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-MVSNet99.43 199.49 199.24 199.95 198.13 199.37 199.57 199.82 199.86 199.85 199.52 199.73 197.58 199.94 199.85 2
LTVRE_ROB93.87 197.93 298.16 297.26 2998.81 3293.86 4099.07 298.98 897.01 1798.92 598.78 1995.22 4798.61 19696.85 1199.77 999.31 33
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
TDRefinement97.68 397.60 897.93 299.02 1395.95 898.61 398.81 1097.41 1397.28 7198.46 3594.62 7798.84 14994.64 5399.53 3998.99 66
reproduce_model97.35 497.24 1597.70 498.44 6795.08 1295.88 8298.50 2196.62 2498.27 2397.93 6294.57 7999.50 2395.57 3599.35 6798.52 151
UA-Net97.35 497.24 1597.69 598.22 8393.87 3998.42 698.19 6196.95 1895.46 19499.23 993.45 10799.57 1495.34 4599.89 299.63 12
lecture97.32 697.64 696.33 5499.01 1590.77 10796.90 2198.60 1696.30 3397.74 4198.00 5596.87 899.39 5495.95 2499.42 5498.84 98
reproduce-ours97.28 797.19 1797.57 1198.37 7294.84 1395.57 9798.40 3096.36 3198.18 2797.78 7595.47 3299.50 2395.26 4699.33 7398.36 171
our_new_method97.28 797.19 1797.57 1198.37 7294.84 1395.57 9798.40 3096.36 3198.18 2797.78 7595.47 3299.50 2395.26 4699.33 7398.36 171
sc_t197.21 997.71 495.71 7899.06 1088.89 14296.72 3197.79 13998.34 298.97 299.40 596.81 998.79 16092.58 12999.72 1599.45 23
UniMVSNet_ETH3D97.13 1097.72 395.35 9799.51 287.38 18197.70 897.54 16598.16 598.94 399.33 697.84 499.08 11190.73 18999.73 1499.59 15
HPM-MVS_fast97.01 1196.89 2197.39 2499.12 893.92 3697.16 1498.17 6793.11 8996.48 11897.36 12096.92 699.34 7094.31 6199.38 6398.92 87
tt0320-xc97.00 1297.67 594.98 11798.89 2386.94 19596.72 3198.46 2498.28 498.86 799.43 496.80 1098.51 22291.79 15299.76 1099.50 19
tt032096.97 1397.64 694.96 12098.89 2386.86 19796.85 2398.45 2598.29 398.88 699.45 396.48 1398.54 21491.73 15599.72 1599.47 21
SR-MVS-dyc-post96.84 1496.60 3397.56 1398.07 9295.27 996.37 5198.12 7695.66 4297.00 8897.03 16094.85 6999.42 3793.49 8798.84 16498.00 213
mvs_tets96.83 1596.71 2697.17 3098.83 2992.51 7096.58 3897.61 15687.57 26998.80 1098.90 1496.50 1299.59 1396.15 2299.47 4499.40 27
v7n96.82 1697.31 1495.33 9998.54 5586.81 19896.83 2498.07 8696.59 2598.46 2098.43 3792.91 13199.52 1996.25 2199.76 1099.65 11
APD-MVS_3200maxsize96.82 1696.65 2897.32 2897.95 10693.82 4296.31 6198.25 4695.51 4496.99 9097.05 15995.63 2799.39 5493.31 9998.88 15998.75 115
HPM-MVScopyleft96.81 1896.62 3197.36 2698.89 2393.53 5197.51 1098.44 2692.35 10495.95 15796.41 21496.71 1199.42 3793.99 7099.36 6699.13 50
Chunlin Ren, Qingshan Xu, Shikun Zhang, Jiaqi Yang: Hierarchical Prior Mining for Non-local Multi-View Stereo. ICCV 2023
pmmvs696.80 1997.36 1395.15 11299.12 887.82 17596.68 3397.86 12696.10 3698.14 3099.28 897.94 398.21 26291.38 16899.69 1799.42 24
OurMVSNet-221017-096.80 1996.75 2596.96 3899.03 1291.85 8297.98 798.01 10294.15 6498.93 499.07 1088.07 25199.57 1495.86 2799.69 1799.46 22
testf196.77 2196.49 3597.60 999.01 1596.70 396.31 6198.33 3694.96 5097.30 6897.93 6296.05 2097.90 30489.32 24299.23 9598.19 193
APD_test296.77 2196.49 3597.60 999.01 1596.70 396.31 6198.33 3694.96 5097.30 6897.93 6296.05 2097.90 30489.32 24299.23 9598.19 193
COLMAP_ROBcopyleft91.06 596.75 2396.62 3197.13 3198.38 7094.31 2196.79 2798.32 3896.69 2196.86 9597.56 9595.48 3198.77 16790.11 22099.44 5198.31 178
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
anonymousdsp96.74 2496.42 3897.68 798.00 10294.03 2996.97 1997.61 15687.68 26698.45 2198.77 2094.20 9099.50 2396.70 1399.40 6199.53 17
DTE-MVSNet96.74 2497.43 994.67 13999.13 684.68 25196.51 4197.94 11598.14 698.67 1598.32 3995.04 5699.69 393.27 10399.82 799.62 13
SR-MVS96.70 2696.42 3897.54 1498.05 9494.69 1596.13 7198.07 8695.17 4896.82 9996.73 18995.09 5599.43 3692.99 11498.71 19898.50 153
PS-CasMVS96.69 2797.43 994.49 15399.13 684.09 26496.61 3797.97 10797.91 898.64 1698.13 4595.24 4599.65 493.39 9799.84 399.72 4
PEN-MVS96.69 2797.39 1294.61 14299.16 484.50 25396.54 3998.05 9298.06 798.64 1698.25 4295.01 5999.65 492.95 11599.83 599.68 7
MTAPA96.65 2996.38 4297.47 1898.95 2194.05 2795.88 8297.62 15494.46 5996.29 13696.94 16793.56 10299.37 6594.29 6299.42 5498.99 66
test_djsdf96.62 3096.49 3597.01 3598.55 5391.77 8597.15 1597.37 18088.98 21998.26 2698.86 1593.35 11299.60 996.41 1899.45 4899.66 9
ACMMPcopyleft96.61 3196.34 4597.43 2198.61 4593.88 3796.95 2098.18 6392.26 10796.33 13096.84 17995.10 5499.40 5193.47 9099.33 7399.02 63
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
Anonymous2023121196.60 3297.13 1995.00 11697.46 14586.35 21497.11 1898.24 5497.58 1198.72 1198.97 1293.15 12099.15 9993.18 10699.74 1399.50 19
WR-MVS_H96.60 3297.05 2095.24 10699.02 1386.44 21096.78 2898.08 8397.42 1298.48 1997.86 7391.76 16299.63 794.23 6399.84 399.66 9
jajsoiax96.59 3496.42 3897.12 3298.76 3592.49 7196.44 4897.42 17786.96 28898.71 1398.72 2295.36 3899.56 1795.92 2599.45 4899.32 32
ACMH88.36 1296.59 3497.43 994.07 16998.56 4985.33 24396.33 5498.30 4194.66 5498.72 1198.30 4097.51 598.00 29794.87 5099.59 2998.86 94
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
TestfortrainingZip a96.50 3696.80 2395.62 8498.69 3788.28 15896.32 5698.06 9094.10 6597.65 4397.37 11594.54 8299.28 8595.41 4299.04 12799.30 34
XVS96.49 3796.18 5397.44 1998.56 4993.99 3296.50 4297.95 11294.58 5594.38 25696.49 20794.56 8099.39 5493.57 8299.05 12298.93 83
ACMH+88.43 1196.48 3896.82 2295.47 9298.54 5589.06 13895.65 9198.61 1596.10 3698.16 2997.52 10096.90 798.62 19590.30 20999.60 2798.72 121
APDe-MVScopyleft96.46 3996.64 2995.93 6697.68 12989.38 13196.90 2198.41 2992.52 9897.43 5897.92 6795.11 5299.50 2394.45 5799.30 8098.92 87
Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition
ACMMPR96.46 3996.14 5697.41 2398.60 4693.82 4296.30 6597.96 10992.35 10495.57 18796.61 19994.93 6499.41 4393.78 7699.15 11199.00 64
mPP-MVS96.46 3996.05 6297.69 598.62 4394.65 1796.45 4697.74 14392.59 9795.47 19296.68 19394.50 8399.42 3793.10 10999.26 9098.99 66
CP-MVS96.44 4296.08 6097.54 1498.29 7794.62 1896.80 2698.08 8392.67 9695.08 22996.39 22094.77 7399.42 3793.17 10799.44 5198.58 146
ZNCC-MVS96.42 4396.20 5297.07 3398.80 3492.79 6496.08 7398.16 7091.74 13695.34 20196.36 22395.68 2599.44 3394.41 5999.28 8898.97 73
region2R96.41 4496.09 5897.38 2598.62 4393.81 4496.32 5697.96 10992.26 10795.28 20796.57 20295.02 5899.41 4393.63 8099.11 11498.94 81
SteuartSystems-ACMMP96.40 4596.30 4796.71 4398.63 4291.96 8095.70 8898.01 10293.34 8696.64 11296.57 20294.99 6099.36 6693.48 8999.34 7198.82 99
Skip Steuart: Steuart Systems R&D Blog.
HFP-MVS96.39 4696.17 5597.04 3498.51 5893.37 5296.30 6597.98 10592.35 10495.63 18496.47 20895.37 3699.27 8893.78 7699.14 11298.48 156
MED-MVS96.38 4796.63 3095.63 8398.69 3788.21 16196.32 5698.58 1894.10 6597.38 6597.37 11595.11 5299.39 5492.89 11799.19 10299.30 34
LPG-MVS_test96.38 4796.23 5096.84 4198.36 7592.13 7795.33 10698.25 4691.78 13297.07 8397.22 13996.38 1699.28 8592.07 14299.59 2999.11 54
nrg03096.32 4996.55 3495.62 8497.83 11488.55 15395.77 8698.29 4492.68 9498.03 3497.91 7095.13 5098.95 13593.85 7499.49 4399.36 30
PGM-MVS96.32 4995.94 6997.43 2198.59 4893.84 4195.33 10698.30 4191.40 15395.76 17096.87 17595.26 4499.45 3292.77 12099.21 9999.00 64
ACMM88.83 996.30 5196.07 6196.97 3798.39 6992.95 6194.74 13198.03 9990.82 16897.15 7896.85 17696.25 1899.00 12593.10 10999.33 7398.95 80
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
GST-MVS96.24 5295.99 6697.00 3698.65 4192.71 6695.69 9098.01 10292.08 11695.74 17596.28 22995.22 4799.42 3793.17 10799.06 11998.88 93
ACMMP_NAP96.21 5396.12 5796.49 5198.90 2291.42 9294.57 14298.03 9990.42 18496.37 12797.35 12395.68 2599.25 8994.44 5899.34 7198.80 104
CP-MVSNet96.19 5496.80 2394.38 15898.99 1983.82 26796.31 6197.53 16897.60 1098.34 2297.52 10091.98 15699.63 793.08 11199.81 899.70 5
MP-MVScopyleft96.14 5595.68 8697.51 1698.81 3294.06 2596.10 7297.78 14192.73 9393.48 29196.72 19094.23 8999.42 3791.99 14599.29 8399.05 61
Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo.
LS3D96.11 5695.83 7996.95 3994.75 35994.20 2397.34 1397.98 10597.31 1495.32 20296.77 18293.08 12399.20 9591.79 15298.16 27397.44 289
MP-MVS-pluss96.08 5795.92 7296.57 4799.06 1091.21 9493.25 20298.32 3887.89 25896.86 9597.38 11495.55 3099.39 5495.47 3899.47 4499.11 54
MP-MVS-pluss: MP-MVS-pluss. MP-MVS-pluss
TranMVSNet+NR-MVSNet96.07 5896.26 4995.50 9098.26 8087.69 17793.75 18097.86 12695.96 4197.48 5697.14 14895.33 4099.44 3390.79 18799.76 1099.38 28
PS-MVSNAJss96.01 5996.04 6395.89 7198.82 3088.51 15495.57 9797.88 12388.72 22798.81 998.86 1590.77 19699.60 995.43 4099.53 3999.57 16
Elysia96.00 6096.36 4394.91 12298.01 10085.96 22795.29 11097.90 11895.31 4598.14 3097.28 13188.82 23499.51 2097.08 799.38 6399.26 37
StellarMVS96.00 6096.36 4394.91 12298.01 10085.96 22795.29 11097.90 11895.31 4598.14 3097.28 13188.82 23499.51 2097.08 799.38 6399.26 37
SED-MVS96.00 6096.41 4194.76 13298.51 5886.97 19295.21 11498.10 8091.95 11897.63 4597.25 13496.48 1399.35 6793.29 10199.29 8397.95 223
DVP-MVS++95.93 6396.34 4594.70 13596.54 22586.66 20498.45 498.22 5893.26 8797.54 5097.36 12093.12 12199.38 6393.88 7298.68 20398.04 208
APD_test195.91 6495.42 10097.36 2698.82 3096.62 695.64 9297.64 15293.38 8595.89 16297.23 13793.35 11297.66 33488.20 28698.66 20797.79 253
test_fmvsmconf0.01_n95.90 6596.09 5895.31 10297.30 15589.21 13394.24 15598.76 1286.25 30497.56 4998.66 2395.73 2398.44 23597.35 398.99 13398.27 183
DPE-MVScopyleft95.89 6695.88 7595.92 6897.93 10889.83 12193.46 19498.30 4192.37 10297.75 3996.95 16695.14 4999.51 2091.74 15499.28 8898.41 164
Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025
SF-MVS95.88 6795.88 7595.87 7298.12 8889.65 12395.58 9698.56 2091.84 12896.36 12996.68 19394.37 8799.32 7792.41 13499.05 12298.64 138
3Dnovator+92.74 295.86 6895.77 8396.13 5796.81 19490.79 10696.30 6597.82 13496.13 3594.74 24497.23 13791.33 17699.16 9893.25 10498.30 25698.46 157
mmtdpeth95.82 6996.02 6595.23 10796.91 18588.62 14896.49 4499.26 395.07 4993.41 29399.29 790.25 21097.27 36694.49 5599.01 13199.80 3
DVP-MVScopyleft95.82 6996.18 5394.72 13498.51 5886.69 20295.20 11697.00 21591.85 12597.40 6397.35 12395.58 2899.34 7093.44 9399.31 7898.13 201
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
CS-MVS95.77 7195.58 9196.37 5396.84 19191.72 8796.73 3099.06 794.23 6292.48 34294.79 32893.56 10299.49 2993.47 9099.05 12297.89 238
SMA-MVScopyleft95.77 7195.54 9296.47 5298.27 7991.19 9595.09 11997.79 13986.48 29697.42 6197.51 10494.47 8699.29 8193.55 8499.29 8398.93 83
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
test_040295.73 7396.22 5194.26 16198.19 8585.77 23393.24 20397.24 19896.88 2097.69 4297.77 7994.12 9299.13 10491.54 16499.29 8397.88 239
ACMP88.15 1395.71 7495.43 9996.54 4898.17 8691.73 8694.24 15598.08 8389.46 20796.61 11496.47 20895.85 2299.12 10590.45 19899.56 3698.77 114
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
XVG-ACMP-BASELINE95.68 7595.34 10596.69 4498.40 6893.04 5894.54 14698.05 9290.45 18396.31 13396.76 18492.91 13198.72 17491.19 17299.42 5498.32 176
DP-MVS95.62 7695.84 7894.97 11897.16 16388.62 14894.54 14697.64 15296.94 1996.58 11697.32 12793.07 12598.72 17490.45 19898.84 16497.57 277
ME-MVS95.61 7795.65 8895.49 9197.62 13388.21 16194.21 15897.87 12592.48 9996.38 12596.22 23594.06 9499.32 7792.89 11799.10 11598.96 77
test_fmvsmconf0.1_n95.61 7795.72 8595.26 10496.85 19089.20 13493.51 19298.60 1685.68 32597.42 6198.30 4095.34 3998.39 23696.85 1198.98 13598.19 193
OPM-MVS95.61 7795.45 9596.08 5898.49 6591.00 9892.65 23897.33 18890.05 19496.77 10396.85 17695.04 5698.56 21192.77 12099.06 11998.70 125
Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS).
fmvsm_s_conf0.5_n_995.58 8095.91 7394.59 14697.25 15686.26 21692.96 21697.86 12691.88 12397.52 5398.13 4591.45 17398.54 21497.17 498.99 13398.98 70
RPSCF95.58 8094.89 13097.62 897.58 13696.30 795.97 7897.53 16892.42 10093.41 29397.78 7591.21 18197.77 32391.06 17997.06 36098.80 104
MIMVSNet195.52 8295.45 9595.72 7799.14 589.02 13996.23 6896.87 23293.73 7697.87 3598.49 3390.73 20099.05 11886.43 32899.60 2799.10 57
Anonymous2024052995.50 8395.83 7994.50 15197.33 15385.93 22995.19 11896.77 24396.64 2397.61 4898.05 5093.23 11798.79 16088.60 27599.04 12798.78 111
Vis-MVSNetpermissive95.50 8395.48 9495.56 8898.11 8989.40 13095.35 10498.22 5892.36 10394.11 26398.07 4992.02 15499.44 3393.38 9897.67 32397.85 245
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
Casviewmambapermissive95.48 8595.97 6794.04 17096.94 18184.57 25293.96 17198.29 4493.94 7196.76 10497.14 14895.27 4398.72 17492.37 13699.02 13098.82 99
EC-MVSNet95.44 8695.62 8994.89 12496.93 18487.69 17796.48 4599.14 693.93 7292.77 33294.52 34193.95 9799.49 2993.62 8199.22 9897.51 282
test_fmvsmconf_n95.43 8795.50 9395.22 10996.48 23489.19 13593.23 20498.36 3585.61 32896.92 9398.02 5495.23 4698.38 24096.69 1498.95 14598.09 203
pm-mvs195.43 8795.94 6993.93 17798.38 7085.08 24795.46 10297.12 20891.84 12897.28 7198.46 3595.30 4297.71 33190.17 21899.42 5498.99 66
DeepC-MVS91.39 495.43 8795.33 10795.71 7897.67 13090.17 11793.86 17698.02 10187.35 27396.22 14297.99 5894.48 8599.05 11892.73 12399.68 2097.93 228
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
tt080595.42 9095.93 7193.86 18198.75 3688.47 15597.68 994.29 35696.48 2695.38 19793.63 38094.89 6697.94 30395.38 4396.92 36995.17 413
XVG-OURS-SEG-HR95.38 9195.00 12796.51 4998.10 9094.07 2492.46 24898.13 7390.69 17293.75 27996.25 23398.03 297.02 38792.08 14195.55 42198.45 158
UniMVSNet_NR-MVSNet95.35 9295.21 11295.76 7597.69 12888.59 15192.26 26597.84 13094.91 5296.80 10095.78 27090.42 20699.41 4391.60 16099.58 3399.29 36
MSP-MVS95.34 9394.63 14897.48 1798.67 4094.05 2796.41 5098.18 6391.26 15695.12 22495.15 30686.60 28799.50 2393.43 9696.81 37498.89 91
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
SPE-MVS-test95.32 9495.10 12395.96 6296.86 18990.75 10896.33 5499.20 493.99 6891.03 39393.73 37793.52 10499.55 1891.81 15199.45 4897.58 276
FC-MVSNet-test95.32 9495.88 7593.62 19398.49 6581.77 31295.90 8198.32 3893.93 7297.53 5297.56 9588.48 24299.40 5192.91 11699.83 599.68 7
UniMVSNet (Re)95.32 9495.15 11495.80 7497.79 11888.91 14192.91 22398.07 8693.46 8396.31 13395.97 25890.14 21499.34 7092.11 13999.64 2599.16 47
Gipumacopyleft95.31 9795.80 8293.81 18497.99 10590.91 10196.42 4997.95 11296.69 2191.78 37198.85 1791.77 16095.49 43891.72 15699.08 11895.02 422
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
mvs5depth95.28 9895.82 8193.66 19196.42 23983.08 28797.35 1299.28 296.44 2896.20 14499.65 284.10 31398.01 29594.06 6798.93 14899.87 1
DU-MVS95.28 9895.12 12095.75 7697.75 12088.59 15192.58 24297.81 13593.99 6896.80 10095.90 25990.10 21799.41 4391.60 16099.58 3399.26 37
NR-MVSNet95.28 9895.28 11095.26 10497.75 12087.21 18595.08 12097.37 18093.92 7497.65 4395.90 25990.10 21799.33 7690.11 22099.66 2399.26 37
TransMVSNet (Re)95.27 10196.04 6392.97 22798.37 7281.92 31195.07 12196.76 24493.97 7097.77 3898.57 2895.72 2497.90 30488.89 26399.23 9599.08 58
fmvsm_s_conf0.5_n_395.20 10295.95 6892.94 23196.60 21982.18 30893.13 20798.39 3291.44 15197.16 7797.68 8493.03 12897.82 31597.54 298.63 20898.81 102
fmvsm_l_conf0.5_n_395.19 10395.36 10394.68 13796.79 19787.49 17993.05 21098.38 3387.21 27896.59 11597.76 8094.20 9098.11 27695.90 2698.40 23898.42 161
SD-MVS95.19 10395.73 8493.55 19796.62 21888.88 14494.67 13698.05 9291.26 15697.25 7496.40 21595.42 3494.36 46592.72 12499.19 10297.40 295
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
VPA-MVSNet95.14 10595.67 8793.58 19697.76 11983.15 28394.58 14197.58 16193.39 8497.05 8698.04 5293.25 11598.51 22289.75 23299.59 2999.08 58
casdiffmvs_mvgpermissive95.10 10695.62 8993.53 20196.25 26483.23 27992.66 23798.19 6193.06 9097.49 5597.15 14794.78 7298.71 18192.27 13798.72 19698.65 132
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
KinetiMVS95.09 10795.40 10194.15 16497.42 14884.35 25693.91 17496.69 24994.41 6096.67 10997.25 13487.67 26099.14 10195.78 2998.81 17298.97 73
test_fmvsmvis_n_192095.08 10895.40 10194.13 16796.66 20887.75 17693.44 19698.49 2385.57 32998.27 2397.11 15294.11 9397.75 32796.26 2098.72 19696.89 328
HPM-MVS++copyleft95.02 10994.39 15896.91 4097.88 11193.58 5094.09 16596.99 21791.05 16192.40 34795.22 30491.03 19099.25 8992.11 13998.69 20297.90 236
APD-MVScopyleft95.00 11094.69 14195.93 6697.38 14990.88 10294.59 13997.81 13589.22 21495.46 19496.17 24393.42 11099.34 7089.30 24498.87 16297.56 279
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
PMVScopyleft87.21 1494.97 11195.33 10793.91 17898.97 2097.16 295.54 10095.85 29796.47 2793.40 29697.46 10795.31 4195.47 43986.18 33298.78 18189.11 507
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
TSAR-MVS + MP.94.96 11294.75 13795.57 8798.86 2788.69 14596.37 5196.81 23885.23 33894.75 24397.12 15191.85 15899.40 5193.45 9298.33 25098.62 142
Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition
fmvsm_s_conf0.5_n_1194.91 11395.44 9893.33 21296.45 23583.11 28693.56 19098.64 1489.76 20095.70 17997.97 5992.32 14698.08 28195.62 3198.95 14598.79 106
SixPastTwentyTwo94.91 11395.21 11293.98 17298.52 5783.19 28295.93 7994.84 33894.86 5398.49 1898.74 2181.45 34499.60 994.69 5299.39 6299.15 48
FIs94.90 11595.35 10493.55 19798.28 7881.76 31395.33 10698.14 7293.05 9197.07 8397.18 14387.65 26299.29 8191.72 15699.69 1799.61 14
AllTest94.88 11694.51 15596.00 5998.02 9892.17 7495.26 11298.43 2790.48 18195.04 23196.74 18792.54 14097.86 31285.11 35098.98 13597.98 217
FMVSNet194.84 11795.13 11993.97 17397.60 13484.29 25795.99 7596.56 26192.38 10197.03 8798.53 3090.12 21598.98 12788.78 26899.16 11098.65 132
ANet_high94.83 11896.28 4890.47 37296.65 20973.16 47994.33 15098.74 1396.39 3098.09 3398.93 1393.37 11198.70 18290.38 20199.68 2099.53 17
MVSMamba_PlusPlus94.82 11995.89 7491.62 30797.82 11578.88 39296.52 4097.60 15897.14 1694.23 25998.48 3487.01 27799.71 295.43 4098.80 17696.28 365
hybridcas94.81 12095.45 9592.88 23696.74 20181.36 32393.32 20198.13 7392.16 11396.79 10296.98 16594.91 6598.53 21891.16 17398.90 15498.75 115
3Dnovator92.54 394.80 12194.90 12894.47 15495.47 33087.06 18996.63 3697.28 19591.82 13194.34 25897.41 11290.60 20398.65 19192.47 13298.11 27997.70 265
CPTT-MVS94.74 12294.12 17496.60 4698.15 8793.01 5995.84 8497.66 15189.21 21593.28 30295.46 28888.89 23398.98 12789.80 22898.82 17097.80 252
test_fmvsm_n_192094.72 12394.74 13994.67 13996.30 25788.62 14893.19 20598.07 8685.63 32797.08 8297.35 12390.86 19397.66 33495.70 3098.48 23097.74 263
XVG-OURS94.72 12394.12 17496.50 5098.00 10294.23 2291.48 29998.17 6790.72 17195.30 20396.47 20887.94 25696.98 38891.41 16797.61 32798.30 180
fmvsm_s_conf0.5_n_894.70 12595.34 10592.78 24396.77 19981.50 32092.64 23998.50 2191.51 14897.22 7597.93 6288.07 25198.45 23396.62 1698.80 17698.39 169
CSCG94.69 12694.75 13794.52 15097.55 13887.87 17395.01 12497.57 16292.68 9496.20 14493.44 38691.92 15798.78 16489.11 25699.24 9396.92 325
v1094.68 12795.27 11192.90 23496.57 22280.15 34494.65 13897.57 16290.68 17397.43 5898.00 5588.18 24899.15 9994.84 5199.55 3799.41 26
v894.65 12895.29 10992.74 24496.65 20979.77 36194.59 13997.17 20291.86 12497.47 5797.93 6288.16 24999.08 11194.32 6099.47 4499.38 28
RoMa-HiRes94.64 12994.29 16595.68 8197.47 14493.88 3793.83 17896.23 28088.05 25397.75 3996.20 23888.58 24094.93 45691.33 16999.17 10998.22 188
fmvsm_s_conf0.5_n_1094.63 13095.11 12193.18 22196.28 25883.51 27193.00 21398.25 4688.37 24397.43 5897.70 8288.90 23298.63 19497.15 598.90 15497.41 291
sasdasda94.59 13194.69 14194.30 15995.60 32187.03 19095.59 9398.24 5491.56 14395.21 21692.04 43794.95 6198.66 18891.45 16597.57 33097.20 306
canonicalmvs94.59 13194.69 14194.30 15995.60 32187.03 19095.59 9398.24 5491.56 14395.21 21692.04 43794.95 6198.66 18891.45 16597.57 33097.20 306
CNVR-MVS94.58 13394.29 16595.46 9396.94 18189.35 13291.81 28896.80 23989.66 20393.90 27595.44 29092.80 13598.72 17492.74 12298.52 22598.32 176
casdiffseed41469214794.56 13494.90 12893.54 19996.60 21983.33 27593.57 18998.06 9091.57 14295.26 21097.31 12894.06 9498.39 23688.67 27198.95 14598.91 89
GeoE94.55 13594.68 14594.15 16497.23 15885.11 24694.14 16297.34 18788.71 22895.26 21095.50 28694.65 7699.12 10590.94 18398.40 23898.23 186
EG-PatchMatch MVS94.54 13694.67 14694.14 16697.87 11386.50 20692.00 27396.74 24588.16 25196.93 9297.61 9193.04 12797.90 30491.60 16098.12 27898.03 211
fmvsm_l_conf0.5_n_994.51 13795.11 12192.72 24596.70 20583.14 28491.91 28097.89 12288.44 23997.30 6897.57 9391.60 16497.54 34395.82 2898.74 19097.47 285
E5new94.50 13895.15 11492.55 25897.04 17280.27 34092.96 21698.25 4690.18 18895.77 16797.45 10894.85 6998.59 20191.16 17398.73 19298.79 106
E6new94.50 13895.15 11492.55 25897.04 17280.28 33892.96 21698.25 4690.18 18895.76 17097.45 10894.86 6798.59 20191.16 17398.73 19298.79 106
E694.50 13895.15 11492.55 25897.04 17280.28 33892.96 21698.25 4690.18 18895.76 17097.45 10894.86 6798.59 20191.16 17398.73 19298.79 106
E594.50 13895.15 11492.55 25897.04 17280.27 34092.96 21698.25 4690.18 18895.77 16797.45 10894.85 6998.59 20191.16 17398.73 19298.79 106
fmvsm_s_conf0.5_n_594.50 13894.80 13393.60 19496.80 19584.93 24892.81 22897.59 16085.27 33796.85 9897.29 12991.48 17298.05 28896.67 1598.47 23197.83 247
IS-MVSNet94.49 14394.35 16394.92 12198.25 8286.46 20997.13 1794.31 35596.24 3496.28 13896.36 22382.88 32699.35 6788.19 28799.52 4198.96 77
Baseline_NR-MVSNet94.47 14495.09 12492.60 25698.50 6480.82 33592.08 26996.68 25293.82 7596.29 13698.56 2990.10 21797.75 32790.10 22299.66 2399.24 41
MGCFI-Net94.44 14594.67 14693.75 18695.56 32485.47 24095.25 11398.24 5491.53 14595.04 23192.21 43294.94 6398.54 21491.56 16397.66 32497.24 304
SDMVSNet94.43 14695.02 12592.69 24797.93 10882.88 29191.92 27995.99 29493.65 8195.51 18998.63 2594.60 7896.48 41087.57 30499.35 6798.70 125
MM94.41 14794.14 17395.22 10995.84 30087.21 18594.31 15290.92 43694.48 5892.80 33097.52 10085.27 30399.49 2996.58 1799.57 3598.97 73
SSM_040494.38 14894.69 14193.43 20797.16 16383.23 27993.95 17297.84 13091.46 14995.70 17996.56 20492.50 14499.08 11188.83 26498.23 26497.98 217
fmvsm_s_conf0.1_n_294.38 14894.78 13693.19 22097.07 17181.72 31591.97 27497.51 17187.05 28797.31 6797.92 6788.29 24698.15 27297.10 698.81 17299.70 5
VDD-MVS94.37 15094.37 16094.40 15797.49 14186.07 22393.97 17093.28 39094.49 5796.24 14097.78 7587.99 25598.79 16088.92 26199.14 11298.34 175
EI-MVSNet-Vis-set94.36 15194.28 16794.61 14292.55 42585.98 22692.44 25094.69 34693.70 7796.12 14995.81 26591.24 17998.86 14693.76 7998.22 26898.98 70
EI-MVSNet-UG-set94.35 15294.27 16994.59 14692.46 42885.87 23192.42 25294.69 34693.67 8096.13 14895.84 26391.20 18298.86 14693.78 7698.23 26499.03 62
PHI-MVS94.34 15393.80 18695.95 6395.65 31691.67 8894.82 12997.86 12687.86 25993.04 32194.16 35991.58 16598.78 16490.27 21198.96 14397.41 291
casdiffmvspermissive94.32 15494.80 13392.85 23896.05 28481.44 32292.35 25698.05 9291.53 14595.75 17496.80 18093.35 11298.49 22491.01 18298.32 25298.64 138
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
tfpnnormal94.27 15594.87 13192.48 26597.71 12580.88 33494.55 14595.41 31793.70 7796.67 10997.72 8191.40 17598.18 26687.45 30699.18 10698.36 171
fmvsm_s_conf0.5_n_494.26 15694.58 15093.31 21396.40 24182.73 29992.59 24197.41 17886.60 29296.33 13097.07 15689.91 22198.07 28596.88 1098.01 29399.13 50
fmvsm_s_conf0.1_n_a94.26 15694.37 16093.95 17697.36 15185.72 23594.15 16095.44 31483.25 38095.51 18998.05 5092.54 14097.19 37695.55 3697.46 33898.94 81
HQP_MVS94.26 15693.93 18295.23 10797.71 12588.12 16494.56 14397.81 13591.74 13693.31 29995.59 28086.93 28098.95 13589.26 24898.51 22798.60 144
baseline94.26 15694.80 13392.64 24996.08 28180.99 33193.69 18398.04 9890.80 16994.89 23896.32 22593.19 11898.48 22991.68 15898.51 22798.43 160
fmvsm_s_conf0.5_n_294.25 16094.63 14893.10 22396.65 20981.75 31491.72 29297.25 19686.93 29197.20 7697.67 8688.44 24498.14 27597.06 998.77 18299.42 24
SSM_040794.23 16194.56 15293.24 21896.65 20982.79 29493.66 18597.84 13091.46 14995.19 21896.56 20492.50 14498.99 12688.83 26498.32 25297.93 228
OMC-MVS94.22 16293.69 19395.81 7397.25 15691.27 9392.27 26497.40 17987.10 28694.56 25095.42 29293.74 9998.11 27686.62 32198.85 16398.06 204
LCM-MVSNet-Re94.20 16394.58 15093.04 22495.91 29583.13 28593.79 17999.19 592.00 11798.84 898.04 5293.64 10199.02 12381.28 40498.54 22196.96 324
DeepPCF-MVS90.46 694.20 16393.56 20096.14 5695.96 29192.96 6089.48 38597.46 17585.14 34396.23 14195.42 29293.19 11898.08 28190.37 20498.76 18497.38 298
fmvsm_s_conf0.1_n94.19 16594.41 15793.52 20397.22 16084.37 25493.73 18195.26 32384.45 36095.76 17098.00 5591.85 15897.21 37395.62 3197.82 31098.98 70
fmvsm_s_conf0.5_n_694.14 16694.54 15392.95 22996.51 23082.74 29892.71 23498.13 7386.56 29496.44 12196.85 17688.51 24198.05 28896.03 2399.09 11798.06 204
NormalMVS94.10 16793.36 20796.31 5599.01 1590.84 10494.70 13497.90 11890.98 16293.22 30995.73 27378.94 36899.12 10590.38 20199.42 5498.97 73
KD-MVS_self_test94.10 16794.73 14092.19 27797.66 13179.49 37494.86 12897.12 20889.59 20596.87 9497.65 8890.40 20898.34 24789.08 25799.35 6798.75 115
NCCC94.08 16993.54 20195.70 8096.49 23289.90 12092.39 25496.91 22590.64 17492.33 35494.60 33790.58 20498.96 13390.21 21597.70 32198.23 186
FE-MVSNET294.07 17094.47 15692.90 23497.45 14781.26 32593.58 18897.54 16588.28 24596.46 12097.92 6791.41 17498.74 17188.12 29199.44 5198.69 128
VDDNet94.03 17194.27 16993.31 21398.87 2682.36 30495.51 10191.78 42697.19 1596.32 13298.60 2784.24 31198.75 16887.09 31398.83 16998.81 102
fmvsm_s_conf0.5_n_a94.02 17294.08 17693.84 18296.72 20485.73 23493.65 18795.23 32583.30 37895.13 22397.56 9592.22 15097.17 37795.51 3797.41 34198.64 138
E494.00 17394.53 15492.42 26896.78 19879.99 35291.33 30498.16 7089.69 20195.27 20897.16 14493.94 9898.64 19289.99 22498.42 23798.61 143
fmvsm_s_conf0.5_n94.00 17394.20 17193.42 20896.69 20684.37 25493.38 19895.13 32984.50 35995.40 19697.55 9991.77 16097.20 37495.59 3397.79 31198.69 128
dcpmvs_293.96 17595.01 12690.82 35997.60 13474.04 47393.68 18498.85 989.80 19997.82 3697.01 16391.14 18699.21 9290.56 19398.59 21499.19 45
sd_testset93.94 17694.39 15892.61 25597.93 10883.24 27893.17 20695.04 33193.65 8195.51 18998.63 2594.49 8495.89 43081.72 39799.35 6798.70 125
EPP-MVSNet93.91 17793.68 19494.59 14698.08 9185.55 23997.44 1194.03 36494.22 6394.94 23596.19 23982.07 33899.57 1487.28 31098.89 15798.65 132
Effi-MVS+-dtu93.90 17892.60 23897.77 394.74 36296.67 594.00 16895.41 31789.94 19591.93 36892.13 43590.12 21598.97 13287.68 30397.48 33697.67 268
viewmacassd2359aftdt93.83 17994.36 16292.24 27396.45 23579.58 37091.60 29497.96 10989.14 21695.05 23097.09 15593.69 10098.48 22989.79 22998.43 23598.65 132
fmvsm_l_conf0.5_n93.79 18093.81 18493.73 18896.16 27286.26 21692.46 24896.72 24681.69 41095.77 16797.11 15290.83 19597.82 31595.58 3497.99 29797.11 309
IterMVS-LS93.78 18194.28 16792.27 27096.27 26179.21 38591.87 28496.78 24091.77 13496.57 11797.07 15687.15 27398.74 17191.99 14599.03 12998.86 94
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
DeepC-MVS_fast89.96 793.73 18293.44 20494.60 14596.14 27587.90 17293.36 19997.14 20485.53 33093.90 27595.45 28991.30 17898.59 20189.51 23898.62 21097.31 301
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
MVS_111021_LR93.66 18393.28 21094.80 13096.25 26490.95 10090.21 35395.43 31687.91 25693.74 28194.40 34792.88 13396.38 41690.39 20098.28 25797.07 314
viewdifsd2359ckpt0793.63 18494.33 16491.55 31096.19 27077.86 41490.11 36097.74 14390.76 17096.11 15096.61 19994.37 8798.27 25488.82 26698.23 26498.51 152
MVS_111021_HR93.63 18493.42 20694.26 16196.65 20986.96 19489.30 39296.23 28088.36 24493.57 28794.60 33793.45 10797.77 32390.23 21498.38 24398.03 211
fmvsm_s_conf0.5_n_793.61 18693.94 18192.63 25296.11 27882.76 29790.81 32397.55 16486.57 29393.14 31597.69 8390.17 21396.83 39894.46 5698.93 14898.31 178
mamba_040893.60 18793.72 18993.27 21696.65 20982.79 29488.81 40897.68 14890.62 17795.19 21896.01 25491.54 17099.08 11188.63 27398.32 25297.93 228
fmvsm_l_conf0.5_n_a93.59 18893.63 19593.49 20596.10 27985.66 23792.32 25996.57 26081.32 41795.63 18497.14 14890.19 21197.73 33095.37 4498.03 29097.07 314
E293.53 18993.96 17992.25 27196.39 24279.76 36291.06 31498.05 9288.58 23494.71 24796.64 19593.08 12398.57 20789.16 25297.97 29998.42 161
E393.53 18993.96 17992.25 27196.39 24279.76 36291.06 31498.05 9288.58 23494.71 24796.64 19593.07 12598.57 20789.16 25297.97 29998.42 161
v114493.50 19193.81 18492.57 25796.28 25879.61 36691.86 28696.96 21886.95 28995.91 16096.32 22587.65 26298.96 13393.51 8698.88 15999.13 50
v119293.49 19293.78 18792.62 25496.16 27279.62 36591.83 28797.22 20086.07 31096.10 15196.38 22187.22 27099.02 12394.14 6598.88 15999.22 42
WR-MVS93.49 19293.72 18992.80 24197.57 13780.03 35090.14 35795.68 30193.70 7796.62 11395.39 29787.21 27199.04 12187.50 30599.64 2599.33 31
RoMa-SfM93.45 19492.92 22395.03 11596.77 19994.01 3193.01 21195.19 32783.99 36897.28 7195.33 30087.17 27293.66 47288.55 27899.00 13297.42 290
BridgeMVS93.45 19494.17 17291.28 33095.81 30478.40 40096.20 6997.48 17488.56 23795.29 20597.20 14285.56 30299.21 9292.52 13198.91 15396.24 368
LuminaMVS93.43 19693.18 21394.16 16397.32 15485.29 24493.36 19993.94 37088.09 25297.12 8196.43 21180.11 35698.98 12793.53 8598.76 18498.21 189
V4293.43 19693.58 19892.97 22795.34 33681.22 32792.67 23696.49 26687.25 27696.20 14496.37 22287.32 26898.85 14892.39 13598.21 26998.85 97
K. test v393.37 19893.27 21193.66 19198.05 9482.62 30094.35 14986.62 47396.05 3897.51 5498.85 1776.59 41899.65 493.21 10598.20 27198.73 120
viewdifsd2359ckpt1193.36 19993.99 17791.48 31595.50 32878.39 40290.47 33896.69 24988.59 23296.03 15496.88 17393.48 10597.63 33890.20 21698.07 28598.41 164
viewmsd2359difaftdt93.36 19993.99 17791.48 31595.50 32878.39 40290.47 33896.69 24988.59 23296.03 15496.88 17393.48 10597.63 33890.20 21698.07 28598.41 164
PM-MVS93.33 20192.67 23595.33 9996.58 22194.06 2592.26 26592.18 41485.92 31596.22 14296.61 19985.64 30095.99 42890.35 20598.23 26495.93 384
v124093.29 20293.71 19292.06 28596.01 28977.89 41391.81 28897.37 18085.12 34496.69 10896.40 21586.67 28599.07 11794.51 5498.76 18499.22 42
v2v48293.29 20293.63 19592.29 26996.35 25078.82 39491.77 29196.28 27688.45 23895.70 17996.26 23286.02 29498.90 13993.02 11298.81 17299.14 49
SymmetryMVS93.26 20492.36 24795.97 6197.13 16790.84 10494.70 13491.61 42990.98 16293.22 30995.73 27378.94 36899.12 10590.38 20198.53 22297.97 221
alignmvs93.26 20492.85 22494.50 15195.70 31187.45 18093.45 19595.76 29891.58 14195.25 21392.42 42581.96 34198.72 17491.61 15997.87 30897.33 300
v192192093.26 20493.61 19792.19 27796.04 28878.31 40691.88 28397.24 19885.17 34196.19 14796.19 23986.76 28499.05 11894.18 6498.84 16499.22 42
SSM_0407293.25 20793.72 18991.84 29496.65 20982.79 29488.81 40897.68 14890.62 17795.19 21896.01 25491.54 17094.81 45788.63 27398.32 25297.93 228
MSLP-MVS++93.25 20793.88 18391.37 32396.34 25182.81 29393.11 20897.74 14389.37 21094.08 26595.29 30290.40 20896.35 41890.35 20598.25 26194.96 423
GBi-Net93.21 20992.96 21993.97 17395.40 33284.29 25795.99 7596.56 26188.63 22995.10 22698.53 3081.31 34698.98 12786.74 31698.38 24398.65 132
test193.21 20992.96 21993.97 17395.40 33284.29 25795.99 7596.56 26188.63 22995.10 22698.53 3081.31 34698.98 12786.74 31698.38 24398.65 132
v14419293.20 21193.54 20192.16 28196.05 28478.26 40791.95 27597.14 20484.98 35095.96 15696.11 24887.08 27699.04 12193.79 7598.84 16499.17 46
viewcassd2359sk1193.16 21293.51 20392.13 28396.07 28279.59 36790.88 32097.97 10787.82 26094.23 25996.19 23992.31 14798.53 21888.58 27697.51 33398.28 181
usedtu_dtu_shiyan293.15 21392.40 24595.41 9598.56 4990.53 11194.71 13394.14 36292.10 11593.73 28296.94 16789.66 22597.77 32372.97 49698.81 17297.92 233
viewmanbaseed2359cas93.08 21493.43 20592.01 28995.69 31279.29 38191.15 30897.70 14787.45 27294.18 26296.12 24692.31 14798.37 24488.58 27697.73 31698.38 170
VPNet93.08 21493.76 18891.03 34398.60 4675.83 45591.51 29795.62 30291.84 12895.74 17597.10 15489.31 22898.32 24885.07 35299.06 11998.93 83
UGNet93.08 21492.50 24194.79 13193.87 39287.99 16895.07 12194.26 35990.64 17487.33 47797.67 8686.89 28298.49 22488.10 29298.71 19897.91 235
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
TSAR-MVS + GP.93.07 21792.41 24495.06 11495.82 30290.87 10390.97 31692.61 40788.04 25494.61 24993.79 37588.08 25097.81 31789.41 24198.39 24296.50 349
ETV-MVS92.99 21892.74 22893.72 18995.86 29986.30 21592.33 25897.84 13091.70 13992.81 32986.17 50792.22 15099.19 9688.03 29797.73 31695.66 399
EI-MVSNet92.99 21893.26 21292.19 27792.12 44279.21 38592.32 25994.67 34891.77 13495.24 21495.85 26187.14 27498.49 22491.99 14598.26 25998.86 94
DKM92.97 22092.35 24894.81 12996.53 22893.72 4690.94 31794.88 33685.21 33996.42 12395.18 30583.11 32293.06 47989.66 23699.24 9397.64 270
MCST-MVS92.91 22192.51 24094.10 16897.52 13985.72 23591.36 30397.13 20680.33 42692.91 32894.24 35491.23 18098.72 17489.99 22497.93 30497.86 243
h-mvs3392.89 22291.99 26095.58 8696.97 17990.55 11093.94 17394.01 36889.23 21293.95 27296.19 23976.88 41399.14 10191.02 18095.71 41697.04 318
MGCNet92.88 22392.27 25094.69 13692.35 43186.03 22492.88 22589.68 44490.53 18091.52 37796.43 21182.52 33499.32 7795.01 4899.54 3898.71 124
QAPM92.88 22392.77 22693.22 21995.82 30283.31 27696.45 4697.35 18683.91 37093.75 27996.77 18289.25 22998.88 14284.56 35997.02 36297.49 284
DKM-HiRes92.87 22591.94 26295.65 8297.16 16393.66 4790.90 31994.27 35887.11 28595.29 20595.39 29777.59 39495.36 44290.86 18598.92 15297.94 225
v14892.87 22593.29 20891.62 30796.25 26477.72 41991.28 30595.05 33089.69 20195.93 15996.04 25187.34 26798.38 24090.05 22397.99 29798.78 111
Anonymous2024052192.86 22793.57 19990.74 36296.57 22275.50 45794.15 16095.60 30389.38 20995.90 16197.90 7280.39 35597.96 30192.60 12899.68 2098.75 115
E3new92.83 22893.10 21692.04 28695.78 30679.45 37590.76 32597.90 11887.23 27793.79 27895.70 27691.55 16698.49 22488.17 28996.99 36798.16 196
Effi-MVS+92.79 22992.74 22892.94 23195.10 34783.30 27794.00 16897.53 16891.36 15489.35 43690.65 46794.01 9698.66 18887.40 30895.30 43696.88 330
FMVSNet292.78 23092.73 23092.95 22995.40 33281.98 31094.18 15995.53 31288.63 22996.05 15297.37 11581.31 34698.81 15687.38 30998.67 20598.06 204
Fast-Effi-MVS+-dtu92.77 23192.16 25394.58 14994.66 36788.25 15992.05 27096.65 25489.62 20490.08 41991.23 45392.56 13998.60 19986.30 33096.27 39796.90 326
AstraMVS92.75 23292.73 23092.79 24297.02 17681.48 32192.88 22590.62 44087.99 25596.48 11896.71 19182.02 33998.48 22992.44 13398.46 23298.40 168
LF4IMVS92.72 23392.02 25994.84 12895.65 31691.99 7992.92 22296.60 25785.08 34692.44 34593.62 38186.80 28396.35 41886.81 31598.25 26196.18 372
train_agg92.71 23491.83 26795.35 9796.45 23589.46 12690.60 33496.92 22279.37 43890.49 40494.39 34891.20 18298.88 14288.66 27298.43 23597.72 264
viewmambapermissive92.69 23593.03 21791.69 30493.92 39079.50 37389.92 36597.33 18888.86 22493.13 31795.79 26690.97 19197.65 33690.86 18596.45 39197.94 225
VNet92.67 23692.96 21991.79 29796.27 26180.15 34491.95 27594.98 33392.19 11194.52 25296.07 25087.43 26697.39 35884.83 35598.38 24397.83 247
CDPH-MVS92.67 23691.83 26795.18 11196.94 18188.46 15690.70 33097.07 21177.38 45692.34 35395.08 31292.67 13898.88 14285.74 33798.57 21698.20 191
balanced_ft_v192.65 23893.17 21491.10 34094.47 37277.32 42696.67 3496.70 24888.23 24793.70 28397.16 14483.33 31999.41 4390.51 19697.76 31396.57 341
viewdifsd2359ckpt0992.60 23992.34 24993.36 21095.94 29483.36 27492.35 25697.93 11783.17 38492.92 32794.66 33489.87 22298.57 20786.51 32697.71 32098.15 198
guyue92.60 23992.62 23692.52 26496.73 20281.00 33093.00 21391.83 42588.28 24596.38 12596.23 23480.71 35298.37 24492.06 14498.37 24898.20 191
Anonymous20240521192.58 24192.50 24192.83 23996.55 22483.22 28192.43 25191.64 42894.10 6595.59 18696.64 19581.88 34397.50 34685.12 34998.52 22597.77 257
XXY-MVS92.58 24193.16 21590.84 35797.75 12079.84 35691.87 28496.22 28385.94 31495.53 18897.68 8492.69 13794.48 46183.21 37697.51 33398.21 189
viewdifsd2359ckpt1392.57 24392.48 24392.83 23995.60 32182.35 30691.80 29097.49 17385.04 34893.14 31595.41 29590.94 19298.25 25686.68 31996.24 40097.87 242
MVS_Test92.57 24393.29 20890.40 37593.53 40075.85 45292.52 24496.96 21888.73 22692.35 35196.70 19290.77 19698.37 24492.53 13095.49 42396.99 320
TAPA-MVS88.58 1092.49 24591.75 26994.73 13396.50 23189.69 12292.91 22397.68 14878.02 45392.79 33194.10 36090.85 19497.96 30184.76 35798.16 27396.54 342
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
patch_mono-292.46 24692.72 23291.71 30296.65 20978.91 39188.85 40597.17 20283.89 37192.45 34496.76 18489.86 22397.09 38290.24 21398.59 21499.12 53
test_fmvs392.42 24792.40 24592.46 26793.80 39687.28 18393.86 17697.05 21276.86 46296.25 13998.66 2382.87 32791.26 49295.44 3996.83 37398.82 99
ab-mvs92.40 24892.62 23691.74 30097.02 17681.65 31695.84 8495.50 31386.95 28992.95 32697.56 9590.70 20197.50 34679.63 42497.43 34096.06 378
PMatch-Up-SfM92.38 24991.36 27995.46 9396.22 26792.32 7389.61 37895.31 32185.08 34696.71 10696.12 24675.90 42197.27 36689.73 23397.54 33296.78 335
CANet92.38 24991.99 26093.52 20393.82 39583.46 27291.14 30997.00 21589.81 19886.47 48194.04 36287.90 25799.21 9289.50 23998.27 25897.90 236
EIA-MVS92.35 25192.03 25893.30 21595.81 30483.97 26592.80 23098.17 6787.71 26489.79 42787.56 49691.17 18599.18 9787.97 29897.27 34796.77 336
diffmvs_AUTHOR92.34 25292.70 23391.26 33194.20 37978.42 39989.12 39797.60 15887.16 28193.17 31495.50 28688.66 23797.57 34291.30 17097.61 32797.79 253
DP-MVS Recon92.31 25391.88 26593.60 19497.18 16286.87 19691.10 31197.37 18084.92 35192.08 36594.08 36188.59 23898.20 26383.50 37398.14 27695.73 394
IMVS_040792.28 25492.83 22590.63 36895.19 34276.72 43892.79 23196.89 22685.92 31593.55 28894.50 34291.06 18798.07 28588.49 28097.07 35697.10 310
RRT-MVS92.28 25493.01 21890.07 38594.06 38573.01 48195.36 10397.88 12392.24 10995.16 22197.52 10078.51 37899.29 8190.55 19495.83 41397.92 233
F-COLMAP92.28 25491.06 29095.95 6397.52 13991.90 8193.53 19197.18 20183.98 36988.70 45294.04 36288.41 24598.55 21380.17 41695.99 40897.39 296
OpenMVScopyleft89.45 892.27 25792.13 25692.68 24894.53 37184.10 26395.70 8897.03 21382.44 39991.14 39196.42 21388.47 24398.38 24085.95 33597.47 33795.55 404
hse-mvs292.24 25891.20 28495.38 9696.16 27290.65 10992.52 24492.01 42289.23 21293.95 27292.99 39776.88 41398.69 18491.02 18096.03 40596.81 333
IMVS_040392.20 25992.70 23390.69 36495.19 34276.72 43892.39 25496.89 22685.92 31593.66 28594.50 34290.18 21298.24 25888.49 28097.07 35697.10 310
MVSFormer92.18 26092.23 25192.04 28694.74 36280.06 34897.15 1597.37 18088.98 21988.83 44492.79 40877.02 40899.60 996.41 1896.75 37796.46 353
VortexMVS92.13 26192.56 23990.85 35694.54 37076.17 44892.30 26296.63 25686.20 30696.66 11196.79 18179.87 35998.16 27091.27 17198.76 18498.24 185
HQP-MVS92.09 26291.49 27693.88 17996.36 24784.89 24991.37 30097.31 19087.16 28188.81 44693.40 38784.76 30898.60 19986.55 32497.73 31698.14 200
onestephybrid0192.06 26392.07 25792.04 28693.45 40380.93 33389.82 37196.78 24087.60 26891.68 37395.43 29188.73 23697.43 35388.32 28496.85 37297.76 258
DELS-MVS92.05 26492.16 25391.72 30194.44 37380.13 34687.62 42897.25 19687.34 27492.22 35793.18 39489.54 22798.73 17389.67 23598.20 27196.30 363
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
FE-MVSNET92.02 26592.22 25291.41 32096.63 21779.08 38791.53 29696.84 23685.52 33395.16 22196.14 24483.97 31497.50 34685.48 34198.75 18897.64 270
TinyColmap92.00 26692.76 22789.71 39995.62 32077.02 43190.72 32896.17 28687.70 26595.26 21096.29 22792.54 14096.45 41381.77 39598.77 18295.66 399
DenseAffine91.92 26790.90 29394.97 11896.37 24493.07 5690.35 34693.65 37884.62 35795.66 18394.39 34878.19 38494.97 45586.02 33498.90 15496.87 331
CLD-MVS91.82 26891.41 27893.04 22496.37 24483.65 26986.82 45197.29 19384.65 35692.27 35589.67 47792.20 15297.85 31483.95 37099.47 4497.62 272
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
FA-MVS(test-final)91.81 26991.85 26691.68 30594.95 35079.99 35296.00 7493.44 38887.80 26194.02 27097.29 12977.60 39398.45 23388.04 29697.49 33596.61 340
BP-MVS191.77 27091.10 28993.75 18696.42 23983.40 27394.10 16491.89 42391.27 15593.36 29794.85 32364.43 48999.29 8194.88 4998.74 19098.56 148
PMatch-SfM91.76 27190.58 30995.30 10395.64 31891.67 8889.49 38494.79 34384.45 36096.31 13396.02 25371.68 45197.26 36889.13 25597.75 31496.98 321
diffmvspermissive91.74 27291.93 26391.15 33993.06 41378.17 40888.77 41197.51 17186.28 30392.42 34693.96 36788.04 25397.46 35090.69 19196.67 38197.82 250
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
CNLPA91.72 27391.20 28493.26 21796.17 27191.02 9691.14 30995.55 31190.16 19290.87 39793.56 38486.31 29094.40 46479.92 42297.12 35494.37 443
IterMVS-SCA-FT91.65 27491.55 27291.94 29193.89 39179.22 38487.56 43193.51 38591.53 14595.37 19996.62 19878.65 37498.90 13991.89 14994.95 44997.70 265
PVSNet_Blended_VisFu91.63 27591.20 28492.94 23197.73 12383.95 26692.14 26897.46 17578.85 44892.35 35194.98 31584.16 31299.08 11186.36 32996.77 37695.79 392
AdaColmapbinary91.63 27591.36 27992.47 26695.56 32486.36 21392.24 26796.27 27788.88 22389.90 42492.69 41291.65 16398.32 24877.38 44797.64 32592.72 480
GDP-MVS91.56 27790.83 29893.77 18596.34 25183.65 26993.66 18598.12 7687.32 27592.98 32494.71 33163.58 49599.30 8092.61 12798.14 27698.35 174
pmmvs-eth3d91.54 27890.73 30393.99 17195.76 30987.86 17490.83 32293.98 36978.23 45294.02 27096.22 23582.62 33396.83 39886.57 32298.33 25097.29 302
API-MVS91.52 27991.61 27191.26 33194.16 38086.26 21694.66 13794.82 33991.17 15992.13 36391.08 45790.03 22097.06 38679.09 43397.35 34490.45 502
hybridnocas0791.51 28091.66 27091.04 34293.14 41178.03 40988.75 41396.92 22285.97 31391.63 37695.31 30187.67 26097.31 36188.97 25996.61 38597.79 253
xiu_mvs_v1_base_debu91.47 28191.52 27391.33 32695.69 31281.56 31789.92 36596.05 29183.22 38191.26 38390.74 46291.55 16698.82 15189.29 24595.91 40993.62 464
xiu_mvs_v1_base91.47 28191.52 27391.33 32695.69 31281.56 31789.92 36596.05 29183.22 38191.26 38390.74 46291.55 16698.82 15189.29 24595.91 40993.62 464
xiu_mvs_v1_base_debi91.47 28191.52 27391.33 32695.69 31281.56 31789.92 36596.05 29183.22 38191.26 38390.74 46291.55 16698.82 15189.29 24595.91 40993.62 464
LFMVS91.33 28491.16 28791.82 29696.27 26179.36 37995.01 12485.61 48696.04 3994.82 24097.06 15872.03 45098.46 23284.96 35498.70 20197.65 269
c3_l91.32 28591.42 27791.00 34692.29 43376.79 43787.52 43496.42 27085.76 32394.72 24693.89 37082.73 33098.16 27090.93 18498.55 21898.04 208
SP-SuperGlue91.30 28691.15 28891.75 29991.06 47490.99 9990.32 34993.55 38490.63 17691.17 38893.82 37479.84 36088.92 51193.30 10096.63 38395.34 411
ArgMatch-SfM91.28 28790.08 32394.88 12595.22 34092.66 6889.81 37294.51 35279.15 44395.27 20893.71 37878.33 37995.52 43586.11 33398.63 20896.46 353
Fast-Effi-MVS+91.28 28790.86 29692.53 26395.45 33182.53 30189.25 39596.52 26585.00 34989.91 42388.55 48992.94 12998.84 14984.72 35895.44 42596.22 370
icg_test_0407_291.18 28991.92 26488.94 42095.19 34276.72 43884.66 49696.89 22685.92 31593.55 28894.50 34291.06 18792.99 48088.49 28097.07 35697.10 310
hybrid91.14 29091.24 28390.83 35893.15 40977.49 42288.76 41296.87 23284.51 35891.25 38695.23 30387.14 27497.25 36988.05 29496.24 40097.76 258
MDA-MVSNet-bldmvs91.04 29190.88 29591.55 31094.68 36680.16 34385.49 48292.14 41790.41 18594.93 23695.79 26685.10 30596.93 39385.15 34794.19 47297.57 277
PAPM_NR91.03 29290.81 29991.68 30596.73 20281.10 32993.72 18296.35 27488.19 24988.77 45092.12 43685.09 30697.25 36982.40 38993.90 47796.68 339
ArgMatch-Sym90.98 29389.75 33294.68 13795.17 34692.64 6989.09 39893.46 38778.60 44995.11 22592.37 42680.44 35395.24 44885.04 35398.44 23496.18 372
SP-LightGlue90.98 29390.67 30491.92 29291.04 47591.02 9690.68 33194.22 36089.56 20690.35 41292.90 40377.08 40489.38 50793.92 7196.27 39795.35 410
MSDG90.82 29590.67 30491.26 33194.16 38083.08 28786.63 45796.19 28490.60 17991.94 36791.89 44189.16 23095.75 43280.96 40994.51 46094.95 424
test20.0390.80 29690.85 29790.63 36895.63 31979.24 38389.81 37292.87 39789.90 19694.39 25596.40 21585.77 29595.27 44773.86 49099.05 12297.39 296
FMVSNet390.78 29790.32 31792.16 28193.03 41579.92 35592.54 24394.95 33486.17 30995.10 22696.01 25469.97 46098.75 16886.74 31698.38 24397.82 250
viewmambaseed2359dif90.77 29890.81 29990.64 36793.46 40277.04 43088.83 40696.29 27580.79 42492.21 35995.11 30988.99 23197.28 36385.39 34496.20 40397.59 275
eth_miper_zixun_eth90.72 29990.61 30691.05 34192.04 44576.84 43686.91 44796.67 25385.21 33994.41 25493.92 36879.53 36398.26 25589.76 23197.02 36298.06 204
X-MVStestdata90.70 30088.45 36097.44 1998.56 4993.99 3296.50 4297.95 11294.58 5594.38 25626.89 54794.56 8099.39 5493.57 8299.05 12298.93 83
BH-untuned90.68 30190.90 29390.05 38995.98 29079.57 37190.04 36194.94 33587.91 25694.07 26693.00 39687.76 25897.78 32279.19 43195.17 44292.80 479
IMVS_040490.67 30291.06 29089.50 40295.19 34276.72 43886.58 46096.89 22685.92 31589.17 43894.50 34285.77 29594.67 45888.49 28097.07 35697.10 310
cl____90.65 30390.56 31090.91 35491.85 45176.98 43486.75 45295.36 31985.53 33094.06 26794.89 31977.36 40197.98 30090.27 21198.98 13597.76 258
DIV-MVS_self_test90.65 30390.56 31090.91 35491.85 45176.99 43386.75 45295.36 31985.52 33394.06 26794.89 31977.37 40097.99 29990.28 21098.97 14197.76 258
dtuplus90.63 30590.59 30890.74 36293.85 39477.43 42489.01 40096.16 28781.42 41492.77 33295.54 28588.59 23897.28 36381.99 39396.00 40697.50 283
test_fmvs290.62 30690.40 31491.29 32991.93 44985.46 24192.70 23596.48 26774.44 47894.91 23797.59 9275.52 42390.57 49593.44 9396.56 38697.84 246
114514_t90.51 30789.80 32992.63 25298.00 10282.24 30793.40 19797.29 19365.84 53089.40 43594.80 32786.99 27898.75 16883.88 37198.61 21196.89 328
miper_ehance_all_eth90.48 30890.42 31390.69 36491.62 46176.57 44486.83 45096.18 28583.38 37794.06 26792.66 41482.20 33698.04 29089.79 22997.02 36297.45 287
BH-RMVSNet90.47 30990.44 31290.56 37195.21 34178.65 39889.15 39693.94 37088.21 24892.74 33494.22 35586.38 28897.88 30878.67 43695.39 42895.14 416
Vis-MVSNet (Re-imp)90.42 31090.16 31991.20 33697.66 13177.32 42694.33 15087.66 46591.20 15892.99 32295.13 30875.40 42498.28 25077.86 44099.19 10297.99 216
test_vis3_rt90.40 31190.03 32491.52 31392.58 42388.95 14090.38 34497.72 14673.30 48897.79 3797.51 10477.05 40587.10 52589.03 25894.89 45098.50 153
PLCcopyleft85.34 1590.40 31188.92 34794.85 12796.53 22890.02 11891.58 29596.48 26780.16 42786.14 48492.18 43385.73 29798.25 25676.87 45294.61 45996.30 363
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
test111190.39 31390.61 30689.74 39898.04 9771.50 49395.59 9379.72 53589.41 20895.94 15898.14 4470.79 45598.81 15688.52 27999.32 7798.90 90
testgi90.38 31491.34 28187.50 45497.49 14171.54 49289.43 38795.16 32888.38 24194.54 25194.68 33392.88 13393.09 47871.60 50597.85 30997.88 239
mvs_anonymous90.37 31591.30 28287.58 45392.17 44068.00 50989.84 37094.73 34583.82 37293.22 30997.40 11387.54 26497.40 35787.94 29995.05 44697.34 299
PVSNet_BlendedMVS90.35 31689.96 32591.54 31294.81 35578.80 39690.14 35796.93 22079.43 43788.68 45495.06 31386.27 29198.15 27280.27 41298.04 28997.68 267
SP-DiffGlue90.34 31790.20 31890.76 36190.52 48990.29 11490.37 34594.02 36687.19 27993.85 27792.55 41778.24 38287.50 51889.68 23495.41 42694.49 440
UnsupCasMVSNet_eth90.33 31890.34 31690.28 37794.64 36880.24 34289.69 37795.88 29585.77 32293.94 27495.69 27781.99 34092.98 48184.21 36591.30 51197.62 272
MAR-MVS90.32 31988.87 35194.66 14194.82 35491.85 8294.22 15794.75 34480.91 42087.52 47588.07 49486.63 28697.87 31176.67 45496.21 40294.25 446
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
RPMNet90.31 32090.14 32290.81 36091.01 47778.93 38892.52 24498.12 7691.91 12189.10 43996.89 17268.84 46499.41 4390.17 21892.70 49994.08 449
mvsmamba90.24 32189.43 33892.64 24995.52 32682.36 30496.64 3592.29 41281.77 40792.14 36296.28 22970.59 45699.10 11084.44 36195.22 44196.47 352
IterMVS90.18 32290.16 31990.21 38193.15 40975.98 45187.56 43192.97 39686.43 29994.09 26496.40 21578.32 38097.43 35387.87 30094.69 45797.23 305
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
SSC-MVS90.16 32392.96 21981.78 51397.88 11148.48 54990.75 32687.69 46496.02 4096.70 10797.63 9085.60 30197.80 31885.73 33898.60 21399.06 60
TAMVS90.16 32389.05 34393.49 20596.49 23286.37 21290.34 34892.55 40880.84 42392.99 32294.57 34081.94 34298.20 26373.51 49198.21 26995.90 387
ECVR-MVScopyleft90.12 32590.16 31990.00 39097.81 11672.68 48595.76 8778.54 53989.04 21795.36 20098.10 4770.51 45798.64 19287.10 31299.18 10698.67 130
dtuonlycased90.11 32690.39 31589.28 41197.09 17072.61 48685.75 47695.27 32281.57 41394.42 25394.89 31990.47 20596.81 40078.74 43495.27 43898.41 164
test_yl90.11 32689.73 33391.26 33194.09 38379.82 35790.44 34092.65 40490.90 16493.19 31293.30 38973.90 43398.03 29182.23 39096.87 37095.93 384
DCV-MVSNet90.11 32689.73 33391.26 33194.09 38379.82 35790.44 34092.65 40490.90 16493.19 31293.30 38973.90 43398.03 29182.23 39096.87 37095.93 384
Patchmtry90.11 32689.92 32690.66 36690.35 49577.00 43292.96 21692.81 39890.25 18794.74 24496.93 16967.11 47197.52 34585.17 34598.98 13597.46 286
MVP-Stereo90.07 33088.92 34793.54 19996.31 25586.49 20790.93 31895.59 30779.80 43091.48 37895.59 28080.79 35097.39 35878.57 43891.19 51296.76 337
Qingsong Yan: MVP-Stereo: A Parallel Multi-View Patchmatch Stereo Method with Dilation Matching for Photogrammetric Application.
LoFTR90.05 33189.57 33691.50 31493.73 39791.47 9090.72 32889.37 44881.71 40997.13 7996.40 21574.09 43292.38 48484.18 36698.79 17990.63 501
AUN-MVS90.05 33188.30 36595.32 10196.09 28090.52 11292.42 25292.05 42182.08 40388.45 45792.86 40465.76 48198.69 18488.91 26296.07 40496.75 338
CL-MVSNet_self_test90.04 33389.90 32790.47 37295.24 33977.81 41586.60 45992.62 40685.64 32693.25 30793.92 36883.84 31596.06 42579.93 42098.03 29097.53 281
D2MVS89.93 33489.60 33590.92 35294.03 38678.40 40088.69 41594.85 33778.96 44693.08 31895.09 31174.57 42896.94 39188.19 28798.96 14397.41 291
miper_lstm_enhance89.90 33589.80 32990.19 38391.37 46777.50 42183.82 51095.00 33284.84 35393.05 32094.96 31676.53 41995.20 44989.96 22698.67 20597.86 243
SSC-MVS3.289.88 33691.06 29086.31 47795.90 29663.76 53082.68 51592.43 41191.42 15292.37 35094.58 33986.34 28996.60 40684.35 36499.50 4298.57 147
CANet_DTU89.85 33789.17 34191.87 29392.20 43780.02 35190.79 32495.87 29686.02 31182.53 51991.77 44480.01 35798.57 20785.66 33997.70 32197.01 319
tttt051789.81 33888.90 34992.55 25897.00 17879.73 36495.03 12383.65 50589.88 19795.30 20394.79 32853.64 51999.39 5491.99 14598.79 17998.54 149
EPNet89.80 33988.25 36994.45 15583.91 53986.18 22093.87 17587.07 47191.16 16080.64 53194.72 33078.83 37098.89 14185.17 34598.89 15798.28 181
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
ALIKED-LG89.78 34088.57 35793.39 20993.97 38795.11 1194.30 15395.57 31079.81 42993.27 30394.93 31872.44 44292.52 48375.11 47397.77 31292.53 483
SP-MNN89.68 34189.55 33790.06 38890.43 49488.06 16689.60 37992.13 41886.42 30089.57 43292.55 41778.14 38687.91 51790.35 20596.74 37994.22 447
CDS-MVSNet89.55 34288.22 37293.53 20195.37 33586.49 20789.26 39393.59 38179.76 43291.15 39092.31 42877.12 40398.38 24077.51 44597.92 30595.71 395
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
MG-MVS89.54 34389.80 32988.76 42494.88 35172.47 48989.60 37992.44 41085.82 32189.48 43395.98 25782.85 32897.74 32981.87 39495.27 43896.08 377
OpenMVS_ROBcopyleft85.12 1689.52 34489.05 34390.92 35294.58 36981.21 32891.10 31193.41 38977.03 46193.41 29393.99 36683.23 32197.80 31879.93 42094.80 45493.74 460
test_vis1_n_192089.45 34589.85 32888.28 43893.59 39976.71 44290.67 33297.78 14179.67 43490.30 41396.11 24876.62 41792.17 48690.31 20893.57 48295.96 382
WB-MVS89.44 34692.15 25581.32 51497.73 12348.22 55089.73 37587.98 46295.24 4796.05 15296.99 16485.18 30496.95 39082.45 38897.97 29998.78 111
DPM-MVS89.35 34788.40 36192.18 28096.13 27784.20 26186.96 44696.15 28875.40 47287.36 47691.55 45183.30 32098.01 29582.17 39296.62 38494.32 445
MVSTER89.32 34888.75 35291.03 34390.10 50076.62 44390.85 32194.67 34882.27 40095.24 21495.79 26661.09 50598.49 22490.49 19798.26 25997.97 221
usedtu_dtu_shiyan189.18 34988.59 35590.95 35094.75 35977.79 41686.25 46694.63 35081.61 41190.88 39592.24 43077.03 40698.08 28182.62 38297.27 34796.97 322
FE-MVSNET389.18 34988.59 35590.95 35094.75 35977.79 41686.25 46694.63 35081.61 41190.88 39592.25 42977.03 40698.08 28182.62 38297.27 34796.97 322
PatchMatch-RL89.18 34988.02 37792.64 24995.90 29692.87 6288.67 41791.06 43280.34 42590.03 42191.67 44783.34 31894.42 46376.35 45994.84 45390.64 500
jason89.17 35288.32 36491.70 30395.73 31080.07 34788.10 42293.22 39171.98 49890.09 41592.79 40878.53 37798.56 21187.43 30797.06 36096.46 353
jason: jason.
PCF-MVS84.52 1789.12 35387.71 38193.34 21196.06 28385.84 23286.58 46097.31 19068.46 52193.61 28693.89 37087.51 26598.52 22167.85 52098.11 27995.66 399
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
mvsany_test389.11 35488.21 37391.83 29591.30 46890.25 11588.09 42378.76 53776.37 46596.43 12298.39 3883.79 31690.43 49886.57 32294.20 47094.80 431
usedtu_blend_shiyan589.08 35588.33 36391.34 32591.29 46979.59 36794.02 16697.13 20690.07 19390.09 41583.30 52572.25 44598.10 27981.45 40195.32 43296.33 359
FE-MVS89.06 35688.29 36691.36 32494.78 35779.57 37196.77 2990.99 43384.87 35292.96 32596.29 22760.69 50798.80 15980.18 41597.11 35595.71 395
ELoFTR89.04 35788.72 35389.99 39194.38 37689.08 13790.15 35689.10 44975.60 46995.85 16496.52 20675.00 42689.26 50883.82 37298.08 28391.61 491
cl2289.02 35888.50 35990.59 37089.76 50476.45 44586.62 45894.03 36482.98 38992.65 33692.49 42072.05 44997.53 34488.93 26097.02 36297.78 256
USDC89.02 35889.08 34288.84 42395.07 34874.50 46688.97 40196.39 27173.21 48993.27 30396.28 22982.16 33796.39 41577.55 44498.80 17695.62 402
test_vis1_n89.01 36089.01 34589.03 41692.57 42482.46 30392.62 24096.06 28973.02 49190.40 40895.77 27174.86 42789.68 50290.78 18894.98 44794.95 424
xiu_mvs_v2_base89.00 36189.19 34088.46 43694.86 35374.63 46386.97 44595.60 30380.88 42187.83 46888.62 48891.04 18998.81 15682.51 38794.38 46491.93 487
new-patchmatchnet88.97 36290.79 30183.50 50594.28 37855.83 54585.34 48593.56 38386.18 30895.47 19295.73 27383.10 32396.51 40985.40 34298.06 28798.16 196
pmmvs488.95 36387.70 38292.70 24694.30 37785.60 23887.22 44092.16 41674.62 47789.75 42994.19 35777.97 39096.41 41482.71 38096.36 39396.09 376
N_pmnet88.90 36487.25 39493.83 18394.40 37593.81 4484.73 49187.09 46979.36 44093.26 30592.43 42479.29 36591.68 48977.50 44697.22 35196.00 380
PS-MVSNAJ88.86 36588.99 34688.48 43594.88 35174.71 46186.69 45595.60 30380.88 42187.83 46887.37 50090.77 19698.82 15182.52 38694.37 46591.93 487
Patchmatch-RL test88.81 36688.52 35889.69 40095.33 33779.94 35486.22 46992.71 40278.46 45095.80 16694.18 35866.25 47995.33 44589.22 25098.53 22293.78 458
SD_040388.79 36788.88 35088.51 43395.89 29872.58 48794.27 15495.24 32483.77 37487.92 46794.38 35187.70 25996.47 41266.36 52594.40 46296.49 350
Anonymous2023120688.77 36888.29 36690.20 38296.31 25578.81 39589.56 38293.49 38674.26 48292.38 34895.58 28382.21 33595.43 44172.07 50098.75 18896.34 358
PVSNet_Blended88.74 36988.16 37590.46 37494.81 35578.80 39686.64 45696.93 22074.67 47688.68 45489.18 48486.27 29198.15 27280.27 41296.00 40694.44 442
test_fmvs1_n88.73 37088.38 36289.76 39692.06 44482.53 30192.30 26296.59 25971.14 50492.58 33995.41 29568.55 46589.57 50491.12 17895.66 41897.18 308
thisisatest053088.69 37187.52 38492.20 27696.33 25379.36 37992.81 22884.01 50286.44 29893.67 28492.68 41353.62 52099.25 8989.65 23798.45 23398.00 213
ppachtmachnet_test88.61 37288.64 35488.50 43491.76 45470.99 49684.59 49892.98 39579.30 44292.38 34893.53 38579.57 36297.45 35186.50 32797.17 35397.07 314
UnsupCasMVSNet_bld88.50 37388.03 37689.90 39295.52 32678.88 39287.39 43794.02 36679.32 44193.06 31994.02 36480.72 35194.27 46675.16 47293.08 49596.54 342
MonoMVSNet88.46 37489.28 33985.98 47990.52 48970.07 50295.31 10994.81 34188.38 24193.47 29296.13 24573.21 43795.07 45082.61 38489.12 52092.81 478
blended_shiyan888.43 37587.44 38691.40 32192.37 42979.45 37587.43 43593.92 37282.51 39691.24 38785.42 51374.35 42998.23 26084.43 36295.28 43796.52 345
ALIKED-MNN88.42 37687.16 39892.21 27593.47 40193.93 3592.87 22795.20 32671.10 50587.62 47293.76 37677.41 39791.34 49174.50 48098.53 22291.36 492
blended_shiyan688.42 37687.43 38791.40 32192.37 42979.43 37787.41 43693.91 37382.51 39691.17 38885.44 51274.34 43098.24 25884.38 36395.32 43296.53 344
miper_enhance_ethall88.42 37687.87 37990.07 38588.67 51875.52 45685.10 48695.59 30775.68 46792.49 34189.45 48078.96 36797.88 30887.86 30197.02 36296.81 333
1112_ss88.42 37687.41 38991.45 31796.69 20680.99 33189.72 37696.72 24673.37 48787.00 47990.69 46577.38 39998.20 26381.38 40393.72 48095.15 415
lupinMVS88.34 38087.31 39191.45 31794.74 36280.06 34887.23 43992.27 41371.10 50588.83 44491.15 45477.02 40898.53 21886.67 32096.75 37795.76 393
test_cas_vis1_n_192088.25 38188.27 36888.20 44192.19 43878.92 39089.45 38695.44 31475.29 47593.23 30895.65 27971.58 45290.23 49988.05 29493.55 48495.44 407
SP-NN88.21 38287.96 37888.97 41889.33 51287.99 16888.06 42490.93 43585.48 33584.50 49891.11 45677.25 40284.79 53590.55 19494.42 46194.14 448
YYNet188.17 38388.24 37087.93 44792.21 43673.62 47680.75 52488.77 45182.51 39694.99 23495.11 30982.70 33193.70 47183.33 37493.83 47896.48 351
MDA-MVSNet_test_wron88.16 38488.23 37187.93 44792.22 43573.71 47580.71 52588.84 45082.52 39594.88 23995.14 30782.70 33193.61 47383.28 37593.80 47996.46 353
gbinet_0.2-2-1-0.0288.14 38586.86 40891.99 29090.70 48480.51 33687.36 43893.01 39483.45 37690.38 40982.42 53172.73 44098.54 21485.40 34296.27 39796.90 326
MS-PatchMatch88.05 38687.75 38088.95 41993.28 40677.93 41187.88 42692.49 40975.42 47192.57 34093.59 38380.44 35394.24 46881.28 40492.75 49894.69 437
SIFT-NCM-Cal87.99 38787.39 39089.77 39592.16 44193.98 3486.51 46382.96 51485.99 31291.10 39292.99 39780.00 35887.11 52477.21 44897.60 32988.22 512
SIFT-UMatch87.96 38887.52 38489.29 40991.48 46492.84 6385.46 48383.94 50387.47 27191.86 36992.92 40176.78 41687.35 52179.73 42398.00 29687.69 516
SIFT-ConvMatch87.94 38987.21 39590.11 38491.67 45993.60 4985.55 48183.12 51286.48 29692.15 36192.98 39978.11 38788.58 51376.60 45598.25 26188.14 514
SIFT-UM-Cal87.93 39087.42 38889.44 40490.95 47992.71 6684.33 50288.32 45586.32 30190.41 40792.73 41178.78 37188.31 51476.83 45398.16 27387.31 520
CR-MVSNet87.89 39187.12 40190.22 38091.01 47778.93 38892.52 24492.81 39873.08 49089.10 43996.93 16967.11 47197.64 33788.80 26792.70 49994.08 449
pmmvs587.87 39287.14 39990.07 38593.26 40876.97 43588.89 40392.18 41473.71 48588.36 45893.89 37076.86 41596.73 40380.32 41196.81 37496.51 346
wuyk23d87.83 39390.79 30178.96 52190.46 49388.63 14792.72 23290.67 43991.65 14098.68 1497.64 8996.06 1977.53 54359.84 53699.41 6070.73 541
FMVSNet587.82 39486.56 41791.62 30792.31 43279.81 35993.49 19394.81 34183.26 37991.36 38096.93 16952.77 52297.49 34976.07 46298.03 29097.55 280
SIFT-MNN87.81 39587.11 40289.90 39292.19 43893.62 4886.73 45484.68 49687.19 27990.95 39492.80 40773.54 43687.09 52778.62 43797.32 34588.98 508
GA-MVS87.70 39686.82 40990.31 37693.27 40777.22 42984.72 49492.79 40085.11 34589.82 42590.07 46866.80 47497.76 32684.56 35994.27 46895.96 382
TR-MVS87.70 39687.17 39789.27 41294.11 38279.26 38288.69 41591.86 42481.94 40490.69 40289.79 47382.82 32997.42 35572.65 49891.98 50791.14 495
thres600view787.66 39887.10 40389.36 40896.05 28473.17 47892.72 23285.31 49091.89 12293.29 30190.97 45963.42 49698.39 23673.23 49396.99 36796.51 346
PAPR87.65 39986.77 41190.27 37892.85 42077.38 42588.56 41896.23 28076.82 46484.98 49589.75 47586.08 29397.16 37972.33 49993.35 48796.26 367
baseline187.62 40087.31 39188.54 43194.71 36574.27 46993.10 20988.20 45886.20 30692.18 36093.04 39573.21 43795.52 43579.32 42985.82 52995.83 390
test_fmvs187.59 40187.27 39388.54 43188.32 51981.26 32590.43 34395.72 30070.55 51191.70 37294.63 33568.13 46689.42 50690.59 19295.34 43194.94 426
our_test_387.55 40287.59 38387.44 45591.76 45470.48 49783.83 50990.55 44179.79 43192.06 36692.17 43478.63 37695.63 43384.77 35694.73 45596.22 370
wanda-best-256-51287.53 40386.39 42390.97 34891.29 46978.39 40285.63 47993.75 37581.91 40590.09 41583.30 52572.25 44598.18 26683.96 36895.32 43296.33 359
FE-blended-shiyan787.53 40386.39 42390.97 34891.29 46978.39 40285.63 47993.75 37581.91 40590.09 41583.30 52572.25 44598.18 26683.96 36895.32 43296.33 359
SIFT-CM-Cal87.51 40586.76 41289.76 39691.48 46493.30 5584.73 49184.04 50185.53 33091.66 37492.58 41677.01 41088.75 51275.29 46898.56 21787.24 521
PatchT87.51 40588.17 37485.55 48390.64 48566.91 51392.02 27286.09 47792.20 11089.05 44397.16 14464.15 49196.37 41789.21 25192.98 49793.37 469
Test_1112_low_res87.50 40786.58 41590.25 37996.80 19577.75 41887.53 43396.25 27869.73 51786.47 48193.61 38275.67 42297.88 30879.95 41893.20 49095.11 419
SCA87.43 40887.21 39588.10 44392.01 44671.98 49189.43 38788.11 46082.26 40188.71 45192.83 40578.65 37497.59 34079.61 42693.30 48894.75 434
EU-MVSNet87.39 40986.71 41389.44 40493.40 40476.11 44994.93 12790.00 44357.17 54195.71 17897.37 11564.77 48897.68 33392.67 12594.37 46594.52 439
thres100view90087.35 41086.89 40788.72 42696.14 27573.09 48093.00 21385.31 49092.13 11493.26 30590.96 46063.42 49698.28 25071.27 50796.54 38794.79 432
SIFT-NCMNet87.31 41187.07 40488.02 44490.01 50291.85 8282.65 51689.57 44686.52 29593.34 29892.51 41978.05 38986.22 53271.95 50198.98 13586.01 529
CMPMVSbinary68.83 2287.28 41285.67 43292.09 28488.77 51785.42 24290.31 35194.38 35470.02 51488.00 46493.30 38973.78 43594.03 47075.96 46496.54 38796.83 332
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
sss87.23 41386.82 40988.46 43693.96 38877.94 41086.84 44992.78 40177.59 45587.61 47491.83 44378.75 37291.92 48877.84 44194.20 47095.52 406
BH-w/o87.21 41487.02 40587.79 45294.77 35877.27 42887.90 42593.21 39381.74 40889.99 42288.39 49183.47 31796.93 39371.29 50692.43 50389.15 506
thres40087.20 41586.52 41989.24 41495.77 30772.94 48291.89 28186.00 47890.84 16692.61 33789.80 47163.93 49298.28 25071.27 50796.54 38796.51 346
CHOSEN 1792x268887.19 41685.92 42991.00 34697.13 16779.41 37884.51 49995.60 30364.14 53490.07 42094.81 32578.26 38197.14 38073.34 49295.38 42996.46 353
HyFIR lowres test87.19 41685.51 43692.24 27397.12 16980.51 33685.03 48796.06 28966.11 52991.66 37492.98 39970.12 45899.14 10175.29 46895.23 44097.07 314
reproduce_monomvs87.13 41886.90 40687.84 45190.92 48068.15 50891.19 30793.75 37585.84 32094.21 26195.83 26442.99 53997.10 38189.46 24097.88 30798.26 184
MIMVSNet87.13 41886.54 41888.89 42296.05 28476.11 44994.39 14888.51 45381.37 41688.27 46096.75 18672.38 44495.52 43565.71 52795.47 42495.03 421
tfpn200view987.05 42086.52 41988.67 42795.77 30772.94 48291.89 28186.00 47890.84 16692.61 33789.80 47163.93 49298.28 25071.27 50796.54 38794.79 432
SIFT-PCN-Cal87.04 42186.65 41488.22 44090.09 50190.20 11683.84 50885.36 48885.16 34291.83 37091.84 44278.22 38387.02 52874.79 47698.71 19887.44 518
SIFT-PointCN87.02 42286.47 42288.65 42990.27 49791.47 9083.91 50684.08 50084.84 35391.35 38192.24 43075.25 42587.29 52377.11 45199.20 10187.20 523
cascas87.02 42286.28 42689.25 41391.56 46376.45 44584.33 50296.78 24071.01 50786.89 48085.91 50881.35 34596.94 39183.09 37795.60 42094.35 444
WTY-MVS86.93 42486.50 42188.24 43994.96 34974.64 46287.19 44192.07 42078.29 45188.32 45991.59 44978.06 38894.27 46674.88 47593.15 49295.80 391
ttmdpeth86.91 42586.57 41687.91 44989.68 50674.24 47091.49 29887.09 46979.84 42889.46 43497.86 7365.42 48391.04 49381.57 39996.74 37998.44 159
HY-MVS82.50 1886.81 42685.93 42889.47 40393.63 39877.93 41194.02 16691.58 43075.68 46783.64 50993.64 37977.40 39897.42 35571.70 50492.07 50693.05 474
test_f86.65 42787.13 40085.19 48790.28 49686.11 22286.52 46291.66 42769.76 51695.73 17797.21 14169.51 46181.28 54189.15 25494.40 46288.17 513
SIFT-NN-CMatch86.64 42885.79 43089.18 41591.21 47293.07 5684.60 49780.33 53284.07 36789.10 43991.58 45078.69 37387.33 52275.28 47097.28 34687.13 524
SIFT-NN-PointCN86.59 42985.79 43088.99 41790.15 49892.46 7284.96 48982.76 51683.11 38588.70 45292.34 42777.62 39287.10 52575.03 47497.44 33987.42 519
SIFT-NN-NCMNet86.55 43085.56 43589.51 40191.84 45394.02 3085.72 47781.31 52484.33 36486.13 48591.77 44479.22 36687.46 51974.06 48895.70 41787.07 525
131486.46 43186.33 42586.87 46691.65 46074.54 46491.94 27794.10 36374.28 48184.78 49787.33 50183.03 32595.00 45178.72 43591.16 51391.06 496
SIFT-NN-UMatch86.43 43285.66 43388.76 42490.73 48392.76 6584.99 48881.25 52584.13 36688.17 46292.04 43776.90 41286.62 52976.34 46096.36 39386.91 526
ET-MVSNet_ETH3D86.15 43384.27 44691.79 29793.04 41481.28 32487.17 44286.14 47679.57 43583.65 50888.66 48657.10 51298.18 26687.74 30295.40 42795.90 387
Patchmatch-test86.10 43486.01 42786.38 47590.63 48674.22 47189.57 38186.69 47285.73 32489.81 42692.83 40565.24 48691.04 49377.82 44395.78 41493.88 457
ALIKED-NN85.96 43584.14 44891.44 31991.73 45693.37 5290.32 34993.65 37867.84 52382.08 52192.92 40172.88 43990.01 50069.17 51696.64 38290.93 497
thres20085.85 43685.18 43887.88 45094.44 37372.52 48889.08 39986.21 47588.57 23691.44 37988.40 49064.22 49098.00 29768.35 51895.88 41293.12 471
MatchFormer85.84 43785.60 43486.56 47090.63 48687.98 17089.85 36983.79 50472.98 49295.69 18294.88 32269.40 46287.92 51674.60 47798.55 21883.77 533
EPNet_dtu85.63 43884.37 44489.40 40786.30 53074.33 46891.64 29388.26 45684.84 35372.96 54289.85 46971.27 45497.69 33276.60 45597.62 32696.18 372
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
test_vis1_rt85.58 43984.58 44288.60 43087.97 52086.76 19985.45 48493.59 38166.43 52787.64 47189.20 48379.33 36485.38 53481.59 39889.98 51993.66 462
test250685.42 44084.57 44387.96 44597.81 11666.53 51696.14 7056.35 55089.04 21793.55 28898.10 4742.88 54298.68 18688.09 29399.18 10698.67 130
PatchmatchNetpermissive85.22 44184.64 44186.98 46289.51 51069.83 50490.52 33687.34 46878.87 44787.22 47892.74 41066.91 47396.53 40781.77 39586.88 52794.58 438
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
CVMVSNet85.16 44284.72 44086.48 47192.12 44270.19 49892.32 25988.17 45956.15 54290.64 40395.85 26167.97 46996.69 40488.78 26890.52 51692.56 481
JIA-IIPM85.08 44383.04 45991.19 33787.56 52286.14 22189.40 38984.44 49988.98 21982.20 52097.95 6156.82 51496.15 42176.55 45883.45 53391.30 494
MVS84.98 44484.30 44587.01 46191.03 47677.69 42091.94 27794.16 36159.36 54084.23 50387.50 49985.66 29896.80 40171.79 50293.05 49686.54 528
Syy-MVS84.81 44584.93 43984.42 49591.71 45763.36 53285.89 47281.49 52181.03 41885.13 49281.64 53377.44 39695.00 45185.94 33694.12 47394.91 427
MVStest184.79 44684.06 45086.98 46277.73 55074.76 46091.08 31385.63 48377.70 45496.86 9597.97 5941.05 54688.24 51592.22 13896.28 39697.94 225
thisisatest051584.72 44782.99 46189.90 39292.96 41775.33 45884.36 50183.42 50777.37 45788.27 46086.65 50253.94 51898.72 17482.56 38597.40 34295.67 398
dmvs_re84.69 44883.94 45286.95 46492.24 43482.93 29089.51 38387.37 46784.38 36385.37 48985.08 51772.44 44286.59 53068.05 51991.03 51591.33 493
FPMVS84.50 44983.28 45788.16 44296.32 25494.49 2085.76 47585.47 48783.09 38685.20 49194.26 35363.79 49486.58 53163.72 53191.88 50983.40 534
dtuonly84.38 45085.24 43781.80 51287.13 52658.46 54281.58 52292.71 40274.41 47985.68 48892.62 41578.17 38592.13 48779.15 43295.73 41594.82 429
tpm84.38 45084.08 44985.30 48690.47 49263.43 53189.34 39085.63 48377.24 46087.62 47295.03 31461.00 50697.30 36279.26 43091.09 51495.16 414
tpmvs84.22 45283.97 45184.94 48987.09 52765.18 52391.21 30688.35 45482.87 39085.21 49090.96 46065.24 48696.75 40279.60 42885.25 53092.90 477
WB-MVSnew84.20 45383.89 45385.16 48891.62 46166.15 52088.44 42181.00 52776.23 46687.98 46587.77 49584.98 30793.35 47662.85 53494.10 47595.98 381
SIFT-NN84.10 45483.04 45987.28 45890.76 48292.16 7684.45 50081.34 52383.54 37583.80 50789.75 47570.08 45982.09 54068.68 51794.96 44887.60 517
ADS-MVSNet284.01 45582.20 46889.41 40689.04 51476.37 44787.57 42990.98 43472.71 49584.46 49992.45 42168.08 46796.48 41070.58 51283.97 53195.38 408
WBMVS84.00 45683.48 45585.56 48292.71 42161.52 53483.82 51089.38 44779.56 43690.74 40093.20 39348.21 52597.28 36375.63 46698.10 28197.88 239
testing3-283.95 45784.22 44783.13 50796.28 25854.34 54888.51 41983.01 51392.19 11189.09 44290.98 45845.51 53197.44 35274.38 48398.01 29397.60 274
mvsany_test183.91 45882.93 46286.84 46786.18 53185.93 22981.11 52375.03 54470.80 51088.57 45694.63 33583.08 32487.38 52080.39 41086.57 52887.21 522
testing383.66 45982.52 46487.08 45995.84 30065.84 52189.80 37477.17 54388.17 25090.84 39888.63 48730.95 55198.11 27684.05 36797.19 35297.28 303
test-LLR83.58 46083.17 45884.79 49189.68 50666.86 51483.08 51284.52 49783.07 38782.85 51584.78 51862.86 49993.49 47482.85 37894.86 45194.03 452
testing9183.56 46182.45 46586.91 46592.92 41867.29 51086.33 46588.07 46186.22 30584.26 50285.76 50948.15 52697.17 37776.27 46194.08 47696.27 366
baseline283.38 46281.54 47388.90 42191.38 46672.84 48488.78 41081.22 52678.97 44579.82 53387.56 49661.73 50397.80 31874.30 48590.05 51896.05 379
blend_shiyan483.29 46380.66 48291.19 33791.86 45079.59 36787.05 44493.91 37382.66 39289.60 43183.36 52442.82 54498.10 27981.45 40173.26 54395.87 389
IB-MVS77.21 1983.11 46481.05 47689.29 40991.15 47375.85 45285.66 47886.00 47879.70 43382.02 52486.61 50348.26 52498.39 23677.84 44192.22 50493.63 463
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
CostFormer83.09 46582.21 46785.73 48089.27 51367.01 51290.35 34686.47 47470.42 51283.52 51193.23 39261.18 50496.85 39777.21 44888.26 52493.34 470
PMMVS83.00 46681.11 47588.66 42883.81 54086.44 21082.24 51885.65 48261.75 53982.07 52285.64 51179.75 36191.59 49075.99 46393.09 49487.94 515
testing9982.94 46781.72 47086.59 46892.55 42566.53 51686.08 47185.70 48185.47 33683.95 50585.70 51045.87 53097.07 38576.58 45793.56 48396.17 375
PVSNet76.22 2082.89 46882.37 46684.48 49493.96 38864.38 52878.60 52988.61 45271.50 50284.43 50186.36 50674.27 43194.60 46069.87 51493.69 48194.46 441
tpmrst82.85 46982.93 46282.64 50887.65 52158.99 54190.14 35787.90 46375.54 47083.93 50691.63 44866.79 47695.36 44281.21 40681.54 53793.57 468
MASt3R-SfM82.76 47082.17 46984.53 49383.29 54286.01 22582.08 51980.49 53163.10 53792.22 35794.20 35669.18 46377.62 54279.63 42495.37 43089.94 505
test0.0.03 182.48 47181.47 47485.48 48489.70 50573.57 47784.73 49181.64 52083.07 38788.13 46386.61 50362.86 49989.10 51066.24 52690.29 51793.77 459
ADS-MVSNet82.25 47281.55 47284.34 49689.04 51465.30 52287.57 42985.13 49472.71 49584.46 49992.45 42168.08 46792.33 48570.58 51283.97 53195.38 408
DSMNet-mixed82.21 47381.56 47184.16 49889.57 50970.00 50390.65 33377.66 54154.99 54383.30 51397.57 9377.89 39190.50 49766.86 52495.54 42291.97 486
KD-MVS_2432*160082.17 47480.75 48086.42 47382.04 54470.09 50081.75 52090.80 43782.56 39390.37 41089.30 48142.90 54096.11 42374.47 48192.55 50193.06 472
miper_refine_blended82.17 47480.75 48086.42 47382.04 54470.09 50081.75 52090.80 43782.56 39390.37 41089.30 48142.90 54096.11 42374.47 48192.55 50193.06 472
gg-mvs-nofinetune82.10 47681.02 47785.34 48587.46 52471.04 49494.74 13167.56 54696.44 2879.43 53498.99 1145.24 53296.15 42167.18 52292.17 50588.85 509
testing1181.98 47780.52 48486.38 47592.69 42267.13 51185.79 47484.80 49582.16 40281.19 53085.41 51445.24 53296.88 39674.14 48793.24 48995.14 416
PAPM81.91 47880.11 48987.31 45793.87 39272.32 49084.02 50593.22 39169.47 51876.13 53989.84 47072.15 44897.23 37153.27 54189.02 52192.37 484
tpm281.46 47980.35 48784.80 49089.90 50365.14 52490.44 34085.36 48865.82 53182.05 52392.44 42357.94 51096.69 40470.71 51188.49 52392.56 481
PMMVS281.31 48083.44 45674.92 52490.52 48946.49 55269.19 54085.23 49384.30 36587.95 46694.71 33176.95 41184.36 53964.07 53098.09 28293.89 456
new_pmnet81.22 48181.01 47881.86 51190.92 48070.15 49984.03 50480.25 53470.83 50885.97 48689.78 47467.93 47084.65 53667.44 52191.90 50890.78 499
test-mter81.21 48280.01 49084.79 49189.68 50666.86 51483.08 51284.52 49773.85 48482.85 51584.78 51843.66 53793.49 47482.85 37894.86 45194.03 452
EPMVS81.17 48380.37 48683.58 50485.58 53365.08 52590.31 35171.34 54577.31 45985.80 48791.30 45259.38 50892.70 48279.99 41782.34 53692.96 476
myMVS_eth3d2880.97 48480.42 48582.62 50993.35 40558.25 54384.70 49585.62 48586.31 30284.04 50485.20 51646.00 52994.07 46962.93 53395.65 41995.53 405
EGC-MVSNET80.97 48475.73 50496.67 4598.85 2894.55 1996.83 2496.60 2572.44 5495.32 55198.25 4292.24 14998.02 29491.85 15099.21 9997.45 287
pmmvs380.83 48678.96 49586.45 47287.23 52577.48 42384.87 49082.31 51863.83 53585.03 49489.50 47949.66 52393.10 47773.12 49595.10 44388.78 511
XFeat-MNN80.76 48779.73 49183.85 50279.29 54882.86 29276.90 53283.32 51069.86 51592.27 35587.53 49857.82 51184.65 53674.17 48696.44 39284.03 532
E-PMN80.72 48880.86 47980.29 51785.11 53668.77 50672.96 53681.97 51987.76 26383.25 51483.01 52962.22 50289.17 50977.15 45094.31 46782.93 535
tpm cat180.61 48979.46 49284.07 49988.78 51665.06 52689.26 39388.23 45762.27 53881.90 52589.66 47862.70 50195.29 44671.72 50380.60 53891.86 489
testing22280.54 49078.53 49886.58 46992.54 42768.60 50786.24 46882.72 51783.78 37382.68 51884.24 52039.25 54895.94 42960.25 53595.09 44495.20 412
EMVS80.35 49180.28 48880.54 51684.73 53869.07 50572.54 53880.73 52987.80 26181.66 52681.73 53262.89 49889.84 50175.79 46594.65 45882.71 536
UWE-MVS80.29 49279.10 49383.87 50191.97 44859.56 53986.50 46477.43 54275.40 47287.79 47088.10 49344.08 53696.90 39564.23 52996.36 39395.14 416
UBG80.28 49378.94 49684.31 49792.86 41961.77 53383.87 50783.31 51177.33 45882.78 51783.72 52247.60 52896.06 42565.47 52893.48 48595.11 419
CHOSEN 280x42080.04 49477.97 50286.23 47890.13 49974.53 46572.87 53789.59 44566.38 52876.29 53885.32 51556.96 51395.36 44269.49 51594.72 45688.79 510
ETVMVS79.85 49577.94 50385.59 48192.97 41666.20 51986.13 47080.99 52881.41 41583.52 51183.89 52141.81 54594.98 45456.47 53994.25 46995.61 403
PDCNetPlus79.66 49678.21 50084.01 50079.49 54773.91 47475.29 53496.44 26966.51 52689.20 43791.98 44030.56 55284.51 53875.48 46798.93 14893.62 464
myMVS_eth3d79.62 49778.26 49983.72 50391.71 45761.25 53685.89 47281.49 52181.03 41885.13 49281.64 53332.12 55095.00 45171.17 51094.12 47394.91 427
dp79.28 49878.62 49781.24 51585.97 53256.45 54486.91 44785.26 49272.97 49381.45 52889.17 48556.01 51695.45 44073.19 49476.68 54291.82 490
TESTMET0.1,179.09 49978.04 50182.25 51087.52 52364.03 52983.08 51280.62 53070.28 51380.16 53283.22 52844.13 53590.56 49679.95 41893.36 48692.15 485
MVS-HIRNet78.83 50080.60 48373.51 52593.07 41247.37 55187.10 44378.00 54068.94 51977.53 53697.26 13371.45 45394.62 45963.28 53288.74 52278.55 540
dmvs_testset78.23 50178.99 49475.94 52391.99 44755.34 54788.86 40478.70 53882.69 39181.64 52779.46 53575.93 42085.74 53348.78 54382.85 53586.76 527
0.4-1-1-0.177.15 50273.55 50687.95 44685.49 53475.84 45480.59 52682.87 51573.51 48673.61 54168.65 54142.84 54397.22 37275.20 47179.18 53990.80 498
XFeat-NN75.97 50374.88 50579.25 52077.98 54979.81 35970.81 53979.50 53664.75 53386.32 48382.83 53053.44 52176.70 54466.89 52391.40 51081.23 539
0.4-1-1-0.275.80 50472.05 51087.04 46082.70 54374.17 47277.51 53083.48 50671.80 49971.57 54365.16 54343.07 53896.96 38974.34 48478.78 54090.00 504
0.3-1-1-0.01575.73 50571.83 51187.44 45583.47 54174.98 45978.69 52883.38 50972.24 49770.43 54465.81 54239.55 54797.08 38374.57 47878.30 54190.28 503
UWE-MVS-2874.73 50673.18 50779.35 51985.42 53555.55 54687.63 42765.92 54774.39 48077.33 53788.19 49247.63 52789.48 50539.01 54593.14 49393.03 475
PVSNet_070.34 2174.58 50772.96 50879.47 51890.63 48666.24 51873.26 53583.40 50863.67 53678.02 53578.35 53772.53 44189.59 50356.68 53860.05 54682.57 537
MVEpermissive59.87 2373.86 50872.65 50977.47 52287.00 52974.35 46761.37 54260.93 54967.27 52469.69 54586.49 50581.24 34972.33 54656.45 54083.45 53385.74 530
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
GLUNet-SfM58.71 50956.43 51265.55 52645.28 55359.80 53854.31 54355.90 55137.80 54581.24 52973.75 54038.27 54970.23 54834.22 54787.09 52666.64 542
dongtai53.72 51053.79 51353.51 52979.69 54636.70 55477.18 53132.53 55671.69 50068.63 54660.79 54426.65 55373.11 54530.67 54836.29 54850.73 543
test_method50.44 51148.94 51454.93 52739.68 55412.38 55728.59 54490.09 4426.82 54741.10 55078.41 53654.41 51770.69 54750.12 54251.26 54781.72 538
kuosan43.63 51244.25 51641.78 53066.04 55234.37 55575.56 53332.62 55553.25 54450.46 54951.18 54525.28 55449.13 54913.44 54930.41 54941.84 545
tmp_tt37.97 51344.33 51518.88 53111.80 55521.54 55663.51 54145.66 5544.23 54851.34 54850.48 54659.08 50922.11 55144.50 54468.35 54513.00 546
cdsmvs_eth3d_5k23.35 51431.13 5170.00 5340.00 5580.00 5600.00 54595.58 3090.00 5520.00 55491.15 45493.43 1090.00 5540.00 5520.00 5520.00 549
test1239.49 51512.01 5181.91 5322.87 5561.30 55882.38 5171.34 5581.36 5502.84 5526.56 5492.45 5550.97 5522.73 5505.56 5503.47 547
testmvs9.02 51611.42 5191.81 5332.77 5571.13 55979.44 5271.90 5571.18 5512.65 5536.80 5481.95 5560.87 5532.62 5513.45 5513.44 548
pcd_1.5k_mvsjas7.56 51710.09 5200.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 55290.77 1960.00 5540.00 5520.00 5520.00 549
ab-mvs-re7.56 51710.08 5210.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 55490.69 4650.00 5570.00 5540.00 5520.00 5520.00 549
mmdepth0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
monomultidepth0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
test_blank0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
uanet_test0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
DCPMVS0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
sosnet-low-res0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
sosnet0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
uncertanet0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
Regformer0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
uanet0.00 5190.00 5220.00 5340.00 5580.00 5600.00 5450.00 5590.00 5520.00 5540.00 5520.00 5570.00 5540.00 5520.00 5520.00 549
test-26052497.94 10787.97 17197.94 11596.37 12793.24 11699.34 7094.10 6699.19 102
MED-MVS test95.52 8998.69 3788.21 16196.32 5698.58 1888.79 22597.38 6596.22 23599.39 5492.89 11799.10 11598.96 77
TestfortrainingZip93.68 19095.25 33886.20 21996.32 5696.38 27292.81 9292.13 36393.87 37387.28 26998.61 19695.07 44596.23 369
WAC-MVS61.25 53674.55 479
FOURS199.21 394.68 1698.45 498.81 1097.73 998.27 23
MSC_two_6792asdad95.90 6996.54 22589.57 12496.87 23299.41 4394.06 6799.30 8098.72 121
PC_three_145275.31 47495.87 16395.75 27292.93 13096.34 42087.18 31198.68 20398.04 208
No_MVS95.90 6996.54 22589.57 12496.87 23299.41 4394.06 6799.30 8098.72 121
test_one_060198.26 8087.14 18798.18 6394.25 6196.99 9097.36 12095.13 50
eth-test20.00 558
eth-test0.00 558
ZD-MVS97.23 15890.32 11397.54 16584.40 36294.78 24295.79 26692.76 13699.39 5488.72 27098.40 238
RE-MVS-def96.66 2798.07 9295.27 996.37 5198.12 7695.66 4297.00 8897.03 16095.40 3593.49 8798.84 16498.00 213
IU-MVS98.51 5886.66 20496.83 23772.74 49495.83 16593.00 11399.29 8398.64 138
OPU-MVS95.15 11296.84 19189.43 12895.21 11495.66 27893.12 12198.06 28786.28 33198.61 21197.95 223
test_241102_TWO98.10 8091.95 11897.54 5097.25 13495.37 3699.35 6793.29 10199.25 9198.49 155
test_241102_ONE98.51 5886.97 19298.10 8091.85 12597.63 4597.03 16096.48 1398.95 135
9.1494.81 13297.49 14194.11 16398.37 3487.56 27095.38 19796.03 25294.66 7599.08 11190.70 19098.97 141
save fliter97.46 14588.05 16792.04 27197.08 21087.63 267
test_0728_THIRD93.26 8797.40 6397.35 12394.69 7499.34 7093.88 7299.42 5498.89 91
test_0728_SECOND94.88 12598.55 5386.72 20195.20 11698.22 5899.38 6393.44 9399.31 7898.53 150
test072698.51 5886.69 20295.34 10598.18 6391.85 12597.63 4597.37 11595.58 28
GSMVS94.75 434
test_part298.21 8489.41 12996.72 105
sam_mvs166.64 47794.75 434
sam_mvs66.41 478
ambc92.98 22696.88 18783.01 28995.92 8096.38 27296.41 12497.48 10688.26 24797.80 31889.96 22698.93 14898.12 202
MTGPAbinary97.62 154
test_post190.21 3535.85 55165.36 48496.00 42779.61 426
test_post6.07 55065.74 48295.84 431
patchmatchnet-post91.71 44666.22 48097.59 340
GG-mvs-BLEND83.24 50685.06 53771.03 49594.99 12665.55 54874.09 54075.51 53844.57 53494.46 46259.57 53787.54 52584.24 531
MTMP94.82 12954.62 552
gm-plane-assit87.08 52859.33 54071.22 50383.58 52397.20 37473.95 489
test9_res88.16 29098.40 23897.83 247
TEST996.45 23589.46 12690.60 33496.92 22279.09 44490.49 40494.39 34891.31 17798.88 142
test_896.37 24489.14 13690.51 33796.89 22679.37 43890.42 40694.36 35291.20 18298.82 151
agg_prior287.06 31498.36 24997.98 217
agg_prior96.20 26888.89 14296.88 23190.21 41498.78 164
TestCases96.00 5998.02 9892.17 7498.43 2790.48 18195.04 23196.74 18792.54 14097.86 31285.11 35098.98 13597.98 217
test_prior489.91 11990.74 327
test_prior290.21 35389.33 21190.77 39994.81 32590.41 20788.21 28598.55 218
test_prior94.61 14295.95 29287.23 18497.36 18598.68 18697.93 228
旧先验290.00 36368.65 52092.71 33596.52 40885.15 347
新几何290.02 362
新几何193.17 22297.16 16387.29 18294.43 35367.95 52291.29 38294.94 31786.97 27998.23 26081.06 40897.75 31493.98 454
旧先验196.20 26884.17 26294.82 33995.57 28489.57 22697.89 30696.32 362
无先验89.94 36495.75 29970.81 50998.59 20181.17 40794.81 430
原ACMM289.34 390
原ACMM192.87 23796.91 18584.22 26097.01 21476.84 46389.64 43094.46 34688.00 25498.70 18281.53 40098.01 29395.70 397
test22296.95 18085.27 24588.83 40693.61 38065.09 53290.74 40094.85 32384.62 31097.36 34393.91 455
testdata298.03 29180.24 414
segment_acmp92.14 153
testdata91.03 34396.87 18882.01 30994.28 35771.55 50192.46 34395.42 29285.65 29997.38 36082.64 38197.27 34793.70 461
testdata188.96 40288.44 239
test1294.43 15695.95 29286.75 20096.24 27989.76 42889.79 22498.79 16097.95 30397.75 262
plane_prior797.71 12588.68 146
plane_prior697.21 16188.23 16086.93 280
plane_prior597.81 13598.95 13589.26 24898.51 22798.60 144
plane_prior495.59 280
plane_prior388.43 15790.35 18693.31 299
plane_prior294.56 14391.74 136
plane_prior197.38 149
plane_prior88.12 16493.01 21188.98 21998.06 287
n20.00 559
nn0.00 559
door-mid92.13 418
lessismore_v093.87 18098.05 9483.77 26880.32 53397.13 7997.91 7077.49 39599.11 10992.62 12698.08 28398.74 119
LGP-MVS_train96.84 4198.36 7592.13 7798.25 4691.78 13297.07 8397.22 13996.38 1699.28 8592.07 14299.59 2999.11 54
test1196.65 254
door91.26 431
HQP5-MVS84.89 249
HQP-NCC96.36 24791.37 30087.16 28188.81 446
ACMP_Plane96.36 24791.37 30087.16 28188.81 446
BP-MVS86.55 324
HQP4-MVS88.81 44698.61 19698.15 198
HQP3-MVS97.31 19097.73 316
HQP2-MVS84.76 308
NP-MVS96.82 19387.10 18893.40 387
MDTV_nov1_ep13_2view42.48 55388.45 42067.22 52583.56 51066.80 47472.86 49794.06 451
MDTV_nov1_ep1383.88 45489.42 51161.52 53488.74 41487.41 46673.99 48384.96 49694.01 36565.25 48595.53 43478.02 43993.16 491
ACMMP++_ref98.82 170
ACMMP++99.25 91
Test By Simon90.61 202
ITE_SJBPF95.95 6397.34 15293.36 5496.55 26491.93 12094.82 24095.39 29791.99 15597.08 38385.53 34097.96 30297.41 291
DeepMVS_CXcopyleft53.83 52870.38 55164.56 52748.52 55333.01 54665.50 54774.21 53956.19 51546.64 55038.45 54670.07 54450.30 544