793.16 45894.63 53497.66 484
Christian Sormann, Mattia Rossi, Andreas Kuhn and Friedrich Fraundorfer: IB-MVS: An Iterative Algorithm for Deep Multi-View Stereo based on Binary Decisions. BMVC 2021
UWE-MVS92.38 49491.76 49794.21 50897.16 50184.65 53795.42 45988.45 54595.96 39596.17 47695.84 49466.36 53799.71 31091.87 48798.64 44198.28 449
tpmrst95.07 44895.46 42293.91 51297.11 50284.36 54097.62 28196.96 47094.98 43896.35 47498.80 28685.46 47699.59 39695.60 38596.23 51797.79 477
Syy-MVS96.04 41195.56 41997.49 39597.10 50394.48 41296.18 41896.58 48295.65 41194.77 50892.29 53691.27 42599.36 46498.17 15598.05 47598.63 420
myMVS_eth3d91.92 50190.45 50296.30 45297.10 50390.90 50396.18 41896.58 48295.65 41194.77 50892.29 53653.88 55299.36 46489.59 51798.05 47598.63 420
blended_shiyan695.99 41595.33 43097.95 34197.06 50594.89 39795.34 46298.58 40196.17 38197.06 43292.41 53387.64 45799.76 27297.64 21296.09 52099.19 319
MDTV_nov1_ep1395.22 43797.06 50583.20 54597.74 26396.16 48994.37 45896.99 43798.83 27983.95 49199.53 42293.90 43397.95 480
blended_shiyan895.98 41695.33 43097.94 34297.05 50794.87 39995.34 46298.59 40096.17 38197.09 43092.39 53487.62 45899.76 27297.65 21196.05 52699.20 313
MASt3R-SfM96.02 41295.82 40696.60 44297.03 50894.90 39694.26 50098.53 40788.40 53098.41 32798.67 31892.39 40297.62 52695.31 39399.41 34097.29 497
SP-SuperGlue97.31 33697.23 32997.57 38896.96 50997.24 26096.26 41298.76 38297.68 25896.88 44797.85 42294.32 35798.01 51897.76 20198.57 44897.45 492
SIFT-NN92.96 48692.79 48093.46 51796.92 51096.45 32091.89 53394.39 51592.91 48892.54 53295.46 50388.26 45490.71 54985.22 53097.52 48893.22 535
MVS93.19 48292.09 48896.50 44596.91 51194.03 43098.07 20198.06 43368.01 54694.56 51396.48 47895.96 29599.30 47583.84 53396.89 50996.17 516
E-PMN94.17 46494.37 45893.58 51696.86 51285.71 53490.11 53897.07 46598.17 21497.82 38397.19 46284.62 48498.94 49889.77 51497.68 48596.09 520
JIA-IIPM95.52 43495.03 44297.00 42296.85 51394.03 43096.93 35895.82 49899.20 8494.63 51299.71 2283.09 49699.60 39194.42 41894.64 53397.36 495
EMVS93.83 47094.02 46193.23 52296.83 51484.96 53589.77 53996.32 48797.92 23897.43 41596.36 48386.17 46698.93 49987.68 52297.73 48495.81 521
blend_shiyan492.09 49990.16 50697.88 34796.78 51594.93 39495.24 46698.58 40196.22 37996.07 48091.42 53863.46 54899.73 29896.70 30776.98 54898.98 359
cl2295.79 42595.39 42796.98 42496.77 51692.79 46794.40 49598.53 40794.59 45097.89 37498.17 39382.82 49999.24 48196.37 34199.03 40398.92 373
SP-MNN96.46 39296.24 39997.10 41796.71 51795.98 33996.00 42997.33 45595.82 40494.93 50697.10 46893.70 37698.01 51896.30 34798.30 45997.30 496
WB-MVSnew95.73 42795.57 41896.23 45896.70 51890.70 50896.07 42693.86 52495.60 41397.04 43495.45 50796.00 28899.55 41391.04 50298.31 45898.43 438
dp93.47 47693.59 46893.13 52396.64 51981.62 55197.66 27496.42 48692.80 49196.11 47898.64 32978.55 51799.59 39693.31 45392.18 54198.16 455
MonoMVSNet96.25 40496.53 38495.39 49296.57 52091.01 50198.82 9797.68 44398.57 17498.03 36399.37 10590.92 42897.78 52394.99 40093.88 53797.38 494
wanda-best-256-51295.48 43694.74 45097.68 36896.53 52194.12 42494.17 50298.57 40395.84 40196.71 45491.16 53986.05 46999.76 27297.57 22096.09 52099.17 327
FE-blended-shiyan795.48 43694.74 45097.68 36896.53 52194.12 42494.17 50298.57 40395.84 40196.71 45491.16 53986.05 46999.76 27297.57 22096.09 52099.17 327
usedtu_blend_shiyan596.20 40795.62 41397.94 34296.53 52194.93 39498.83 9699.59 10098.89 13896.71 45491.16 53986.05 46999.73 29896.70 30796.09 52099.17 327
test-LLR93.90 46993.85 46394.04 51096.53 52184.62 53894.05 50792.39 53196.17 38194.12 51795.07 50882.30 50099.67 34695.87 37198.18 46497.82 472
test-mter92.33 49691.76 49794.04 51096.53 52184.62 53894.05 50792.39 53194.00 47194.12 51795.07 50865.63 54299.67 34695.87 37198.18 46497.82 472
TESTMET0.1,192.19 49891.77 49693.46 51796.48 52682.80 54794.05 50791.52 53994.45 45694.00 52194.88 51466.65 53699.56 40895.78 37698.11 47098.02 462
MGCNet97.44 32497.01 34498.72 22196.42 52796.74 30397.20 34091.97 53798.46 18298.30 33698.79 28892.74 39899.91 7499.30 6299.94 5199.52 161
miper_enhance_ethall96.01 41395.74 40896.81 43596.41 52892.27 47993.69 51598.89 35791.14 51098.30 33697.35 45890.58 43299.58 40396.31 34599.03 40398.60 422
tpmvs95.02 45095.25 43594.33 50596.39 52985.87 53198.08 19796.83 47795.46 42295.51 49798.69 31485.91 47299.53 42294.16 42496.23 51797.58 487
CMPMVSbinary75.91 2396.29 40095.44 42498.84 18896.25 53098.69 9997.02 34999.12 31388.90 52597.83 38198.86 26989.51 44298.90 50291.92 48599.51 31098.92 373
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
ALIKED-NN94.29 46293.41 47196.94 42696.18 53197.66 21994.90 47698.68 39288.85 52690.43 53996.81 47189.82 43896.59 53986.67 52798.33 45596.58 511
test0.0.03 194.51 45693.69 46696.99 42396.05 53293.61 45494.97 47493.49 52696.17 38197.57 40094.88 51482.30 50099.01 49693.60 44494.17 53698.37 445
EPMVS93.72 47393.27 47295.09 49996.04 53387.76 52598.13 18785.01 55094.69 44796.92 43998.64 32978.47 51899.31 47395.04 39996.46 51498.20 452
cascas94.79 45394.33 46096.15 46696.02 53492.36 47792.34 53199.26 27585.34 53795.08 50494.96 51392.96 39398.53 51194.41 42198.59 44697.56 488
gbinet_0.2-2-1-0.0295.44 43894.55 45398.14 31995.99 53595.34 37694.71 48098.29 42196.00 39396.05 48290.50 54384.99 47999.79 24897.33 24297.07 50699.28 287
MVStest195.86 42295.60 41596.63 44195.87 53691.70 48497.93 23098.94 34498.03 22899.56 7499.66 3271.83 52698.26 51499.35 5899.24 37399.91 13
gg-mvs-nofinetune92.37 49591.20 49995.85 47795.80 53792.38 47699.31 3081.84 55299.75 1091.83 53699.74 1868.29 53199.02 49487.15 52397.12 50496.16 517
SP-DiffGlue96.87 37096.76 36397.21 41195.17 53896.88 29596.12 42298.93 34796.51 36498.37 33397.55 44193.65 37797.83 52196.11 36198.45 45396.92 502
SP-NN94.67 45494.44 45695.36 49495.12 53995.23 38394.27 49996.10 49294.46 45390.91 53895.76 49591.47 42293.87 54695.23 39696.62 51297.00 501
gm-plane-assit94.83 54081.97 54988.07 53294.99 51199.60 39191.76 489
GG-mvs-BLEND94.76 50194.54 54192.13 48199.31 3080.47 55388.73 54491.01 54267.59 53598.16 51782.30 53994.53 53593.98 526
UWE-MVS-2890.22 50489.28 50793.02 52494.50 54282.87 54696.52 39187.51 54695.21 43392.36 53496.04 48671.57 52798.25 51572.04 54697.77 48397.94 467
EPNet_dtu94.93 45294.78 44895.38 49393.58 54387.68 52696.78 36795.69 50397.35 30089.14 54398.09 40288.15 45599.49 43794.95 40399.30 36398.98 359
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
0.4-1-1-0.188.42 50685.91 50995.94 47293.08 54491.54 48690.99 53592.04 53589.96 52084.83 54783.25 54563.75 54699.52 42693.25 45582.07 54396.75 507
XFeat-MNN93.41 47892.98 47894.68 50292.63 54592.92 46489.72 54095.81 49992.10 49997.23 42596.29 48484.95 48097.31 53189.60 51698.54 45093.81 528
dongtai76.24 51375.95 51677.12 53192.39 54667.91 55690.16 53759.44 55782.04 54189.42 54294.67 51849.68 55481.74 55048.06 54977.66 54781.72 545
0.3-1-1-0.01587.27 50884.50 51295.57 48691.70 54790.77 50689.41 54192.04 53588.98 52482.46 54981.35 54660.36 55099.50 43392.96 46181.23 54596.45 512
KD-MVS_2432*160092.87 48991.99 49195.51 48991.37 54889.27 51894.07 50598.14 42995.42 42497.25 42396.44 48067.86 53299.24 48191.28 49896.08 52498.02 462
miper_refine_blended92.87 48991.99 49195.51 48991.37 54889.27 51894.07 50598.14 42995.42 42497.25 42396.44 48067.86 53299.24 48191.28 49896.08 52498.02 462
0.4-1-1-0.287.49 50784.89 51095.31 49591.33 55090.08 51388.47 54292.07 53488.70 52784.06 54881.08 54763.62 54799.49 43792.93 46381.71 54496.37 513
XFeat-NN89.63 50589.13 50891.14 52690.93 55190.02 51484.90 54394.05 52388.10 53192.89 53093.33 52878.74 51390.89 54883.46 53495.72 52892.52 543
EPNet96.14 40895.44 42498.25 30590.76 55295.50 36497.92 23394.65 51198.97 12792.98 52898.85 27289.12 44599.87 13595.99 36499.68 23999.39 232
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
kuosan69.30 51468.95 51770.34 53287.68 55365.00 55791.11 53459.90 55669.02 54574.46 55188.89 54448.58 55568.03 55228.61 55072.33 55077.99 546
GLUNet-SfM86.26 50984.68 51191.01 52780.58 55483.56 54278.04 54493.59 52576.70 54495.29 50094.72 51777.51 51994.26 54566.39 54899.33 35495.20 524
test_method79.78 51179.50 51480.62 52980.21 55545.76 55870.82 54598.41 41731.08 54980.89 55097.71 43184.85 48197.37 52991.51 49580.03 54698.75 404
tmp_tt78.77 51278.73 51578.90 53058.45 55674.76 55594.20 50178.26 55439.16 54886.71 54592.82 53280.50 50475.19 55186.16 52992.29 54086.74 544
testmvs17.12 51620.53 5196.87 53412.05 5574.20 56093.62 5176.73 5584.62 55210.41 55324.33 5498.28 5573.56 5549.69 55215.07 55112.86 549
test12317.04 51720.11 5207.82 53310.25 5584.91 55994.80 4784.47 5594.93 55110.00 55424.28 5509.69 5563.64 55310.14 55112.43 55214.92 548
mmdepth0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
monomultidepth0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
test_blank0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
eth-test20.00 559
eth-test0.00 559
uanet_test0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
DCPMVS0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
cdsmvs_eth3d_5k24.66 51532.88 5180.00 5350.00 5590.00 5610.00 54699.10 3160.00 5530.00 55597.58 43999.21 180.00 5550.00 5530.00 5530.00 550
pcd_1.5k_mvsjas8.17 51810.90 5210.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 55398.07 1280.00 5550.00 5530.00 5530.00 550
sosnet-low-res0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
sosnet0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
uncertanet0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
Regformer0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
ab-mvs-re8.12 51910.83 5220.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 55597.48 4480.00 5580.00 5550.00 5530.00 5530.00 550
uanet0.00 5200.00 5230.00 5350.00 5590.00 5610.00 5460.00 5600.00 5530.00 5550.00 5530.00 5580.00 5550.00 5530.00 5530.00 550
WAC-MVS90.90 50391.37 497
PC_three_145293.27 47999.40 11798.54 34498.22 11397.00 53395.17 39799.45 32799.49 177
test_241102_TWO99.30 25498.03 22899.26 15799.02 21497.51 18599.88 11596.91 28199.60 27599.66 80
test_0728_THIRD98.17 21499.08 19199.02 21497.89 14799.88 11597.07 26799.71 21799.70 70
GSMVS98.81 393
sam_mvs184.74 48398.81 393
sam_mvs84.29 489
MTGPAbinary99.20 290
test_post197.59 28920.48 55283.07 49799.66 35994.16 424
test_post21.25 55183.86 49299.70 319
patchmatchnet-post98.77 29284.37 48699.85 159
MTMP97.93 23091.91 538
test9_res93.28 45499.15 39099.38 241
agg_prior292.50 47899.16 38899.37 244
test_prior497.97 17895.86 440
test_prior295.74 44796.48 36896.11 47897.63 43795.92 29894.16 42499.20 382
旧先验295.76 44688.56 52997.52 40499.66 35994.48 414
新几何295.93 436
无先验95.74 44798.74 38889.38 52299.73 29892.38 48199.22 308
原ACMM295.53 453
testdata299.79 24892.80 469
segment_acmp97.02 221
testdata195.44 45896.32 375
plane_prior599.27 26999.70 31994.42 41899.51 31099.45 206
plane_prior497.98 411
plane_prior397.78 20797.41 29397.79 384
plane_prior297.77 25598.20 210
plane_prior97.65 22197.07 34896.72 35599.36 347
n20.00 560
nn0.00 560
door-mid99.57 111
test1198.87 360
door99.41 204
HQP5-MVS96.79 299
BP-MVS92.82 467
HQP4-MVS95.56 49199.54 41999.32 273
HQP3-MVS99.04 32999.26 371
HQP2-MVS93.84 370
MDTV_nov1_ep13_2view74.92 55497.69 26990.06 51997.75 38785.78 47393.52 44798.69 412
ACMMP++_ref99.77 172
ACMMP++99.68 239
Test By Simon96.52 258