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 bysort bysort bysort bysort bysort bysort bysort bysort bysort bysorted bysort bysort bysort bysort bysort by
pcd_1.5k_mvsjas16.61 33222.14 3330.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 199.28 390.00 3570.00 3540.00 3550.00 355
pcd1.5k->3k49.97 32855.52 32933.31 34199.95 130.00 3590.00 35099.81 560.00 3540.00 355100.00 199.96 10.00 3570.00 354100.00 199.92 3
sosnet-low-res8.33 33311.11 3340.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 10.00 3620.00 3570.00 3540.00 3550.00 355
sosnet8.33 33311.11 3340.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 10.00 3620.00 3570.00 3540.00 3550.00 355
uncertanet8.33 33311.11 3340.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 10.00 3620.00 3570.00 3540.00 3550.00 355
Regformer8.33 33311.11 3340.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 10.00 3620.00 3570.00 3540.00 3550.00 355
uanet8.33 33311.11 3340.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 355100.00 10.00 3620.00 3570.00 3540.00 3550.00 355
Anonymous2023121199.83 1199.81 1099.89 699.97 499.95 299.88 499.93 699.87 1399.94 2099.98 899.55 2199.95 4199.21 7999.98 3699.78 31
LCM-MVSNet99.95 199.95 199.95 199.99 199.99 199.95 299.97 399.99 1100.00 199.98 899.78 8100.00 199.92 3100.00 199.87 10
ANet_high99.88 499.87 499.91 299.99 199.91 399.65 54100.00 199.90 6100.00 199.97 1099.61 1799.97 1699.75 31100.00 199.84 15
MVS-HIRNet97.86 26698.22 23996.76 32499.28 27591.53 34698.38 26992.60 35399.13 15099.31 21499.96 1197.18 23799.68 30898.34 15699.83 14399.07 272
pmmvs699.86 699.86 699.83 2499.94 1599.90 499.83 899.91 1199.85 1999.94 2099.95 1299.73 1099.90 10999.65 3599.97 4799.69 56
gg-mvs-nofinetune95.87 32095.17 32397.97 29898.19 34396.95 29999.69 3889.23 35699.89 1096.24 34699.94 1381.19 35099.51 34093.99 32898.20 33097.44 338
anonymousdsp99.80 1399.77 1499.90 499.96 599.88 899.73 2199.85 2999.70 4999.92 3199.93 1499.45 2399.97 1699.36 61100.00 199.85 14
mvs_tets99.90 299.90 299.90 499.96 599.79 3399.72 2599.88 1899.92 599.98 399.93 1499.94 299.98 799.77 30100.00 199.92 3
OurMVSNet-221017-099.75 1999.71 2599.84 2199.96 599.83 2299.83 899.85 2999.80 3199.93 2699.93 1498.54 13999.93 6699.59 3999.98 3699.76 37
PS-MVSNAJss99.84 999.82 999.89 699.96 599.77 3799.68 4199.85 2999.95 399.98 399.92 1799.28 3999.98 799.75 31100.00 199.94 2
test_djsdf99.84 999.81 1099.91 299.94 1599.84 1899.77 1399.80 6099.73 4299.97 699.92 1799.77 999.98 799.43 53100.00 199.90 5
TDRefinement99.72 2599.70 2899.77 3999.90 2599.85 1399.86 799.92 799.69 5399.78 8299.92 1799.37 3099.88 13998.93 12199.95 6599.60 123
UA-Net99.78 1599.76 1899.86 1899.72 13099.71 5199.91 399.95 599.96 299.71 10699.91 2099.15 5399.97 1699.50 48100.00 199.90 5
v7n99.82 1299.80 1299.88 1299.96 599.84 1899.82 1099.82 4899.84 2399.94 2099.91 2099.13 5799.96 3399.83 2099.99 2099.83 18
v1399.76 1799.77 1499.73 6299.86 3599.55 9599.77 1399.86 2299.79 3399.96 899.91 2098.90 8399.87 15899.91 5100.00 199.78 31
jajsoiax99.89 399.89 399.89 699.96 599.78 3599.70 2999.86 2299.89 1099.98 399.90 2399.94 299.98 799.75 31100.00 199.90 5
v1299.75 1999.77 1499.72 6799.85 3999.53 9899.75 1799.86 2299.78 3499.96 899.90 2398.88 8699.86 17899.91 5100.00 199.77 34
v1199.75 1999.76 1899.71 7199.85 3999.49 10199.73 2199.84 3799.75 3999.95 1699.90 2398.93 7999.86 17899.92 3100.00 199.77 34
v5299.85 799.84 799.89 699.96 599.89 699.87 599.81 5699.85 1999.96 899.90 2399.27 4299.95 4199.93 199.99 2099.82 23
V499.85 799.84 799.88 1299.96 599.89 699.87 599.81 5699.85 1999.96 899.90 2399.27 4299.95 4199.93 1100.00 199.82 23
V999.74 2399.75 2099.71 7199.84 4299.50 9999.74 1999.86 2299.76 3899.96 899.90 2398.83 8999.85 19499.91 5100.00 199.77 34
SixPastTwentyTwo99.42 8499.30 10199.76 4299.92 1999.67 6799.70 2999.14 27999.65 6599.89 3899.90 2396.20 26199.94 5599.42 5799.92 8899.67 69
DeepC-MVS98.90 499.62 4399.61 4199.67 8499.72 13099.44 11699.24 14099.71 10499.27 12399.93 2699.90 2399.70 1299.93 6698.99 10899.99 2099.64 95
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
V1499.73 2499.74 2199.69 7899.83 4699.48 10499.72 2599.85 2999.74 4099.96 899.89 3198.79 9799.85 19499.91 5100.00 199.76 37
TransMVSNet (Re)99.78 1599.77 1499.81 2799.91 2199.85 1399.75 1799.86 2299.70 4999.91 3399.89 3199.60 1999.87 15899.59 3999.74 18999.71 49
MIMVSNet199.66 3699.62 3899.80 2999.94 1599.87 999.69 3899.77 7399.78 3499.93 2699.89 3197.94 18999.92 8399.65 3599.98 3699.62 112
v1599.72 2599.73 2499.68 8199.82 5399.44 11699.70 2999.85 2999.72 4599.95 1699.88 3498.76 10499.84 21099.90 9100.00 199.75 40
Baseline_NR-MVSNet99.49 6899.37 8799.82 2599.91 2199.84 1898.83 22299.86 2299.68 5699.65 12599.88 3497.67 20999.87 15899.03 10599.86 12699.76 37
K. test v398.87 20098.60 20799.69 7899.93 1899.46 10999.74 1994.97 35199.78 3499.88 4699.88 3493.66 28499.97 1699.61 3899.95 6599.64 95
new-patchmatchnet99.35 10299.57 4898.71 27499.82 5396.62 30398.55 24999.75 8499.50 9099.88 4699.87 3799.31 3599.88 13999.43 53100.00 199.62 112
v74899.76 1799.74 2199.84 2199.95 1399.83 2299.82 1099.80 6099.82 2799.95 1699.87 3798.72 11199.93 6699.72 3499.98 3699.75 40
pm-mvs199.79 1499.79 1399.78 3799.91 2199.83 2299.76 1699.87 2099.73 4299.89 3899.87 3799.63 1599.87 15899.54 4499.92 8899.63 99
v1799.70 2899.71 2599.67 8499.81 6199.44 11699.70 2999.83 4099.69 5399.94 2099.87 3798.70 11299.84 21099.88 1499.99 2099.73 43
v1699.70 2899.71 2599.67 8499.81 6199.43 12299.70 2999.83 4099.70 4999.94 2099.87 3798.69 11499.84 21099.88 1499.99 2099.73 43
v1099.69 3299.69 2999.66 9299.81 6199.39 13499.66 4999.75 8499.60 8099.92 3199.87 3798.75 10799.86 17899.90 999.99 2099.73 43
JIA-IIPM98.06 26297.92 25998.50 28198.59 33597.02 29898.80 22798.51 30699.88 1297.89 32599.87 3791.89 29899.90 10998.16 17497.68 34298.59 298
LTVRE_ROB99.19 199.88 499.87 499.88 1299.91 2199.90 499.96 199.92 799.90 699.97 699.87 3799.81 799.95 4199.54 4499.99 2099.80 25
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
v1899.68 3399.69 2999.65 9699.79 8299.40 13199.68 4199.83 4099.66 6299.93 2699.85 4598.65 12399.84 21099.87 1899.99 2099.71 49
v899.68 3399.69 2999.65 9699.80 6999.40 13199.66 4999.76 7999.64 6799.93 2699.85 4598.66 12199.84 21099.88 1499.99 2099.71 49
EU-MVSNet99.39 9399.62 3898.72 27399.88 2896.44 30599.56 7099.85 2999.90 699.90 3599.85 4598.09 17899.83 22699.58 4199.95 6599.90 5
DSMNet-mixed99.48 7099.65 3498.95 24899.71 13397.27 29499.50 7499.82 4899.59 8299.41 18899.85 4599.62 16100.00 199.53 4699.89 10699.59 134
ACMH98.42 699.59 4599.54 5399.72 6799.86 3599.62 8299.56 7099.79 6898.77 18799.80 7499.85 4599.64 1499.85 19498.70 13799.89 10699.70 53
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
XXY-MVS99.71 2799.67 3299.81 2799.89 2799.72 5099.59 6599.82 4899.39 11199.82 6599.84 5099.38 2899.91 9299.38 5899.93 8599.80 25
FC-MVSNet-test99.70 2899.65 3499.86 1899.88 2899.86 1299.72 2599.78 7099.90 699.82 6599.83 5198.45 15299.87 15899.51 4799.97 4799.86 12
lessismore_v099.64 10399.86 3599.38 14090.66 35499.89 3899.83 5194.56 27899.97 1699.56 4399.92 8899.57 142
no-one99.28 11799.23 11799.45 17199.87 3299.08 20098.95 20699.52 19998.88 17399.77 8699.83 5197.78 20199.90 10998.46 14999.99 2099.38 211
GBi-Net99.42 8499.31 9699.73 6299.49 21599.77 3799.68 4199.70 10799.44 10199.62 13799.83 5197.21 23399.90 10998.96 11599.90 10099.53 156
test199.42 8499.31 9699.73 6299.49 21599.77 3799.68 4199.70 10799.44 10199.62 13799.83 5197.21 23399.90 10998.96 11599.90 10099.53 156
FMVSNet199.66 3699.63 3799.73 6299.78 8899.77 3799.68 4199.70 10799.67 5899.82 6599.83 5198.98 7399.90 10999.24 7899.97 4799.53 156
TAMVS99.49 6899.45 7399.63 10799.48 22199.42 12699.45 7999.57 17499.66 6299.78 8299.83 5197.85 19699.86 17899.44 5299.96 5999.61 117
SD-MVS99.01 17799.30 10198.15 29499.50 21099.40 13198.94 20999.61 14799.22 13799.75 9099.82 5899.54 2295.51 35497.48 21399.87 11999.54 153
ab-mvs99.33 11099.28 10899.47 16499.57 18299.39 13499.78 1299.43 22498.87 17499.57 14899.82 5898.06 18199.87 15898.69 13899.73 19599.15 249
PMVScopyleft92.94 2198.82 20598.81 19398.85 25899.84 4297.99 27599.20 15099.47 21399.71 4799.42 18299.82 5898.09 17899.47 34293.88 32999.85 12999.07 272
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
VPA-MVSNet99.66 3699.62 3899.79 3499.68 14999.75 4399.62 5699.69 11399.85 1999.80 7499.81 6198.81 9099.91 9299.47 5099.88 11299.70 53
UGNet99.38 9599.34 9299.49 15998.90 31098.90 21999.70 2999.35 24599.86 1698.57 29499.81 6198.50 14899.93 6699.38 5899.98 3699.66 79
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
ambc99.20 22899.35 25298.53 24099.17 15899.46 21699.67 11599.80 6398.46 15199.70 29497.92 18599.70 20399.38 211
VDDNet98.97 18398.82 19299.42 17899.71 13398.81 22899.62 5698.68 30099.81 2899.38 20099.80 6394.25 28099.85 19498.79 12999.32 26899.59 134
mvs_anonymous99.28 11799.39 8298.94 24999.19 28797.81 28299.02 19299.55 18099.78 3499.85 5799.80 6398.24 16999.86 17899.57 4299.50 24299.15 249
QAPM98.40 24297.99 25399.65 9699.39 24499.47 10599.67 4699.52 19991.70 34298.78 27899.80 6398.55 13799.95 4194.71 31999.75 18299.53 156
wuykxyi23d99.65 4199.64 3699.69 7899.92 1999.20 18598.89 21199.99 298.73 19499.95 1699.80 6399.84 499.99 499.64 3799.98 3699.89 9
3Dnovator99.15 299.43 8199.36 9099.65 9699.39 24499.42 12699.70 2999.56 17799.23 13499.35 20499.80 6399.17 5199.95 4198.21 16699.84 13399.59 134
CMPMVSbinary77.52 2398.50 23098.19 24499.41 18598.33 34199.56 9299.01 19499.59 16595.44 32199.57 14899.80 6395.64 26899.46 34596.47 26799.92 8899.21 239
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
FIs99.65 4199.58 4599.84 2199.84 4299.85 1399.66 4999.75 8499.86 1699.74 9899.79 7098.27 16799.85 19499.37 6099.93 8599.83 18
testing_299.58 4699.56 5199.62 11599.81 6199.44 11699.14 17199.43 22499.69 5399.82 6599.79 7099.14 5499.79 26099.31 7099.95 6599.63 99
testmv99.53 6599.51 6699.59 12699.73 12099.31 15698.48 25899.92 799.57 8499.87 5199.79 7099.12 5899.91 9299.16 9199.99 2099.55 146
LCM-MVSNet-Re99.28 11799.15 12399.67 8499.33 26699.76 4199.34 10699.97 398.93 16899.91 3399.79 7098.68 11699.93 6696.80 24999.56 22899.30 229
CHOSEN 1792x268899.39 9399.30 10199.65 9699.88 2899.25 17298.78 23199.88 1898.66 19899.96 899.79 7097.45 22099.93 6699.34 6399.99 2099.78 31
LP98.34 24998.44 21998.05 29698.88 31795.31 32799.28 13098.74 29799.12 15198.98 25399.79 7093.40 28699.93 6698.38 15299.41 25898.90 284
CR-MVSNet98.35 24798.20 24198.83 26299.05 30498.12 26799.30 12199.67 11997.39 28199.16 23699.79 7091.87 29999.91 9298.78 13298.77 30298.44 306
Patchmtry98.78 21098.54 21599.49 15998.89 31499.19 18799.32 11199.67 11999.65 6599.72 10299.79 7091.87 29999.95 4198.00 18299.97 4799.33 223
wuyk23d97.58 27399.13 12792.93 33899.69 14299.49 10199.52 7299.77 7397.97 25099.96 899.79 7099.84 499.94 5595.85 29099.82 15279.36 351
DTE-MVSNet99.68 3399.61 4199.88 1299.80 6999.87 999.67 4699.71 10499.72 4599.84 6099.78 7998.67 11999.97 1699.30 7199.95 6599.80 25
EG-PatchMatch MVS99.57 4799.56 5199.62 11599.77 9899.33 15399.26 13499.76 7999.32 11999.80 7499.78 7999.29 3799.87 15899.15 9299.91 9899.66 79
RPSCF99.18 14699.02 15999.64 10399.83 4699.85 1399.44 8199.82 4898.33 23399.50 17099.78 7997.90 19199.65 32596.78 25099.83 14399.44 195
3Dnovator+98.92 399.35 10299.24 11599.67 8499.35 25299.47 10599.62 5699.50 20499.44 10199.12 24199.78 7998.77 10399.94 5597.87 18899.72 20099.62 112
Gipumacopyleft99.57 4799.59 4399.49 15999.98 399.71 5199.72 2599.84 3799.81 2899.94 2099.78 7998.91 8299.71 29398.41 15199.95 6599.05 274
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
COLMAP_ROBcopyleft98.06 1299.45 7999.37 8799.70 7799.83 4699.70 5899.38 9299.78 7099.53 8799.67 11599.78 7999.19 4999.86 17897.32 22199.87 11999.55 146
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
USDC98.96 18698.93 17499.05 24299.54 19697.99 27597.07 33799.80 6098.21 23999.75 9099.77 8598.43 15399.64 32797.90 18699.88 11299.51 167
EPP-MVSNet99.17 14999.00 16499.66 9299.80 6999.43 12299.70 2999.24 27099.48 9299.56 15599.77 8594.89 27499.93 6698.72 13699.89 10699.63 99
OpenMVScopyleft98.12 1098.23 25497.89 26399.26 21899.19 28799.26 16899.65 5499.69 11391.33 34398.14 31699.77 8598.28 16699.96 3395.41 30999.55 23498.58 300
PatchT98.45 23698.32 23498.83 26298.94 30898.29 25899.24 14098.82 29399.84 2399.08 24499.76 8891.37 30299.94 5598.82 12899.00 29098.26 313
MIMVSNet98.43 23798.20 24199.11 23499.53 19998.38 24999.58 6798.61 30298.96 16499.33 21099.76 8890.92 30699.81 25297.38 21999.76 17999.15 249
DP-MVS99.48 7099.39 8299.74 5599.57 18299.62 8299.29 12999.61 14799.87 1399.74 9899.76 8898.69 11499.87 15898.20 16799.80 16599.75 40
ACMH+98.40 899.50 6699.43 7899.71 7199.86 3599.76 4199.32 11199.77 7399.53 8799.77 8699.76 8899.26 4599.78 26897.77 19499.88 11299.60 123
v124099.56 5099.58 4599.51 15599.80 6999.00 20599.00 19699.65 13299.15 14799.90 3599.75 9299.09 6199.88 13999.90 999.96 5999.67 69
Vis-MVSNetpermissive99.75 1999.74 2199.79 3499.88 2899.66 7099.69 3899.92 799.67 5899.77 8699.75 9299.61 1799.98 799.35 6299.98 3699.72 46
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
RPMNet98.53 22898.44 21998.83 26299.05 30498.12 26799.30 12198.78 29599.86 1699.16 23699.74 9492.53 29599.91 9298.75 13398.77 30298.44 306
FMVSNet299.35 10299.28 10899.55 14599.49 21599.35 15099.45 7999.57 17499.44 10199.70 10899.74 9497.21 23399.87 15899.03 10599.94 7799.44 195
IterMVS98.97 18399.16 12198.42 28399.74 11795.64 32298.06 29899.83 4099.83 2699.85 5799.74 9496.10 26499.99 499.27 77100.00 199.63 99
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
OpenMVS_ROBcopyleft97.31 1797.36 27896.84 28898.89 25799.29 27399.45 11498.87 21599.48 20986.54 34899.44 17699.74 9497.34 22799.86 17891.61 33399.28 27297.37 340
semantic-postprocess98.51 27899.75 11195.90 31599.84 3799.84 2399.89 3899.73 9895.96 26699.99 499.33 65100.00 199.63 99
ACMMP_Plus99.28 11799.11 13299.79 3499.75 11199.81 2898.95 20699.53 18998.27 23799.53 16499.73 9898.75 10799.87 15897.70 19899.83 14399.68 62
v114499.54 5999.53 6199.59 12699.79 8299.28 16299.10 17999.61 14799.20 13899.84 6099.73 9898.67 11999.84 21099.86 1999.98 3699.64 95
PM-MVS99.36 10099.29 10699.58 13099.83 4699.66 7098.95 20699.86 2298.85 17699.81 7199.73 9898.40 15799.92 8398.36 15499.83 14399.17 247
PEN-MVS99.66 3699.59 4399.89 699.83 4699.87 999.66 4999.73 9299.70 4999.84 6099.73 9898.56 13399.96 3399.29 7499.94 7799.83 18
PVSNet_Blended_VisFu99.40 9099.38 8499.44 17399.90 2598.66 23598.94 20999.91 1197.97 25099.79 7999.73 9899.05 6999.97 1699.15 9299.99 2099.68 62
Patchmatch-RL test98.60 22198.36 23099.33 20299.77 9899.07 20298.27 27699.87 2098.91 17199.74 9899.72 10490.57 31399.79 26098.55 14599.85 12999.11 258
v14419299.55 5499.54 5399.58 13099.78 8899.20 18599.11 17899.62 14399.18 14099.89 3899.72 10498.66 12199.87 15899.88 1499.97 4799.66 79
v119299.57 4799.57 4899.57 13699.77 9899.22 17999.04 18999.60 16199.18 14099.87 5199.72 10499.08 6499.85 19499.89 1399.98 3699.66 79
AllTest99.21 13999.07 14699.63 10799.78 8899.64 7699.12 17799.83 4098.63 20199.63 13099.72 10498.68 11699.75 28296.38 26899.83 14399.51 167
TestCases99.63 10799.78 8899.64 7699.83 4098.63 20199.63 13099.72 10498.68 11699.75 28296.38 26899.83 14399.51 167
v799.56 5099.54 5399.61 11899.80 6999.39 13499.30 12199.59 16599.14 14999.82 6599.72 10498.75 10799.84 21099.83 2099.94 7799.61 117
ACMM98.09 1199.46 7799.38 8499.72 6799.80 6999.69 6299.13 17699.65 13298.99 16299.64 12799.72 10499.39 2499.86 17898.23 16499.81 16099.60 123
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
v192192099.56 5099.57 4899.55 14599.75 11199.11 19499.05 18799.61 14799.15 14799.88 4699.71 11199.08 6499.87 15899.90 999.97 4799.66 79
APDe-MVS99.48 7099.36 9099.85 2099.55 19599.81 2899.50 7499.69 11398.99 16299.75 9099.71 11198.79 9799.93 6698.46 14999.85 12999.80 25
PS-CasMVS99.66 3699.58 4599.89 699.80 6999.85 1399.66 4999.73 9299.62 7199.84 6099.71 11198.62 12799.96 3399.30 7199.96 5999.86 12
XVG-ACMP-BASELINE99.23 12899.10 13999.63 10799.82 5399.58 8998.83 22299.72 10198.36 22399.60 14499.71 11198.92 8099.91 9297.08 23699.84 13399.40 206
PVSNet_BlendedMVS99.03 17199.01 16299.09 23699.54 19697.99 27598.58 24499.82 4897.62 26999.34 20899.71 11198.52 14599.77 27497.98 18399.97 4799.52 164
IS-MVSNet99.03 17198.85 18699.55 14599.80 6999.25 17299.73 2199.15 27899.37 11399.61 14299.71 11194.73 27699.81 25297.70 19899.88 11299.58 138
LS3D99.24 12799.11 13299.61 11898.38 34099.79 3399.57 6899.68 11699.61 7599.15 23899.71 11198.70 11299.91 9297.54 21099.68 20699.13 256
TSAR-MVS + MP.99.34 10799.24 11599.63 10799.82 5399.37 14399.26 13499.35 24598.77 18799.57 14899.70 11899.27 4299.88 13997.71 19799.75 18299.65 89
V4299.56 5099.54 5399.63 10799.79 8299.46 10999.39 8699.59 16599.24 13299.86 5699.70 11898.55 13799.82 23399.79 2699.95 6599.60 123
MDA-MVSNet-bldmvs99.06 16599.05 15299.07 24099.80 6997.83 28198.89 21199.72 10199.29 12099.63 13099.70 11896.47 25499.89 12498.17 17399.82 15299.50 173
CDS-MVSNet99.22 13699.13 12799.50 15799.35 25299.11 19498.96 20599.54 18499.46 9999.61 14299.70 11896.31 25899.83 22699.34 6399.88 11299.55 146
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
DeepPCF-MVS98.42 699.18 14699.02 15999.67 8499.22 28299.75 4397.25 33599.47 21398.72 19599.66 11999.70 11899.29 3799.63 32998.07 17999.81 16099.62 112
TinyColmap98.97 18398.93 17499.07 24099.46 23098.19 26397.75 32099.75 8498.79 18499.54 16199.70 11898.97 7599.62 33096.63 25999.83 14399.41 205
tfpnnormal99.43 8199.38 8499.60 12499.87 3299.75 4399.59 6599.78 7099.71 4799.90 3599.69 12498.85 8899.90 10997.25 22799.78 17399.15 249
tmp_tt95.75 32295.42 31996.76 32489.90 35594.42 33198.86 21697.87 32378.01 34999.30 21899.69 12497.70 20495.89 35399.29 7498.14 33499.95 1
v114199.54 5999.52 6399.57 13699.78 8899.27 16699.15 16699.61 14799.26 12799.89 3899.69 12498.56 13399.82 23399.82 2399.97 4799.63 99
v1neww99.55 5499.54 5399.61 11899.80 6999.39 13499.32 11199.61 14799.18 14099.87 5199.69 12498.64 12599.82 23399.79 2699.94 7799.60 123
v7new99.55 5499.54 5399.61 11899.80 6999.39 13499.32 11199.61 14799.18 14099.87 5199.69 12498.64 12599.82 23399.79 2699.94 7799.60 123
divwei89l23v2f11299.54 5999.52 6399.57 13699.78 8899.27 16699.15 16699.61 14799.26 12799.89 3899.69 12498.56 13399.82 23399.82 2399.96 5999.63 99
VDD-MVS99.20 14199.11 13299.44 17399.43 23698.98 20799.50 7498.32 31499.80 3199.56 15599.69 12496.99 24399.85 19498.99 10899.73 19599.50 173
WR-MVS_H99.61 4499.53 6199.87 1699.80 6999.83 2299.67 4699.75 8499.58 8399.85 5799.69 12498.18 17699.94 5599.28 7699.95 6599.83 18
LPG-MVS_test99.22 13699.05 15299.74 5599.82 5399.63 8099.16 16499.73 9297.56 27299.64 12799.69 12499.37 3099.89 12496.66 25799.87 11999.69 56
LGP-MVS_train99.74 5599.82 5399.63 8099.73 9297.56 27299.64 12799.69 12499.37 3099.89 12496.66 25799.87 11999.69 56
FMVSNet597.80 26797.25 27899.42 17898.83 32098.97 20999.38 9299.80 6098.87 17499.25 22299.69 12480.60 35499.91 9298.96 11599.90 10099.38 211
ACMMPcopyleft99.25 12499.08 14299.74 5599.79 8299.68 6599.50 7499.65 13298.07 24499.52 16699.69 12498.57 13299.92 8397.18 23399.79 16899.63 99
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
MVP-Stereo99.16 15199.08 14299.43 17699.48 22199.07 20299.08 18499.55 18098.63 20199.31 21499.68 13698.19 17599.78 26898.18 17199.58 22799.45 190
Qingsong Yan: MVP-Stereo: A Parallel Multi-View Patchmatch Stereo Method with Dilation Matching for Photogrammetric Application.
nrg03099.70 2899.66 3399.82 2599.76 10399.84 1899.61 6099.70 10799.93 499.78 8299.68 13699.10 5999.78 26899.45 5199.96 5999.83 18
v699.55 5499.54 5399.61 11899.80 6999.39 13499.32 11199.60 16199.18 14099.87 5199.68 13698.65 12399.82 23399.79 2699.95 6599.61 117
v199.54 5999.52 6399.58 13099.77 9899.28 16299.15 16699.61 14799.26 12799.88 4699.68 13698.56 13399.82 23399.82 2399.97 4799.63 99
XVG-OURS99.21 13999.06 14899.65 9699.82 5399.62 8297.87 31799.74 8998.36 22399.66 11999.68 13699.71 1199.90 10996.84 24799.88 11299.43 201
N_pmnet98.73 21598.53 21699.35 19999.72 13098.67 23498.34 27294.65 35298.35 22899.79 7999.68 13698.03 18299.93 6698.28 16299.92 8899.44 195
EI-MVSNet99.38 9599.44 7599.21 22699.58 17398.09 27199.26 13499.46 21699.62 7199.75 9099.67 14298.54 13999.85 19499.15 9299.92 8899.68 62
CVMVSNet98.61 22098.88 18297.80 30799.58 17393.60 33499.26 13499.64 13799.66 6299.72 10299.67 14293.26 28799.93 6699.30 7199.81 16099.87 10
MVS_Test99.28 11799.31 9699.19 22999.35 25298.79 23099.36 9899.49 20899.17 14599.21 23099.67 14298.78 10099.66 31899.09 10199.66 21599.10 262
SteuartSystems-ACMMP99.30 11499.14 12499.76 4299.87 3299.66 7099.18 15299.60 16198.55 20799.57 14899.67 14299.03 7199.94 5597.01 23999.80 16599.69 56
Skip Steuart: Steuart Systems R&D Blog.
pmmvs-eth3d99.48 7099.47 6999.51 15599.77 9899.41 13098.81 22699.66 12399.42 10899.75 9099.66 14699.20 4899.76 27698.98 11099.99 2099.36 218
EI-MVSNet-UG-set99.48 7099.50 6799.42 17899.57 18298.65 23799.24 14099.46 21699.68 5699.80 7499.66 14698.99 7299.89 12499.19 8399.90 10099.72 46
YYNet198.95 18998.99 16798.84 26099.64 15897.14 29798.22 28099.32 25098.92 17099.59 14599.66 14697.40 22299.83 22698.27 16399.90 10099.55 146
MDA-MVSNet_test_wron98.95 18998.99 16798.85 25899.64 15897.16 29698.23 27999.33 24898.93 16899.56 15599.66 14697.39 22499.83 22698.29 16199.88 11299.55 146
MVSTER98.47 23498.22 23999.24 22399.06 30398.35 25199.08 18499.46 21699.27 12399.75 9099.66 14688.61 32399.85 19499.14 9899.92 8899.52 164
EI-MVSNet-Vis-set99.47 7699.49 6899.42 17899.57 18298.66 23599.24 14099.46 21699.67 5899.79 7999.65 15198.97 7599.89 12499.15 9299.89 10699.71 49
APD-MVS_3200maxsize99.31 11399.16 12199.74 5599.53 19999.75 4399.27 13399.61 14799.19 13999.57 14899.64 15298.76 10499.90 10997.29 22399.62 22099.56 143
ADS-MVSNet297.78 26897.66 27498.12 29599.14 29195.36 32599.22 14698.75 29696.97 29298.25 30899.64 15290.90 30799.94 5596.51 26499.56 22899.08 268
ADS-MVSNet97.72 27097.67 27397.86 30599.14 29194.65 33099.22 14698.86 29096.97 29298.25 30899.64 15290.90 30799.84 21096.51 26499.56 22899.08 268
CP-MVSNet99.54 5999.43 7899.87 1699.76 10399.82 2799.57 6899.61 14799.54 8599.80 7499.64 15297.79 20099.95 4199.21 7999.94 7799.84 15
FMVSNet398.80 20898.63 20699.32 20699.13 29398.72 23199.10 17999.48 20999.23 13499.62 13799.64 15292.57 29399.86 17898.96 11599.90 10099.39 208
IterMVS-LS99.41 8799.47 6999.25 22199.81 6198.09 27198.85 21999.76 7999.62 7199.83 6499.64 15298.54 13999.97 1699.15 9299.99 2099.68 62
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
DeepC-MVS_fast98.47 599.23 12899.12 13099.56 14299.28 27599.22 17998.99 19999.40 23399.08 15799.58 14699.64 15298.90 8399.83 22697.44 21599.75 18299.63 99
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
OPM-MVS99.26 12399.13 12799.63 10799.70 14099.61 8698.58 24499.48 20998.50 21199.52 16699.63 15999.14 5499.76 27697.89 18799.77 17799.51 167
MPTG99.30 11499.14 12499.80 2999.81 6199.81 2898.73 23699.53 18999.27 12399.42 18299.63 15998.21 17299.95 4197.83 19199.79 16899.65 89
MTAPA99.35 10299.20 12099.80 2999.81 6199.81 2899.33 10899.53 18999.27 12399.42 18299.63 15998.21 17299.95 4197.83 19199.79 16899.65 89
abl_699.36 10099.23 11799.75 5199.71 13399.74 4899.33 10899.76 7999.07 15899.65 12599.63 15999.09 6199.92 8397.13 23599.76 17999.58 138
APD-MVScopyleft98.87 20098.59 20899.71 7199.50 21099.62 8299.01 19499.57 17496.80 29799.54 16199.63 15998.29 16599.91 9295.24 31299.71 20199.61 117
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
MG-MVS98.52 22998.39 22698.94 24999.15 29097.39 29398.18 28299.21 27398.89 17299.23 22699.63 15997.37 22699.74 28694.22 32599.61 22499.69 56
FPMVS96.32 31195.50 31898.79 26599.60 16798.17 26598.46 26398.80 29497.16 28796.28 34499.63 15982.19 34999.09 34888.45 34398.89 29499.10 262
pmmvs599.19 14499.11 13299.42 17899.76 10398.88 22298.55 24999.73 9298.82 18099.72 10299.62 16696.56 25099.82 23399.32 6899.95 6599.56 143
patchmatchnet-post99.62 16690.58 31299.94 55
v2v48299.50 6699.47 6999.58 13099.78 8899.25 17299.14 17199.58 17399.25 13099.81 7199.62 16698.24 16999.84 21099.83 2099.97 4799.64 95
test20.0399.55 5499.54 5399.58 13099.79 8299.37 14399.02 19299.89 1599.60 8099.82 6599.62 16698.81 9099.89 12499.43 5399.86 12699.47 184
TSAR-MVS + GP.99.12 15799.04 15799.38 19199.34 26299.16 18998.15 28599.29 25898.18 24199.63 13099.62 16699.18 5099.68 30898.20 16799.74 18999.30 229
EPNet98.13 25897.77 26999.18 23294.57 35497.99 27599.24 14097.96 31999.74 4097.29 33999.62 16693.13 28899.97 1698.59 14299.83 14399.58 138
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
OMC-MVS98.90 19698.72 19999.44 17399.39 24499.42 12698.58 24499.64 13797.31 28499.44 17699.62 16698.59 13199.69 30096.17 27599.79 16899.22 236
v14899.40 9099.41 8099.39 18999.76 10398.94 21299.09 18399.59 16599.17 14599.81 7199.61 17398.41 15599.69 30099.32 6899.94 7799.53 156
DELS-MVS99.34 10799.30 10199.48 16299.51 20599.36 14698.12 28999.53 18999.36 11599.41 18899.61 17399.22 4799.87 15899.21 7999.68 20699.20 240
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
MDTV_nov1_ep1397.73 27098.70 33390.83 34999.15 16698.02 31798.51 21098.82 27299.61 17390.98 30599.66 31896.89 24598.92 291
Regformer-399.41 8799.41 8099.40 18699.52 20198.70 23299.17 15899.44 22199.62 7199.75 9099.60 17698.90 8399.85 19498.89 12399.84 13399.65 89
Regformer-499.45 7999.44 7599.50 15799.52 20198.94 21299.17 15899.53 18999.64 6799.76 8999.60 17698.96 7899.90 10998.91 12299.84 13399.67 69
PGM-MVS99.20 14199.01 16299.77 3999.75 11199.71 5199.16 16499.72 10197.99 24899.42 18299.60 17698.81 9099.93 6696.91 24399.74 18999.66 79
HyFIR lowres test98.91 19498.64 20599.73 6299.85 3999.47 10598.07 29799.83 4098.64 20099.89 3899.60 17692.57 293100.00 199.33 6599.97 4799.72 46
CSCG99.37 9799.29 10699.60 12499.71 13399.46 10999.43 8299.85 2998.79 18499.41 18899.60 17698.92 8099.92 8398.02 18099.92 8899.43 201
ACMP97.51 1499.05 16898.84 18899.67 8499.78 8899.55 9598.88 21399.66 12397.11 29199.47 17399.60 17699.07 6699.89 12496.18 27499.85 12999.58 138
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
dp96.86 29697.07 28096.24 33498.68 33490.30 35399.19 15198.38 31397.35 28398.23 31099.59 18287.23 32899.82 23396.27 27298.73 30898.59 298
EPMVS96.53 30696.32 30497.17 32298.18 34492.97 33799.39 8689.95 35598.21 23998.61 29099.59 18286.69 33699.72 28996.99 24099.23 28098.81 291
MP-MVS-pluss99.14 15498.92 17799.80 2999.83 4699.83 2298.61 24099.63 14096.84 29599.44 17699.58 18498.81 9099.91 9297.70 19899.82 15299.67 69
MP-MVS-pluss: MP-MVS-pluss. MP-MVS-pluss
MS-PatchMatch99.00 18098.97 17199.09 23699.11 29898.19 26398.76 23299.33 24898.49 21299.44 17699.58 18498.21 17299.69 30098.20 16799.62 22099.39 208
LFMVS98.46 23598.19 24499.26 21899.24 28098.52 24199.62 5696.94 33699.87 1399.31 21499.58 18491.04 30499.81 25298.68 14099.42 25699.45 190
VPNet99.46 7799.37 8799.71 7199.82 5399.59 8799.48 7899.70 10799.81 2899.69 11099.58 18497.66 21399.86 17899.17 8899.44 24999.67 69
diffmvs98.94 19298.87 18399.13 23399.37 24998.90 21999.25 13899.64 13797.55 27499.04 24999.58 18497.23 23299.64 32798.73 13599.44 24998.86 287
PMMVS299.48 7099.45 7399.57 13699.76 10398.99 20698.09 29399.90 1498.95 16599.78 8299.58 18499.57 2099.93 6699.48 4999.95 6599.79 30
PatchmatchNetpermissive97.65 27197.80 26697.18 32198.82 32392.49 33899.17 15898.39 31298.12 24298.79 27699.58 18490.71 31199.89 12497.23 22899.41 25899.16 248
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
test_part398.74 23397.71 26499.57 19199.90 10994.47 321
ESAPD98.87 20098.58 21099.74 5599.62 16499.67 6798.74 23399.53 18997.71 26499.55 15899.57 19198.40 15799.90 10994.47 32199.68 20699.66 79
Patchmatch-test98.10 26097.98 25598.48 28299.27 27796.48 30499.40 8599.07 28298.81 18199.23 22699.57 19190.11 31799.87 15896.69 25599.64 21899.09 265
VNet99.18 14699.06 14899.56 14299.24 28099.36 14699.33 10899.31 25499.67 5899.47 17399.57 19196.48 25399.84 21099.15 9299.30 27099.47 184
PNet_i23d97.02 29197.87 26494.49 33799.69 14284.81 35695.18 34999.85 2997.83 26099.32 21299.57 19195.53 27199.47 34296.09 27697.74 34199.18 245
MSLP-MVS++99.05 16899.09 14198.91 25299.21 28398.36 25098.82 22599.47 21398.85 17698.90 26799.56 19698.78 10099.09 34898.57 14399.68 20699.26 233
TranMVSNet+NR-MVSNet99.54 5999.47 6999.76 4299.58 17399.64 7699.30 12199.63 14099.61 7599.71 10699.56 19698.76 10499.96 3399.14 9899.92 8899.68 62
114514_t98.49 23298.11 24799.64 10399.73 12099.58 8999.24 14099.76 7989.94 34599.42 18299.56 19697.76 20299.86 17897.74 19699.82 15299.47 184
Vis-MVSNet (Re-imp)98.77 21198.58 21099.34 20099.78 8898.88 22299.61 6099.56 17799.11 15299.24 22599.56 19693.00 29199.78 26897.43 21699.89 10699.35 220
test_040299.22 13699.14 12499.45 17199.79 8299.43 12299.28 13099.68 11699.54 8599.40 19299.56 19699.07 6699.82 23396.01 28299.96 5999.11 258
tpmvs97.39 27697.69 27196.52 33098.41 33991.76 34399.30 12198.94 28997.74 26297.85 32899.55 20192.40 29699.73 28896.25 27398.73 30898.06 322
MSDG99.08 16398.98 17099.37 19599.60 16799.13 19297.54 32599.74 8998.84 17999.53 16499.55 20199.10 5999.79 26097.07 23799.86 12699.18 245
tpmrst97.73 26998.07 24996.73 32698.71 33292.00 34099.10 17998.86 29098.52 20998.92 26499.54 20391.90 29799.82 23398.02 18099.03 28898.37 308
new_pmnet98.88 19998.89 18198.84 26099.70 14097.62 28898.15 28599.50 20497.98 24999.62 13799.54 20398.15 17799.94 5597.55 20999.84 13398.95 280
Anonymous2023120699.35 10299.31 9699.47 16499.74 11799.06 20499.28 13099.74 8999.23 13499.72 10299.53 20597.63 21599.88 13999.11 10099.84 13399.48 180
ITE_SJBPF99.38 19199.63 16099.44 11699.73 9298.56 20699.33 21099.53 20598.88 8699.68 30896.01 28299.65 21799.02 277
CHOSEN 280x42098.41 24098.41 22498.40 28599.34 26295.89 31696.94 33899.44 22198.80 18399.25 22299.52 20793.51 28599.98 798.94 12099.98 3699.32 227
Patchmatch-test198.13 25898.40 22597.31 32099.20 28692.99 33698.17 28498.49 30898.24 23899.10 24399.52 20796.01 26599.83 22697.22 22999.62 22099.12 257
Regformer-199.32 11299.27 11099.47 16499.41 24098.95 21198.99 19999.48 20999.48 9299.66 11999.52 20798.78 10099.87 15898.36 15499.74 18999.60 123
Regformer-299.34 10799.27 11099.53 15099.41 24099.10 19798.99 19999.53 18999.47 9699.66 11999.52 20798.80 9499.89 12498.31 15999.74 18999.60 123
CANet_DTU98.91 19498.85 18699.09 23698.79 32598.13 26698.18 28299.31 25499.48 9298.86 27099.51 21196.56 25099.95 4199.05 10499.95 6599.19 242
pmmvs398.08 26197.80 26698.91 25299.41 24097.69 28697.87 31799.66 12395.87 31399.50 17099.51 21190.35 31599.97 1698.55 14599.47 24699.08 268
HY-MVS98.23 998.21 25697.95 25798.99 24699.03 30698.24 25999.61 6098.72 29896.81 29698.73 28199.51 21194.06 28199.86 17896.91 24398.20 33098.86 287
mPP-MVS99.19 14499.00 16499.76 4299.76 10399.68 6599.38 9299.54 18498.34 23299.01 25199.50 21498.53 14399.93 6697.18 23399.78 17399.66 79
HPM-MVS_fast99.43 8199.30 10199.80 2999.83 4699.81 2899.52 7299.70 10798.35 22899.51 16899.50 21499.31 3599.88 13998.18 17199.84 13399.69 56
MP-MVScopyleft99.06 16598.83 19199.76 4299.76 10399.71 5199.32 11199.50 20498.35 22898.97 25499.48 21698.37 16099.92 8395.95 28899.75 18299.63 99
test123567898.93 19398.84 18899.19 22999.46 23098.55 23997.53 32799.77 7398.76 19099.69 11099.48 21696.69 24799.90 10998.30 16099.91 9899.11 258
MVS_111021_LR99.13 15599.03 15899.42 17899.58 17399.32 15597.91 31699.73 9298.68 19799.31 21499.48 21699.09 6199.66 31897.70 19899.77 17799.29 232
XVS99.27 12299.11 13299.75 5199.71 13399.71 5199.37 9699.61 14799.29 12098.76 27999.47 21998.47 14999.88 13997.62 20599.73 19599.67 69
EPNet_dtu97.62 27297.79 26897.11 32396.67 35392.31 33998.51 25598.04 31699.24 13295.77 34899.47 21993.78 28399.66 31898.98 11099.62 22099.37 215
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
MVS_111021_HR99.12 15799.02 15999.40 18699.50 21099.11 19497.92 31499.71 10498.76 19099.08 24499.47 21999.17 5199.54 33897.85 19099.76 17999.54 153
tpm cat196.78 30196.98 28496.16 33598.85 31990.59 35299.08 18499.32 25092.37 34097.73 33599.46 22291.15 30399.69 30096.07 27898.80 29998.21 317
PHI-MVS99.11 16098.95 17399.59 12699.13 29399.59 8799.17 15899.65 13297.88 25499.25 22299.46 22298.97 7599.80 25797.26 22699.82 15299.37 215
pmmvs499.13 15599.06 14899.36 19899.57 18299.10 19798.01 30199.25 26798.78 18699.58 14699.44 22498.24 16999.76 27698.74 13499.93 8599.22 236
111197.29 27996.71 29899.04 24399.65 15697.72 28398.35 27099.80 6099.40 10999.66 11999.43 22575.10 35899.87 15898.98 11099.98 3699.52 164
.test124585.84 32789.27 32875.54 34099.65 15697.72 28398.35 27099.80 6099.40 10999.66 11999.43 22575.10 35899.87 15898.98 11033.07 35229.03 353
XVG-OURS-SEG-HR99.16 15198.99 16799.66 9299.84 4299.64 7698.25 27899.73 9298.39 22099.63 13099.43 22599.70 1299.90 10997.34 22098.64 31199.44 195
CNVR-MVS98.99 18298.80 19599.56 14299.25 27899.43 12298.54 25299.27 26298.58 20598.80 27599.43 22598.53 14399.70 29497.22 22999.59 22699.54 153
LF4IMVS99.01 17798.92 17799.27 21399.71 13399.28 16298.59 24399.77 7398.32 23499.39 19399.41 22998.62 12799.84 21096.62 26099.84 13398.69 295
testdata99.42 17899.51 20598.93 21699.30 25796.20 30898.87 26999.40 23098.33 16499.89 12496.29 27199.28 27299.44 195
Test_1112_low_res98.95 18998.73 19899.63 10799.68 14999.15 19198.09 29399.80 6097.14 28899.46 17599.40 23096.11 26399.89 12499.01 10799.84 13399.84 15
PCF-MVS96.03 1896.73 30295.86 31399.33 20299.44 23499.16 18996.87 33999.44 22186.58 34798.95 26099.40 23094.38 27999.88 13987.93 34499.80 16598.95 280
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
旧先验199.49 21599.29 16099.26 26499.39 23397.67 20999.36 26499.46 188
ACMMPR99.23 12899.06 14899.76 4299.74 11799.69 6299.31 11899.59 16598.36 22399.35 20499.38 23498.61 12999.93 6697.43 21699.75 18299.67 69
HFP-MVS99.25 12499.08 14299.76 4299.73 12099.70 5899.31 11899.59 16598.36 22399.36 20299.37 23598.80 9499.91 9297.43 21699.75 18299.68 62
#test#99.12 15798.90 18099.76 4299.73 12099.70 5899.10 17999.59 16597.60 27099.36 20299.37 23598.80 9499.91 9296.84 24799.75 18299.68 62
test1235698.43 23798.39 22698.55 27799.46 23096.36 30697.32 33499.81 5697.60 27099.62 13799.37 23594.57 27799.89 12497.80 19399.92 8899.40 206
CPTT-MVS98.74 21398.44 21999.64 10399.61 16699.38 14099.18 15299.55 18096.49 30599.27 21999.37 23597.11 23999.92 8395.74 29599.67 21299.62 112
DP-MVS Recon98.50 23098.23 23899.31 20899.49 21599.46 10998.56 24899.63 14094.86 33098.85 27199.37 23597.81 19899.59 33596.08 27799.44 24998.88 285
region2R99.23 12899.05 15299.77 3999.76 10399.70 5899.31 11899.59 16598.41 21899.32 21299.36 24098.73 11099.93 6697.29 22399.74 18999.67 69
DU-MVS99.33 11099.21 11999.71 7199.43 23699.56 9298.83 22299.53 18999.38 11299.67 11599.36 24097.67 20999.95 4199.17 8899.81 16099.63 99
UniMVSNet (Re)99.37 9799.26 11299.68 8199.51 20599.58 8998.98 20399.60 16199.43 10699.70 10899.36 24097.70 20499.88 13999.20 8299.87 11999.59 134
NR-MVSNet99.40 9099.31 9699.68 8199.43 23699.55 9599.73 2199.50 20499.46 9999.88 4699.36 24097.54 21699.87 15898.97 11499.87 11999.63 99
UnsupCasMVSNet_eth98.83 20398.57 21299.59 12699.68 14999.45 11498.99 19999.67 11999.48 9299.55 15899.36 24094.92 27399.86 17898.95 11996.57 34699.45 190
UnsupCasMVSNet_bld98.55 22798.27 23699.40 18699.56 19399.37 14397.97 30999.68 11697.49 27799.08 24499.35 24595.41 27299.82 23397.70 19898.19 33299.01 278
sss98.90 19698.77 19699.27 21399.48 22198.44 24398.72 23799.32 25097.94 25299.37 20199.35 24596.31 25899.91 9298.85 12599.63 21999.47 184
CostFormer96.71 30396.79 29196.46 33198.90 31090.71 35099.41 8398.68 30094.69 33398.14 31699.34 24786.32 34399.80 25797.60 20798.07 33598.88 285
原ACMM199.37 19599.47 22698.87 22499.27 26296.74 29898.26 30799.32 24897.93 19099.82 23395.96 28799.38 26199.43 201
tpm97.15 28896.95 28597.75 30998.91 30994.24 33299.32 11197.96 31997.71 26498.29 30599.32 24886.72 33599.92 8398.10 17896.24 34899.09 265
test22299.51 20599.08 20097.83 31999.29 25895.21 32598.68 28699.31 25097.28 22999.38 26199.43 201
tpmp4_e2396.11 31596.06 30896.27 33298.90 31090.70 35199.34 10699.03 28693.72 33796.56 34399.31 25083.63 34799.75 28296.06 27998.02 33798.35 309
BH-RMVSNet98.41 24098.14 24699.21 22699.21 28398.47 24298.60 24298.26 31598.35 22898.93 26299.31 25097.20 23699.66 31894.32 32399.10 28499.51 167
MVS_030499.17 14999.10 13999.38 19199.08 30198.86 22598.46 26399.73 9299.53 8799.35 20499.30 25397.11 23999.96 3399.33 6599.99 2099.33 223
MVSFormer99.41 8799.44 7599.31 20899.57 18298.40 24699.77 1399.80 6099.73 4299.63 13099.30 25398.02 18499.98 799.43 5399.69 20499.55 146
jason99.16 15199.11 13299.32 20699.75 11198.44 24398.26 27799.39 23698.70 19699.74 9899.30 25398.54 13999.97 1698.48 14899.82 15299.55 146
jason: jason.
112198.56 22598.24 23799.52 15299.49 21599.24 17599.30 12199.22 27295.77 31698.52 29699.29 25697.39 22499.85 19495.79 29399.34 26599.46 188
新几何199.52 15299.50 21099.22 17999.26 26495.66 32098.60 29199.28 25797.67 20999.89 12495.95 28899.32 26899.45 190
UniMVSNet_NR-MVSNet99.37 9799.25 11499.72 6799.47 22699.56 9298.97 20499.61 14799.43 10699.67 11599.28 25797.85 19699.95 4199.17 8899.81 16099.65 89
CP-MVS99.23 12899.05 15299.75 5199.66 15499.66 7099.38 9299.62 14398.38 22199.06 24899.27 25998.79 9799.94 5597.51 21299.82 15299.66 79
AdaColmapbinary98.60 22198.35 23199.38 19199.12 29599.22 17998.67 23999.42 22697.84 25998.81 27399.27 25997.32 22899.81 25295.14 31399.53 23999.10 262
NCCC98.82 20598.57 21299.58 13099.21 28399.31 15698.61 24099.25 26798.65 19998.43 30299.26 26197.86 19599.81 25296.55 26299.27 27599.61 117
TAPA-MVS97.92 1398.03 26397.55 27599.46 16799.47 22699.44 11698.50 25699.62 14386.79 34699.07 24799.26 26198.26 16899.62 33097.28 22599.73 19599.31 228
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
MCST-MVS99.02 17398.81 19399.65 9699.58 17399.49 10198.58 24499.07 28298.40 21999.04 24999.25 26398.51 14799.80 25797.31 22299.51 24199.65 89
HQP_MVS98.90 19698.68 20299.55 14599.58 17399.24 17598.80 22799.54 18498.94 16699.14 23999.25 26397.24 23099.82 23395.84 29199.78 17399.60 123
plane_prior499.25 263
HPM-MVS99.25 12499.07 14699.78 3799.81 6199.75 4399.61 6099.67 11997.72 26399.35 20499.25 26399.23 4699.92 8397.21 23199.82 15299.67 69
PatchMatch-RL98.68 21798.47 21799.30 21099.44 23499.28 16298.14 28799.54 18497.12 29099.11 24299.25 26397.80 19999.70 29496.51 26499.30 27098.93 282
Effi-MVS+-dtu99.07 16498.92 17799.52 15298.89 31499.78 3599.15 16699.66 12399.34 11698.92 26499.24 26897.69 20699.98 798.11 17699.28 27298.81 291
test_normal98.82 20598.67 20399.27 21399.56 19398.83 22798.22 28098.01 31899.03 16099.49 17299.24 26896.21 26099.76 27698.69 13899.56 22899.22 236
WTY-MVS98.59 22398.37 22999.26 21899.43 23698.40 24698.74 23399.13 28198.10 24399.21 23099.24 26894.82 27599.90 10997.86 18998.77 30299.49 179
DI_MVS_plusplus_test98.80 20898.65 20499.27 21399.57 18298.90 21998.44 26597.95 32199.02 16199.51 16899.23 27196.18 26299.76 27698.52 14799.42 25699.14 253
CANet99.11 16099.05 15299.28 21198.83 32098.56 23898.71 23899.41 22799.25 13099.23 22699.22 27297.66 21399.94 5599.19 8399.97 4799.33 223
tpm296.35 31096.22 30596.73 32698.88 31791.75 34499.21 14998.51 30693.27 33997.89 32599.21 27384.83 34699.70 29496.04 28098.18 33398.75 294
WR-MVS99.11 16098.93 17499.66 9299.30 27299.42 12698.42 26799.37 24299.04 15999.57 14899.20 27496.89 24599.86 17898.66 14199.87 11999.70 53
F-COLMAP98.74 21398.45 21899.62 11599.57 18299.47 10598.84 22099.65 13296.31 30798.93 26299.19 27597.68 20899.87 15896.52 26399.37 26399.53 156
1112_ss99.05 16898.84 18899.67 8499.66 15499.29 16098.52 25499.82 4897.65 26899.43 18099.16 27696.42 25699.91 9299.07 10399.84 13399.80 25
ab-mvs-re8.26 33811.02 3390.00 3440.00 3580.00 3590.00 3500.00 3600.00 3540.00 35599.16 2760.00 3620.00 3570.00 3540.00 3550.00 355
cdsmvs_eth3d_5k24.88 33133.17 3310.00 3440.00 3580.00 3590.00 35099.62 1430.00 3540.00 35599.13 27899.82 60.00 3570.00 3540.00 3550.00 355
lupinMVS98.96 18698.87 18399.24 22399.57 18298.40 24698.12 28999.18 27598.28 23699.63 13099.13 27898.02 18499.97 1698.22 16599.69 20499.35 220
PVSNet97.47 1598.42 23998.44 21998.35 28799.46 23096.26 30796.70 34299.34 24797.68 26799.00 25299.13 27897.40 22299.72 28997.59 20899.68 20699.08 268
CLD-MVS98.76 21298.57 21299.33 20299.57 18298.97 20997.53 32799.55 18096.41 30699.27 21999.13 27899.07 6699.78 26896.73 25499.89 10699.23 235
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
131498.00 26497.90 26298.27 29298.90 31097.45 29299.30 12199.06 28494.98 32797.21 34099.12 28298.43 15399.67 31395.58 30498.56 32097.71 335
E-PMN97.14 29097.43 27696.27 33298.79 32591.62 34595.54 34699.01 28799.44 10198.88 26899.12 28292.78 29299.68 30894.30 32499.03 28897.50 337
CDPH-MVS98.56 22598.20 24199.61 11899.50 21099.46 10998.32 27499.41 22795.22 32499.21 23099.10 28498.34 16299.82 23395.09 31599.66 21599.56 143
conf0.0197.19 28696.74 29298.51 27899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31397.30 341
conf0.00297.19 28696.74 29298.51 27899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31397.30 341
thresconf0.0297.25 28196.74 29298.75 26899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31398.02 324
tfpn_n40097.25 28196.74 29298.75 26899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31398.02 324
tfpnconf97.25 28196.74 29298.75 26899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31398.02 324
tfpnview1197.25 28196.74 29298.75 26899.73 12098.35 25199.35 9995.78 34296.54 29999.39 19399.08 28586.57 33799.88 13995.69 29698.57 31398.02 324
MVS95.72 32394.63 32698.99 24698.56 33697.98 28099.30 12198.86 29072.71 35197.30 33899.08 28598.34 16299.74 28689.21 34198.33 32799.26 233
tfpn100097.28 28096.83 28998.64 27599.67 15397.68 28799.41 8395.47 34997.14 28899.43 18099.07 29285.87 34499.88 13996.78 25098.67 31098.34 310
HPM-MVS++98.96 18698.70 20099.74 5599.52 20199.71 5198.86 21699.19 27498.47 21498.59 29299.06 29398.08 18099.91 9296.94 24299.60 22599.60 123
Fast-Effi-MVS+-dtu99.20 14199.12 13099.43 17699.25 27899.69 6299.05 18799.82 4899.50 9098.97 25499.05 29498.98 7399.98 798.20 16799.24 27898.62 296
test_prior398.62 21998.34 23299.46 16799.35 25299.22 17997.95 31099.39 23697.87 25598.05 31899.05 29497.90 19199.69 30095.99 28499.49 24499.48 180
test_prior297.95 31097.87 25598.05 31899.05 29497.90 19195.99 28499.49 244
testgi99.29 11699.26 11299.37 19599.75 11198.81 22898.84 22099.89 1598.38 22199.75 9099.04 29799.36 3399.86 17899.08 10299.25 27699.45 190
HSP-MVS99.01 17798.76 19799.76 4299.78 8899.73 4999.35 9999.31 25498.54 20899.54 16198.99 29896.81 24699.93 6696.97 24199.53 23999.61 117
TEST999.35 25299.35 15098.11 29199.41 22794.83 33297.92 32398.99 29898.02 18499.85 194
train_agg98.35 24797.95 25799.57 13699.35 25299.35 15098.11 29199.41 22794.90 32897.92 32398.99 29898.02 18499.85 19495.38 31099.44 24999.50 173
agg_prior198.33 25097.92 25999.57 13699.35 25299.36 14697.99 30599.39 23694.85 33197.76 33398.98 30198.03 18299.85 19495.49 30599.44 24999.51 167
PVSNet_Blended98.70 21698.59 20899.02 24599.54 19697.99 27597.58 32499.82 4895.70 31899.34 20898.98 30198.52 14599.77 27497.98 18399.83 14399.30 229
CNLPA98.57 22498.34 23299.28 21199.18 28999.10 19798.34 27299.41 22798.48 21398.52 29698.98 30197.05 24199.78 26895.59 30399.50 24298.96 279
test_899.34 26299.31 15698.08 29699.40 23394.90 32897.87 32798.97 30498.02 18499.84 210
GA-MVS97.99 26597.68 27298.93 25199.52 20198.04 27497.19 33699.05 28598.32 23498.81 27398.97 30489.89 32099.41 34698.33 15799.05 28699.34 222
agg_prior398.24 25297.81 26599.53 15099.34 26299.26 16898.09 29399.39 23694.21 33697.77 33298.96 30697.74 20399.84 21095.38 31099.44 24999.50 173
PLCcopyleft97.35 1698.36 24497.99 25399.48 16299.32 26799.24 17598.50 25699.51 20195.19 32698.58 29398.96 30696.95 24499.83 22695.63 30299.25 27699.37 215
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
Test498.65 21898.44 21999.27 21399.57 18298.86 22598.43 26699.41 22798.85 17699.57 14898.95 30893.05 28999.75 28298.57 14399.56 22899.19 242
xiu_mvs_v1_base_debu99.23 12899.34 9298.91 25299.59 17098.23 26098.47 25999.66 12399.61 7599.68 11298.94 30999.39 2499.97 1699.18 8599.55 23498.51 303
mvs-test198.83 20398.70 20099.22 22598.89 31499.65 7498.88 21399.66 12399.34 11698.29 30598.94 30997.69 20699.96 3398.11 17698.54 32198.04 323
Effi-MVS+99.06 16598.97 17199.34 20099.31 26898.98 20798.31 27599.91 1198.81 18198.79 27698.94 30999.14 5499.84 21098.79 12998.74 30699.20 240
xiu_mvs_v1_base99.23 12899.34 9298.91 25299.59 17098.23 26098.47 25999.66 12399.61 7599.68 11298.94 30999.39 2499.97 1699.18 8599.55 23498.51 303
xiu_mvs_v1_base_debi99.23 12899.34 9298.91 25299.59 17098.23 26098.47 25999.66 12399.61 7599.68 11298.94 30999.39 2499.97 1699.18 8599.55 23498.51 303
EMVS96.96 29397.28 27795.99 33698.76 32991.03 34895.26 34898.61 30299.34 11698.92 26498.88 31493.79 28299.66 31892.87 33099.05 28697.30 341
NP-MVS99.40 24399.13 19298.83 315
HQP-MVS98.36 24498.02 25299.39 18999.31 26898.94 21297.98 30699.37 24297.45 27898.15 31298.83 31596.67 24899.70 29494.73 31799.67 21299.53 156
MAR-MVS98.24 25297.92 25999.19 22998.78 32799.65 7499.17 15899.14 27995.36 32298.04 32098.81 31797.47 21999.72 28995.47 30799.06 28598.21 317
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
tfpn_ndepth96.93 29596.43 30398.42 28399.60 16797.72 28399.22 14695.16 35095.91 31299.26 22198.79 31885.56 34599.87 15896.03 28198.35 32697.68 336
API-MVS98.38 24398.39 22698.35 28798.83 32099.26 16899.14 17199.18 27598.59 20498.66 28798.78 31998.61 12999.57 33794.14 32699.56 22896.21 347
testpf94.48 32695.31 32091.99 33997.22 35189.64 35498.86 21696.52 33794.36 33596.09 34798.76 32082.21 34898.73 35097.05 23896.74 34587.60 350
BH-untuned98.22 25598.09 24898.58 27699.38 24797.24 29598.55 24998.98 28897.81 26199.20 23598.76 32097.01 24299.65 32594.83 31698.33 32798.86 287
Fast-Effi-MVS+99.02 17398.87 18399.46 16799.38 24799.50 9999.04 18999.79 6897.17 28698.62 28998.74 32299.34 3499.95 4198.32 15899.41 25898.92 283
MVEpermissive92.54 2296.66 30496.11 30798.31 29099.68 14997.55 29097.94 31295.60 34899.37 11390.68 35298.70 32396.56 25098.61 35286.94 35099.55 23498.77 293
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
PAPM95.61 32494.71 32598.31 29099.12 29596.63 30296.66 34398.46 30990.77 34496.25 34598.68 32493.01 29099.69 30081.60 35197.86 34098.62 296
test-LLR97.15 28896.95 28597.74 31098.18 34495.02 32897.38 33096.10 33898.00 24697.81 32998.58 32590.04 31899.91 9297.69 20398.78 30098.31 311
test-mter96.23 31495.73 31697.74 31098.18 34495.02 32897.38 33096.10 33897.90 25397.81 32998.58 32579.12 35699.91 9297.69 20398.78 30098.31 311
PAPM_NR98.36 24498.04 25199.33 20299.48 22198.93 21698.79 23099.28 26197.54 27598.56 29598.57 32797.12 23899.69 30094.09 32798.90 29399.38 211
TESTMET0.1,196.24 31395.84 31497.41 31798.24 34293.84 33397.38 33095.84 34198.43 21597.81 32998.56 32879.77 35599.89 12497.77 19498.77 30298.52 302
xiu_mvs_v2_base99.02 17399.11 13298.77 26699.37 24998.09 27198.13 28899.51 20199.47 9699.42 18298.54 32999.38 2899.97 1698.83 12699.33 26798.24 315
TR-MVS97.44 27597.15 27998.32 28998.53 33797.46 29198.47 25997.91 32296.85 29498.21 31198.51 33096.42 25699.51 34092.16 33297.29 34397.98 328
PS-MVSNAJ99.00 18099.08 14298.76 26799.37 24998.10 27098.00 30399.51 20199.47 9699.41 18898.50 33199.28 3999.97 1698.83 12699.34 26598.20 319
testus98.15 25798.06 25098.40 28599.11 29895.95 31296.77 34099.89 1595.83 31499.23 22698.47 33297.50 21899.84 21096.58 26199.20 28199.39 208
gm-plane-assit97.59 34889.02 35593.47 33898.30 33399.84 21096.38 268
DeepMVS_CXcopyleft97.98 29799.69 14296.95 29999.26 26475.51 35095.74 34998.28 33496.47 25499.62 33091.23 33597.89 33997.38 339
PAPR97.56 27497.07 28099.04 24398.80 32498.11 26997.63 32299.25 26794.56 33498.02 32198.25 33597.43 22199.68 30890.90 33698.74 30699.33 223
PMMVS98.49 23298.29 23599.11 23498.96 30798.42 24597.54 32599.32 25097.53 27698.47 30198.15 33697.88 19499.82 23397.46 21499.24 27899.09 265
test0.0.03 197.37 27796.91 28798.74 27297.72 34797.57 28997.60 32397.36 33598.00 24699.21 23098.02 33790.04 31899.79 26098.37 15395.89 34998.86 287
BH-w/o97.20 28597.01 28397.76 30899.08 30195.69 32198.03 30098.52 30595.76 31797.96 32298.02 33795.62 26999.47 34292.82 33197.25 34498.12 321
alignmvs98.28 25197.96 25699.25 22199.12 29598.93 21699.03 19198.42 31199.64 6798.72 28297.85 33990.86 30999.62 33098.88 12499.13 28299.19 242
test235695.99 31995.26 32298.18 29396.93 35295.53 32495.31 34798.71 29995.67 31998.48 30097.83 34080.72 35299.88 13995.47 30798.21 32999.11 258
view60096.86 29696.52 29997.88 30199.69 14295.87 31799.39 8697.68 32599.11 15298.96 25697.82 34187.40 32499.79 26089.78 33798.83 29597.98 328
view80096.86 29696.52 29997.88 30199.69 14295.87 31799.39 8697.68 32599.11 15298.96 25697.82 34187.40 32499.79 26089.78 33798.83 29597.98 328
conf0.05thres100096.86 29696.52 29997.88 30199.69 14295.87 31799.39 8697.68 32599.11 15298.96 25697.82 34187.40 32499.79 26089.78 33798.83 29597.98 328
tfpn96.86 29696.52 29997.88 30199.69 14295.87 31799.39 8697.68 32599.11 15298.96 25697.82 34187.40 32499.79 26089.78 33798.83 29597.98 328
PVSNet_095.53 1995.85 32195.31 32097.47 31598.78 32793.48 33595.72 34599.40 23396.18 30997.37 33797.73 34595.73 26799.58 33695.49 30581.40 35199.36 218
canonicalmvs99.02 17399.00 16499.09 23699.10 30098.70 23299.61 6099.66 12399.63 7098.64 28897.65 34699.04 7099.54 33898.79 12998.92 29199.04 275
DWT-MVSNet_test96.03 31895.80 31596.71 32898.50 33891.93 34199.25 13897.87 32395.99 31196.81 34297.61 34781.02 35199.66 31897.20 23297.98 33898.54 301
cascas96.99 29296.82 29097.48 31497.57 35095.64 32296.43 34499.56 17791.75 34197.13 34197.61 34795.58 27098.63 35196.68 25699.11 28398.18 320
IB-MVS95.41 2095.30 32594.46 32797.84 30698.76 32995.33 32697.33 33396.07 34096.02 31095.37 35097.41 34976.17 35799.96 3397.54 21095.44 35098.22 316
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
thres600view796.60 30596.16 30697.93 29999.63 16096.09 31199.18 15297.57 32998.77 18798.72 28297.32 35087.04 32999.72 28988.57 34298.62 31297.98 328
conf200view1196.43 30796.03 30997.63 31299.63 16095.93 31399.18 15297.57 32998.75 19298.70 28497.31 35187.04 32999.67 31387.62 34598.51 32297.30 341
thres100view90096.39 30996.03 30997.47 31599.63 16095.93 31399.18 15297.57 32998.75 19298.70 28497.31 35187.04 32999.67 31387.62 34598.51 32296.81 345
GG-mvs-BLEND97.36 31897.59 34896.87 30199.70 2988.49 35794.64 35197.26 35380.66 35399.12 34791.50 33496.50 34796.08 349
PatchFormer-LS_test96.95 29497.07 28096.62 32998.76 32991.85 34299.18 15298.45 31097.29 28597.73 33597.22 35488.77 32299.76 27698.13 17598.04 33698.25 314
tfpn200view996.30 31295.89 31197.53 31399.58 17396.11 30999.00 19697.54 33398.43 21598.52 29696.98 35586.85 33299.67 31387.62 34598.51 32296.81 345
thres40096.40 30895.89 31197.92 30099.58 17396.11 30999.00 19697.54 33398.43 21598.52 29696.98 35586.85 33299.67 31387.62 34598.51 32297.98 328
thres20096.09 31695.68 31797.33 31999.48 22196.22 30898.53 25397.57 32998.06 24598.37 30496.73 35786.84 33499.61 33486.99 34998.57 31396.16 348
X-MVStestdata96.09 31694.87 32499.75 5199.71 13399.71 5199.37 9699.61 14799.29 12098.76 27961.30 35898.47 14999.88 13997.62 20599.73 19599.67 69
test_post52.41 35990.25 31699.86 178
test_post199.14 17151.63 36089.54 32199.82 23396.86 246
testmvs28.94 33033.33 33015.79 34326.03 3569.81 35896.77 34015.67 35811.55 35323.87 35450.74 36119.03 3618.53 35623.21 35333.07 35229.03 353
test12329.31 32933.05 33218.08 34225.93 35712.24 35797.53 32710.93 35911.78 35224.21 35350.08 36221.04 3608.60 35523.51 35232.43 35433.39 352
GSMVS99.14 253
test_part299.62 16499.67 6799.55 158
test_part199.53 18998.40 15799.68 20699.66 79
sam_mvs190.81 31099.14 253
sam_mvs90.52 314
MTGPAbinary99.53 189
MTMP98.59 304
test9_res95.10 31499.44 24999.50 173
agg_prior294.58 32099.46 24899.50 173
agg_prior99.35 25299.36 14699.39 23697.76 33399.85 194
test_prior499.19 18798.00 303
test_prior99.46 16799.35 25299.22 17999.39 23699.69 30099.48 180
旧先验297.94 31295.33 32398.94 26199.88 13996.75 252
新几何298.04 299
无先验98.01 30199.23 27195.83 31499.85 19495.79 29399.44 195
原ACMM297.92 314
testdata299.89 12495.99 284
segment_acmp98.37 160
testdata197.72 32197.86 258
test1299.54 14999.29 27399.33 15399.16 27798.43 30297.54 21699.82 23399.47 24699.48 180
plane_prior799.58 17399.38 140
plane_prior699.47 22699.26 16897.24 230
plane_prior599.54 18499.82 23395.84 29199.78 17399.60 123
plane_prior399.31 15698.36 22399.14 239
plane_prior298.80 22798.94 166
plane_prior199.51 205
plane_prior99.24 17598.42 26797.87 25599.71 201
n20.00 360
nn0.00 360
door-mid99.83 40
test1199.29 258
door99.77 73
HQP5-MVS98.94 212
HQP-NCC99.31 26897.98 30697.45 27898.15 312
ACMP_Plane99.31 26897.98 30697.45 27898.15 312
BP-MVS94.73 317
HQP4-MVS98.15 31299.70 29499.53 156
HQP3-MVS99.37 24299.67 212
HQP2-MVS96.67 248
MDTV_nov1_ep13_2view91.44 34799.14 17197.37 28299.21 23091.78 30196.75 25299.03 276
ACMMP++_ref99.94 77
ACMMP++99.79 168
Test By Simon98.41 155