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
indooroutdoorcourty.delive.electrofacadekickermeadowofficepipesplaygr.reliefrelief.terraceterrai.
sort bysort bysort bysort bysort bysort bysort bysorted bysort bysort bysort bysort bysort bysort bysort bysort bysort by
LS3D97.79 5198.25 6597.26 5198.40 5299.63 2999.53 1598.63 199.25 4088.13 12096.93 9294.14 10599.19 3799.14 2799.23 1699.69 7999.42 153
HPM-MVS++99.10 1799.30 2398.86 1999.69 799.48 5699.59 1398.34 299.26 3896.55 3299.10 2399.96 999.36 2599.25 2398.37 6399.64 11799.66 113
APDe-MVS99.49 199.64 199.32 199.74 399.74 399.75 198.34 299.56 998.72 399.57 499.97 399.53 1499.65 299.25 1399.84 599.77 48
APD-MVScopyleft99.25 899.38 1799.09 799.69 799.58 4599.56 1498.32 498.85 8197.87 1498.91 3599.92 2499.30 3099.45 1299.38 899.79 3499.58 129
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
ESAPD99.23 1099.41 1599.01 1499.70 699.69 1199.40 2698.31 598.94 7497.70 1799.40 999.97 399.17 4199.54 798.67 4299.78 3799.67 104
HSP-MVS99.31 399.43 1399.17 299.68 1099.75 299.72 298.31 599.45 1698.16 999.28 1299.98 199.30 3099.34 1998.41 5899.81 2699.81 30
HFP-MVS99.32 299.53 499.07 999.69 799.59 4399.63 1098.31 599.56 997.37 2199.27 1399.97 399.70 399.35 1899.24 1599.71 6999.76 52
MCST-MVS99.11 1699.27 2598.93 1799.67 1199.33 7699.51 1798.31 599.28 3396.57 3199.10 2399.90 2799.71 299.19 2498.35 6599.82 1399.71 84
SD-MVS99.25 899.50 698.96 1698.79 4799.55 5099.33 2998.29 999.75 197.96 1399.15 1999.95 1499.61 599.17 2599.06 2299.81 2699.84 20
ACMMP_Plus99.05 2199.45 898.58 2699.73 499.60 4199.64 898.28 1099.23 4294.57 5799.35 1199.97 399.55 1299.63 398.66 4399.70 7799.74 64
MPTG99.31 399.44 1199.16 499.73 499.65 2099.63 1098.26 1199.27 3598.01 1299.27 1399.97 399.60 699.59 598.58 4999.71 6999.73 68
ACMMPR99.30 599.54 399.03 1299.66 1399.64 2599.68 598.25 1299.56 997.12 2599.19 1699.95 1499.72 199.43 1399.25 1399.72 6099.77 48
MP-MVScopyleft99.07 1999.36 1998.74 2399.63 1699.57 4799.66 798.25 1299.00 6995.62 3798.97 2899.94 2299.54 1399.51 998.79 4099.71 6999.73 68
CNVR-MVS99.23 1099.28 2499.17 299.65 1599.34 7499.46 2198.21 1499.28 3398.47 598.89 3799.94 2299.50 1599.42 1498.61 4699.73 5599.52 140
NCCC99.05 2199.08 3399.02 1399.62 1799.38 6799.43 2598.21 1499.36 2397.66 1897.79 7099.90 2799.45 2099.17 2598.43 5599.77 4299.51 144
CP-MVS99.27 699.44 1199.08 899.62 1799.58 4599.53 1598.16 1699.21 4597.79 1599.15 1999.96 999.59 899.54 798.86 3599.78 3799.74 64
AdaColmapbinary99.06 2098.98 4399.15 599.60 1999.30 8099.38 2798.16 1699.02 6898.55 498.71 4399.57 4899.58 1199.09 2997.84 9199.64 11799.36 157
X-MVS98.93 2599.37 1898.42 2799.67 1199.62 3399.60 1298.15 1899.08 5993.81 7998.46 5399.95 1499.59 899.49 1099.21 1899.68 8899.75 61
DeepC-MVS97.63 498.33 4298.57 5398.04 3698.62 5099.65 2099.45 2298.15 1899.51 1492.80 9295.74 12396.44 7799.46 1999.37 1699.50 299.78 3799.81 30
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
PCF-MVS97.50 698.18 4598.35 6197.99 3798.65 4999.36 7098.94 4798.14 2098.59 10393.62 8296.61 10099.76 4199.03 5797.77 11797.45 11299.57 15398.89 181
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
TSAR-MVS + ACMM98.77 2999.45 897.98 3899.37 3199.46 5899.44 2498.13 2199.65 492.30 9598.91 3599.95 1499.05 5599.42 1498.95 2899.58 14999.82 25
SteuartSystems-ACMMP99.20 1299.51 598.83 2299.66 1399.66 1999.71 498.12 2299.14 5296.62 2999.16 1899.98 199.12 4999.63 399.19 1999.78 3799.83 24
Skip Steuart: Steuart Systems R&D Blog.
TSAR-MVS + MP.99.27 699.57 298.92 1898.78 4899.53 5199.72 298.11 2399.73 297.43 2099.15 1999.96 999.59 899.73 199.07 2199.88 199.82 25
MSLP-MVS++99.15 1499.24 2699.04 1199.52 2699.49 5599.09 4098.07 2499.37 2198.47 597.79 7099.89 2999.50 1598.93 3899.45 499.61 13299.76 52
DeepC-MVS_fast98.34 199.17 1399.45 898.85 2099.55 2399.37 6999.64 898.05 2599.53 1296.58 3098.93 3099.92 2499.49 1799.46 1199.32 1099.80 3399.64 120
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
CNLPA99.03 2399.05 3699.01 1499.27 3899.22 9099.03 4497.98 2699.34 2899.00 298.25 5999.71 4299.31 2998.80 4798.82 3899.48 16699.17 166
train_agg98.73 3199.11 3198.28 3199.36 3399.35 7299.48 2097.96 2798.83 8493.86 7898.70 4499.86 3299.44 2199.08 3198.38 6199.61 13299.58 129
PLCcopyleft97.93 299.02 2498.94 4499.11 699.46 2899.24 8899.06 4297.96 2799.31 3099.16 197.90 6899.79 3999.36 2598.71 5598.12 7899.65 10699.52 140
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
MSDG98.27 4398.29 6498.24 3299.20 3999.22 9099.20 3397.82 2999.37 2194.43 6495.90 11897.31 6999.12 4998.76 5198.35 6599.67 9599.14 170
CPTT-MVS99.14 1599.20 2899.06 1099.58 2099.53 5199.45 2297.80 3099.19 4898.32 898.58 4799.95 1499.60 699.28 2298.20 7599.64 11799.69 92
ACMMPcopyleft98.74 3099.03 4098.40 2899.36 3399.64 2599.20 3397.75 3198.82 8695.24 4598.85 3899.87 3199.17 4198.74 5497.50 10899.71 6999.76 52
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
DeepPCF-MVS97.74 398.34 4199.46 797.04 5898.82 4699.33 7696.28 13497.47 3299.58 794.70 5698.99 2799.85 3597.24 10699.55 699.34 997.73 21099.56 135
PHI-MVS99.08 1899.43 1398.67 2499.15 4099.59 4399.11 3897.35 3399.14 5297.30 2299.44 899.96 999.32 2898.89 4299.39 799.79 3499.58 129
TAPA-MVS97.53 598.41 3998.84 4997.91 3999.08 4299.33 7699.15 3697.13 3499.34 2893.20 8697.75 7299.19 5199.20 3598.66 5798.13 7799.66 10099.48 149
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
OMC-MVS98.84 2899.01 4298.65 2599.39 3099.23 8999.22 3296.70 3599.40 1897.77 1697.89 6999.80 3799.21 3499.02 3398.65 4499.57 15399.07 173
CSCG98.90 2698.93 4598.85 2099.75 299.72 499.49 1896.58 3699.38 1998.05 1198.97 2897.87 6399.49 1797.78 11698.92 3099.78 3799.90 3
TSAR-MVS + COLMAP96.79 8096.55 11397.06 5797.70 6398.46 13299.07 4196.23 3799.38 1991.32 10398.80 3985.61 15498.69 6597.64 12596.92 12399.37 17999.06 174
CDPH-MVS98.41 3999.10 3297.61 4499.32 3799.36 7099.49 1896.15 3898.82 8691.82 9898.41 5499.66 4499.10 5298.93 3898.97 2799.75 4599.58 129
PGM-MVS98.86 2799.35 2298.29 3099.77 199.63 2999.67 695.63 3998.66 10195.27 4499.11 2299.82 3699.67 499.33 2099.19 1999.73 5599.74 64
OPM-MVS96.22 10395.85 13696.65 7697.75 6198.54 12999.00 4695.53 4096.88 17789.88 11495.95 11786.46 14798.07 8697.65 12496.63 12999.67 9598.83 184
MVS_111021_LR98.67 3399.41 1597.81 4199.37 3199.53 5198.51 5995.52 4199.27 3594.85 5399.56 599.69 4399.04 5699.36 1798.88 3399.60 13999.58 129
COLMAP_ROBcopyleft96.15 1297.78 5298.17 7097.32 4798.84 4599.45 6099.28 3095.43 4299.48 1591.80 9994.83 13598.36 6098.90 6098.09 9697.85 9099.68 8899.15 167
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
HQP-MVS96.37 9796.58 11196.13 8897.31 7098.44 13598.45 6195.22 4398.86 7988.58 11898.33 5787.00 13697.67 9797.23 13796.56 13299.56 15699.62 123
ACMM96.26 996.67 9196.69 11096.66 7597.29 7198.46 13296.48 13195.09 4499.21 4593.19 8798.78 4186.73 14398.17 8297.84 11496.32 13899.74 4999.49 148
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
PVSNet_BlendedMVS97.51 6197.71 8497.28 4998.06 5699.61 3797.31 10795.02 4599.08 5995.51 4098.05 6390.11 12598.07 8698.91 4098.40 5999.72 6099.78 41
PVSNet_Blended97.51 6197.71 8497.28 4998.06 5699.61 3797.31 10795.02 4599.08 5995.51 4098.05 6390.11 12598.07 8698.91 4098.40 5999.72 6099.78 41
abl_698.09 3599.33 3699.22 9098.79 5294.96 4798.52 11097.00 2797.30 8099.86 3298.76 6299.69 7999.41 154
MVS_111021_HR98.59 3799.36 1997.68 4299.42 2999.61 3798.14 8194.81 4899.31 3095.00 5099.51 699.79 3999.00 5998.94 3798.83 3799.69 7999.57 134
QAPM98.62 3699.04 3998.13 3499.57 2199.48 5699.17 3594.78 4999.57 896.16 3496.73 9699.80 3799.33 2798.79 4899.29 1299.75 4599.64 120
EPNet98.05 4798.86 4797.10 5499.02 4399.43 6398.47 6094.73 5099.05 6595.62 3798.93 3097.62 6795.48 15698.59 6798.55 5099.29 18499.84 20
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
CANet98.46 3899.16 2997.64 4398.48 5199.64 2599.35 2894.71 5199.53 1295.17 4697.63 7699.59 4698.38 7598.88 4398.99 2699.74 4999.86 15
3Dnovator96.92 798.67 3399.05 3698.23 3399.57 2199.45 6099.11 3894.66 5299.69 396.80 2896.55 10499.61 4599.40 2398.87 4499.49 399.85 499.66 113
3Dnovator+96.92 798.71 3299.05 3698.32 2999.53 2499.34 7499.06 4294.61 5399.65 497.49 1996.75 9499.86 3299.44 2198.78 4999.30 1199.81 2699.67 104
OpenMVScopyleft96.23 1197.95 4998.45 5797.35 4699.52 2699.42 6498.91 4894.61 5398.87 7892.24 9694.61 13799.05 5399.10 5298.64 6199.05 2399.74 4999.51 144
TSAR-MVS + GP.98.66 3599.36 1997.85 4097.16 7499.46 5899.03 4494.59 5599.09 5797.19 2499.73 399.95 1499.39 2498.95 3698.69 4199.75 4599.65 116
DELS-MVS98.19 4498.77 5097.52 4598.29 5499.71 899.12 3794.58 5698.80 8995.38 4396.24 11098.24 6197.92 9099.06 3299.52 199.82 1399.79 39
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
CLD-MVS96.74 8496.51 11697.01 6596.71 7998.62 12498.73 5394.38 5798.94 7494.46 6397.33 7887.03 13598.07 8697.20 13996.87 12499.72 6099.54 137
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
MVS_030498.14 4699.03 4097.10 5498.05 5899.63 2999.27 3194.33 5899.63 693.06 8997.32 7999.05 5398.09 8598.82 4698.87 3499.81 2699.89 7
ACMP96.25 1096.62 9496.72 10996.50 8196.96 7798.75 11597.80 9494.30 5998.85 8193.12 8898.78 4186.61 14597.23 10797.73 12096.61 13099.62 12999.71 84
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
thresconf0.0297.18 7197.81 8296.45 8296.11 9899.20 9398.21 7794.26 6099.14 5291.72 10098.65 4591.51 12298.57 6998.22 8998.47 5399.82 1399.50 146
EPNet_dtu96.30 10198.53 5593.70 12298.97 4498.24 14697.36 10594.23 6198.85 8179.18 19099.19 1698.47 5894.09 19397.89 11198.21 7498.39 20098.85 183
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
conf0.00296.31 10095.63 13997.11 5396.29 9099.64 2598.41 6394.11 6297.35 15394.86 5295.49 13081.06 20399.14 4498.14 9398.02 8399.82 1399.69 92
conf0.0196.35 9895.71 13797.10 5496.30 8999.65 2098.41 6394.10 6397.35 15394.82 5495.44 13181.88 19899.14 4498.16 9297.80 9399.82 1399.69 92
PatchMatch-RL97.77 5398.25 6597.21 5299.11 4199.25 8697.06 12094.09 6498.72 9995.14 4798.47 5296.29 7998.43 7398.65 5897.44 11399.45 17098.94 176
thres100view90096.72 8596.47 12097.00 6796.31 8399.52 5498.28 7694.01 6597.35 15394.52 5895.90 11886.93 13799.09 5498.07 9997.87 8999.81 2699.63 122
thres40096.71 8696.45 12397.02 6396.28 9399.63 2998.41 6394.00 6697.82 14394.42 6595.74 12386.26 14899.18 3998.20 9097.79 9799.81 2699.70 86
tfpn11196.96 7896.91 10697.03 5996.31 8399.67 1398.41 6393.99 6797.35 15394.50 6098.65 4586.93 13799.14 4498.26 8397.80 9399.82 1399.70 86
conf200view1196.75 8296.51 11697.03 5996.31 8399.67 1398.41 6393.99 6797.35 15394.50 6095.90 11886.93 13799.14 4498.26 8397.80 9399.82 1399.70 86
tfpn200view996.75 8296.51 11697.03 5996.31 8399.67 1398.41 6393.99 6797.35 15394.52 5895.90 11886.93 13799.14 4498.26 8397.80 9399.82 1399.70 86
view60096.70 8796.44 12597.01 6596.28 9399.67 1398.42 6293.99 6797.87 13894.34 6895.99 11585.94 15199.20 3598.26 8397.64 10199.82 1399.73 68
thres600view796.69 8996.43 12797.00 6796.28 9399.67 1398.41 6393.99 6797.85 14194.29 7095.96 11685.91 15299.19 3798.26 8397.63 10299.82 1399.73 68
thres20096.76 8196.53 11497.03 5996.31 8399.67 1398.37 7193.99 6797.68 14894.49 6295.83 12286.77 14299.18 3998.26 8397.82 9299.82 1399.66 113
tfpnview1197.32 6698.33 6296.14 8796.07 9999.31 7998.08 8593.96 7399.25 4090.50 10898.93 3094.24 10298.38 7598.61 6398.36 6499.84 599.59 127
view80096.70 8796.45 12396.99 6996.29 9099.69 1198.39 7093.95 7497.92 13594.25 7196.23 11185.57 15599.22 3298.28 8197.71 9999.82 1399.76 52
tfpn_ndepth97.71 5598.30 6397.02 6396.31 8399.56 4898.05 8693.94 7598.95 7195.59 3998.40 5594.79 9598.39 7498.40 7798.42 5699.86 299.56 135
tfpn96.22 10395.62 14096.93 7196.29 9099.72 498.34 7493.94 7597.96 13293.94 7496.45 10679.09 21399.22 3298.28 8198.06 8099.83 999.78 41
tfpn100097.60 5998.21 6896.89 7296.32 8299.60 4197.99 8993.85 7799.21 4595.03 4998.49 5093.69 10998.31 7898.50 7298.31 7199.86 299.70 86
tfpn_n40097.32 6698.38 5996.09 8996.07 9999.30 8098.00 8793.84 7899.35 2590.50 10898.93 3094.24 10298.30 7998.65 5898.60 4799.83 999.60 125
tfpnconf97.32 6698.38 5996.09 8996.07 9999.30 8098.00 8793.84 7899.35 2590.50 10898.93 3094.24 10298.30 7998.65 5898.60 4799.83 999.60 125
RPSCF97.61 5898.16 7196.96 7098.10 5599.00 9798.84 5093.76 8099.45 1694.78 5599.39 1099.31 5098.53 7196.61 14995.43 15997.74 20897.93 199
PVSNet_Blended_VisFu97.41 6498.49 5696.15 8697.49 6499.76 196.02 13793.75 8199.26 3893.38 8593.73 14399.35 4996.47 12998.96 3598.46 5499.77 4299.90 3
LGP-MVS_train96.23 10296.89 10795.46 10197.32 6898.77 11298.81 5193.60 8298.58 10485.52 13699.08 2586.67 14497.83 9697.87 11297.51 10799.69 7999.73 68
conf0.05thres100096.34 9996.47 12096.17 8596.16 9799.71 897.82 9293.46 8398.10 12490.69 10596.75 9485.26 15999.11 5198.05 10397.65 10099.82 1399.80 32
FC-MVSNet-train97.04 7497.91 8196.03 9196.00 10498.41 13896.53 13093.42 8499.04 6793.02 9098.03 6594.32 10097.47 10297.93 10997.77 9899.75 4599.88 11
UGNet97.66 5799.07 3596.01 9297.19 7399.65 2097.09 11893.39 8599.35 2594.40 6698.79 4099.59 4694.24 19198.04 10598.29 7299.73 5599.80 32
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
IB-MVS93.96 1595.02 12696.44 12593.36 13297.05 7699.28 8390.43 21093.39 8598.02 12796.02 3594.92 13492.07 11983.52 22295.38 17695.82 15299.72 6099.59 127
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
IS_MVSNet97.86 5098.86 4796.68 7496.02 10299.72 498.35 7393.37 8798.75 9894.01 7296.88 9398.40 5998.48 7299.09 2999.42 599.83 999.80 32
Vis-MVSNet (Re-imp)97.40 6598.89 4695.66 9995.99 10599.62 3397.82 9293.22 8898.82 8691.40 10296.94 9198.56 5795.70 14599.14 2799.41 699.79 3499.75 61
EPP-MVSNet97.75 5498.71 5196.63 7795.68 11499.56 4897.51 10193.10 8999.22 4394.99 5197.18 8597.30 7098.65 6698.83 4598.93 2999.84 599.92 1
PMMVS97.52 6098.39 5896.51 8095.82 11198.73 11897.80 9493.05 9098.76 9694.39 6799.07 2697.03 7398.55 7098.31 8097.61 10399.43 17399.21 165
CVMVSNet95.33 12297.09 10293.27 13495.23 12698.39 14095.49 14692.58 9197.71 14783.00 15194.44 13993.28 11293.92 19797.79 11598.54 5299.41 17699.45 151
DI_MVS_plusplus_trai96.90 7997.49 9096.21 8395.61 11699.40 6698.72 5492.11 9299.14 5292.98 9193.08 15395.14 9098.13 8498.05 10397.91 8799.74 4999.73 68
MVSTER97.16 7297.71 8496.52 7995.97 10698.48 13198.63 5692.10 9398.68 10095.96 3699.23 1591.79 12096.87 11698.76 5197.37 11699.57 15399.68 99
UA-Net97.13 7399.14 3094.78 10697.21 7299.38 6797.56 9992.04 9498.48 11188.03 12198.39 5699.91 2694.03 19499.33 2099.23 1699.81 2699.25 162
UniMVSNet_NR-MVSNet94.59 13495.47 14293.55 12691.85 17497.89 15795.03 15392.00 9597.33 15986.12 13193.19 14987.29 13396.60 12596.12 16796.70 12799.72 6099.80 32
TranMVSNet+NR-MVSNet93.67 15194.14 16393.13 13591.28 20397.58 17895.60 14491.97 9697.06 16884.05 13990.64 16382.22 19396.17 13594.94 20096.78 12599.69 7999.78 41
tfpnnormal93.85 14994.12 16593.54 12793.22 15198.24 14695.45 14791.96 9794.61 21583.91 14090.74 16081.75 20097.04 11097.49 13096.16 14499.68 8899.84 20
TDRefinement93.04 16293.57 18792.41 14296.58 8098.77 11297.78 9691.96 9798.12 12380.84 16289.13 17979.87 21087.78 21396.44 15594.50 19899.54 16198.15 194
CDS-MVSNet96.59 9598.02 7794.92 10594.45 13698.96 10297.46 10391.75 9997.86 14090.07 11296.02 11497.25 7196.21 13298.04 10598.38 6199.60 13999.65 116
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
MAR-MVS97.71 5598.04 7597.32 4799.35 3598.91 10497.65 9891.68 10098.00 12897.01 2697.72 7494.83 9398.85 6198.44 7598.86 3599.41 17699.52 140
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
ACMH95.42 1495.27 12395.96 13294.45 11096.83 7898.78 11194.72 17791.67 10198.95 7186.82 13096.42 10783.67 17197.00 11197.48 13196.68 12899.69 7999.76 52
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
canonicalmvs97.31 6997.81 8296.72 7396.20 9699.45 6098.21 7791.60 10299.22 4395.39 4298.48 5190.95 12399.16 4397.66 12299.05 2399.76 4499.90 3
DU-MVS93.98 14494.44 15993.44 12991.66 18997.77 15995.03 15391.57 10397.17 16486.12 13193.13 15181.13 20296.60 12595.10 19697.01 12299.67 9599.80 32
NR-MVSNet94.01 14294.51 15793.44 12992.56 15697.77 15995.67 14191.57 10397.17 16485.84 13493.13 15180.53 20595.29 17597.01 14496.17 14399.69 7999.75 61
TransMVSNet (Re)93.45 15394.08 16792.72 14192.83 15297.62 17694.94 15691.54 10595.65 21183.06 15088.93 18083.53 17294.25 19097.41 13297.03 12099.67 9598.40 192
Baseline_NR-MVSNet93.87 14793.98 17193.75 11991.66 18997.02 19695.53 14591.52 10697.16 16687.77 12487.93 20083.69 17096.35 13095.10 19697.23 11799.68 8899.73 68
MVS_Test97.30 7098.54 5495.87 9395.74 11299.28 8398.19 7991.40 10799.18 4991.59 10198.17 6196.18 8098.63 6898.61 6398.55 5099.66 10099.78 41
GBi-Net96.98 7698.00 7895.78 9493.81 14397.98 15198.09 8291.32 10898.80 8993.92 7597.21 8295.94 8497.89 9198.07 9998.34 6799.68 8899.67 104
test196.98 7698.00 7895.78 9493.81 14397.98 15198.09 8291.32 10898.80 8993.92 7597.21 8295.94 8497.89 9198.07 9998.34 6799.68 8899.67 104
FMVSNet397.02 7598.12 7395.73 9893.59 14997.98 15198.34 7491.32 10898.80 8993.92 7597.21 8295.94 8497.63 9898.61 6398.62 4599.61 13299.65 116
ACMH+95.51 1395.40 11896.00 13094.70 10796.33 8198.79 10996.79 12391.32 10898.77 9587.18 12795.60 12885.46 15696.97 11297.15 14096.59 13199.59 14599.65 116
UniMVSNet (Re)94.58 13595.34 14393.71 12192.25 16198.08 15094.97 15591.29 11297.03 17087.94 12293.97 14286.25 14996.07 13796.27 16495.97 14999.72 6099.79 39
diffmvs97.50 6398.63 5296.18 8495.88 10899.26 8598.19 7991.08 11399.36 2394.32 6998.24 6096.83 7498.22 8198.45 7398.42 5699.42 17599.86 15
FMVSNet296.64 9297.50 8995.63 10093.81 14397.98 15198.09 8290.87 11498.99 7093.48 8393.17 15095.25 8997.89 9198.63 6298.80 3999.68 8899.67 104
Vis-MVSNetpermissive96.16 10598.22 6793.75 11995.33 12599.70 1097.27 10990.85 11598.30 11685.51 13795.72 12596.45 7593.69 20098.70 5699.00 2599.84 599.69 92
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
test-LLR95.50 11697.32 9693.37 13195.49 11998.74 11696.44 13290.82 11698.18 12082.75 15296.60 10194.67 9795.54 15298.09 9696.00 14699.20 18798.93 177
test0.0.03 196.69 8998.12 7395.01 10495.49 11998.99 9995.86 13990.82 11698.38 11492.54 9496.66 9897.33 6895.75 14397.75 11998.34 6799.60 13999.40 155
CHOSEN 1792x268896.41 9696.99 10595.74 9798.01 5999.72 497.70 9790.78 11899.13 5690.03 11387.35 20295.36 8898.33 7798.59 6798.91 3299.59 14599.87 13
pm-mvs194.27 13895.57 14192.75 14092.58 15598.13 14994.87 16290.71 11996.70 18383.78 14289.94 17289.85 12894.96 18297.58 12797.07 11999.61 13299.72 80
GA-MVS93.93 14696.31 12991.16 17693.61 14798.79 10995.39 14990.69 12098.25 11873.28 21396.15 11288.42 13094.39 18997.76 11895.35 16399.58 14999.45 151
v14892.36 18792.88 20391.75 16291.63 19297.66 17192.64 20190.55 12196.09 20183.34 14788.19 19380.00 20892.74 20493.98 20694.58 19799.58 14999.69 92
v114192.79 17093.61 18491.84 16191.75 18297.71 16294.74 17590.33 12296.58 19079.21 18988.59 18782.53 18995.36 16995.16 18994.96 18599.63 12399.72 80
divwei89l23v2f11292.80 16893.60 18691.86 16091.75 18297.71 16294.75 17490.32 12396.54 19279.35 18688.59 18782.55 18895.35 17095.15 19394.96 18599.63 12399.72 80
v192.81 16693.57 18791.94 15591.79 17997.70 16594.80 16890.32 12396.52 19379.75 17988.47 19082.46 19095.32 17295.14 19594.96 18599.63 12399.73 68
v2v48292.77 17293.52 19191.90 15891.59 19497.63 17394.57 18690.31 12596.80 18179.22 18888.74 18481.55 20196.04 13995.26 17894.97 18499.66 10099.69 92
pmmvs495.09 12495.90 13394.14 11392.29 15997.70 16595.45 14790.31 12598.60 10290.70 10493.25 14889.90 12796.67 12297.13 14195.42 16099.44 17299.28 160
FC-MVSNet-test96.07 10797.94 8093.89 11693.60 14898.67 12196.62 12790.30 12798.76 9688.62 11795.57 12997.63 6694.48 18797.97 10797.48 11199.71 6999.52 140
v693.11 15893.98 17192.10 14892.01 16797.71 16294.86 16590.15 12896.96 17380.47 16890.01 16783.26 17595.48 15695.17 18595.01 17899.64 11799.76 52
v1neww93.06 15993.94 17392.03 15191.99 16897.70 16594.79 16990.14 12996.93 17580.13 17389.97 16983.01 17995.48 15695.16 18995.01 17899.63 12399.76 52
v7new93.06 15993.94 17392.03 15191.99 16897.70 16594.79 16990.14 12996.93 17580.13 17389.97 16983.01 17995.48 15695.16 18995.01 17899.63 12399.76 52
DWT-MVSNet_training95.38 11995.05 14695.78 9495.86 10998.88 10597.55 10090.09 13198.23 11996.49 3397.62 7786.92 14197.16 10892.03 21994.12 20097.52 21497.50 202
CANet_DTU96.64 9299.08 3393.81 11897.10 7599.42 6498.85 4990.01 13299.31 3079.98 17699.78 299.10 5297.42 10398.35 7898.05 8199.47 16899.53 138
WR-MVS93.43 15594.48 15892.21 14591.52 19697.69 16994.66 18189.98 13396.86 17883.43 14690.12 16485.03 16193.94 19696.02 17095.82 15299.71 6999.82 25
V4293.05 16193.90 17792.04 15091.91 17197.66 17194.91 15789.91 13496.85 17980.58 16689.66 17483.43 17495.37 16895.03 19994.90 18999.59 14599.78 41
FMVSNet195.77 11196.41 12895.03 10393.42 15097.86 15897.11 11789.89 13598.53 10892.00 9789.17 17793.23 11398.15 8398.07 9998.34 6799.61 13299.69 92
PEN-MVS92.72 17393.20 19992.15 14791.29 20197.31 19394.67 18089.81 13696.19 19981.83 15888.58 18979.06 21495.61 15095.21 18296.27 13999.72 6099.82 25
DTE-MVSNet92.42 18492.85 20591.91 15790.87 20696.97 19794.53 18789.81 13695.86 20881.59 15988.83 18277.88 21795.01 18194.34 20596.35 13799.64 11799.73 68
CHOSEN 280x42097.99 4899.24 2696.53 7898.34 5399.61 3798.36 7289.80 13899.27 3595.08 4899.81 198.58 5698.64 6799.02 3398.92 3098.93 19299.48 149
N_pmnet92.21 19294.60 15489.42 20191.88 17297.38 19189.15 21589.74 13997.89 13773.75 21187.94 19992.23 11893.85 19896.10 16893.20 20798.15 20497.43 205
MDA-MVSNet-bldmvs87.84 21589.22 21686.23 21181.74 22896.77 20083.74 22389.57 14094.50 21772.83 21596.64 9964.47 22892.71 20581.43 22992.28 21796.81 22498.47 189
TAMVS95.53 11596.50 11994.39 11193.86 14299.03 9696.67 12589.55 14197.33 15990.64 10693.02 15491.58 12196.21 13297.72 12197.43 11499.43 17399.36 157
DeepMVS_CXcopyleft96.85 19887.43 21889.27 14298.30 11675.55 20695.05 13279.47 21192.62 20689.48 22595.18 22995.96 218
CP-MVSNet93.25 15694.00 17092.38 14391.65 19197.56 17994.38 18889.20 14396.05 20383.16 14989.51 17581.97 19796.16 13696.43 15696.56 13299.71 6999.89 7
IterMVS-LS96.12 10697.48 9194.53 10895.19 12797.56 17997.15 11489.19 14499.08 5988.23 11994.97 13394.73 9697.84 9597.86 11398.26 7399.60 13999.88 11
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
PS-CasMVS92.72 17393.36 19391.98 15491.62 19397.52 18294.13 19288.98 14595.94 20681.51 16087.35 20279.95 20995.91 14196.37 15896.49 13499.70 7799.89 7
HyFIR lowres test95.99 10896.56 11295.32 10297.99 6099.65 2096.54 12888.86 14698.44 11289.77 11684.14 21497.05 7299.03 5798.55 6998.19 7699.73 5599.86 15
TinyColmap94.00 14394.35 16193.60 12395.89 10798.26 14497.49 10288.82 14798.56 10683.21 14891.28 15880.48 20696.68 12197.34 13496.26 14199.53 16298.24 193
WR-MVS_H93.54 15294.67 15392.22 14491.95 17097.91 15694.58 18588.75 14896.64 18783.88 14190.66 16285.13 16094.40 18896.54 15495.91 15199.73 5599.89 7
EU-MVSNet92.80 16894.76 15290.51 19191.88 17296.74 20192.48 20288.69 14996.21 19879.00 19191.51 15587.82 13191.83 20895.87 17296.27 13999.21 18698.92 180
USDC94.26 13994.83 15093.59 12496.02 10298.44 13597.84 9188.65 15098.86 7982.73 15494.02 14080.56 20496.76 11997.28 13696.15 14599.55 15798.50 188
SixPastTwentyTwo93.44 15495.32 14491.24 17492.11 16498.40 13992.77 20088.64 15198.09 12577.83 19593.51 14585.74 15396.52 12896.91 14694.89 19199.59 14599.73 68
testgi95.67 11397.48 9193.56 12595.07 12999.00 9795.33 15088.47 15298.80 8986.90 12997.30 8092.33 11795.97 14097.66 12297.91 8799.60 13999.38 156
v114492.81 16694.03 16991.40 16991.68 18897.60 17794.73 17688.40 15396.71 18278.48 19388.14 19684.46 16695.45 16396.31 16395.22 16799.65 10699.76 52
pmmvs691.90 19992.53 20991.17 17591.81 17797.63 17393.23 19688.37 15493.43 22080.61 16577.32 22487.47 13294.12 19296.58 15195.72 15598.88 19499.53 138
Effi-MVS+95.81 11097.31 9994.06 11495.09 12899.35 7297.24 11188.22 15598.54 10785.38 13898.52 4888.68 12998.70 6498.32 7997.93 8599.74 4999.84 20
v892.87 16493.87 17891.72 16492.05 16697.50 18494.79 16988.20 15696.85 17980.11 17590.01 16782.86 18495.48 15695.15 19394.90 18999.66 10099.80 32
v792.97 16394.11 16691.65 16591.83 17597.55 18194.86 16588.19 15796.96 17379.72 18188.16 19484.68 16495.63 14796.33 16195.30 16599.65 10699.77 48
Effi-MVS+-dtu95.74 11298.04 7593.06 13693.92 13999.16 9497.90 9088.16 15899.07 6482.02 15798.02 6694.32 10096.74 12098.53 7097.56 10599.61 13299.62 123
v119292.43 18293.61 18491.05 17791.53 19597.43 18894.61 18387.99 15996.60 18876.72 20187.11 20482.74 18595.85 14296.35 16095.30 16599.60 13999.74 64
v74891.12 20291.95 21090.16 19590.60 20997.35 19291.11 20587.92 16094.75 21480.54 16786.26 21175.97 21991.13 21094.63 20394.81 19299.65 10699.90 3
LTVRE_ROB93.20 1692.84 16594.92 14790.43 19392.83 15298.63 12397.08 11987.87 16197.91 13668.42 22093.54 14479.46 21296.62 12497.55 12897.40 11599.74 4999.92 1
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
CMPMVSbinary70.31 1890.74 20491.06 21290.36 19497.32 6897.43 18892.97 19987.82 16293.50 21975.34 20883.27 21784.90 16292.19 20792.64 21491.21 22396.50 22594.46 220
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
v192192092.36 18793.57 18790.94 18291.39 19997.39 19094.70 17887.63 16396.60 18876.63 20286.98 20582.89 18395.75 14396.26 16595.14 17099.55 15799.73 68
v14419292.38 18593.55 19091.00 18091.44 19797.47 18794.27 18987.41 16496.52 19378.03 19487.50 20182.65 18695.32 17295.82 17395.15 16999.55 15799.78 41
FMVSNet595.42 11796.47 12094.20 11292.26 16095.99 20495.66 14287.15 16597.87 13893.46 8496.68 9793.79 10897.52 9997.10 14397.21 11899.11 19096.62 217
v5291.94 19793.10 20090.57 18990.62 20897.50 18493.98 19387.02 16695.86 20877.67 19786.93 20682.16 19594.53 18594.71 20294.70 19599.61 13299.85 18
V491.92 19893.10 20090.55 19090.64 20797.51 18393.93 19487.02 16695.81 21077.61 19886.93 20682.19 19494.50 18694.72 20194.68 19699.62 12999.85 18
MS-PatchMatch95.99 10897.26 10094.51 10997.46 6598.76 11497.27 10986.97 16899.09 5789.83 11593.51 14597.78 6496.18 13497.53 12995.71 15699.35 18098.41 190
Fast-Effi-MVS+95.38 11996.52 11594.05 11594.15 13899.14 9597.24 11186.79 16998.53 10887.62 12594.51 13887.06 13498.76 6298.60 6698.04 8299.72 6099.77 48
v124091.99 19693.33 19490.44 19291.29 20197.30 19494.25 19086.79 16996.43 19775.49 20786.34 21081.85 19995.29 17596.42 15795.22 16799.52 16399.73 68
TESTMET0.1,194.95 12797.32 9692.20 14692.62 15498.74 11696.44 13286.67 17198.18 12082.75 15296.60 10194.67 9795.54 15298.09 9696.00 14699.20 18798.93 177
pmmvs592.71 17594.27 16290.90 18391.42 19897.74 16193.23 19686.66 17295.99 20578.96 19291.45 15683.44 17395.55 15197.30 13595.05 17299.58 14998.93 177
Anonymous2023120690.70 20593.93 17586.92 21090.21 21396.79 19990.30 21286.61 17396.05 20369.25 21888.46 19184.86 16385.86 21797.11 14296.47 13599.30 18397.80 201
pmmvs-eth3d89.81 20889.65 21590.00 19786.94 21895.38 21591.08 20686.39 17494.57 21682.27 15683.03 21864.94 22693.96 19596.57 15293.82 20399.35 18099.24 163
test-mter94.86 12897.32 9692.00 15392.41 15898.82 10896.18 13686.35 17598.05 12682.28 15596.48 10594.39 9995.46 16298.17 9196.20 14299.32 18299.13 171
v1092.79 17094.06 16891.31 17291.78 18097.29 19594.87 16286.10 17696.97 17279.82 17888.16 19484.56 16595.63 14796.33 16195.31 16499.65 10699.80 32
MIMVSNet188.61 21390.68 21386.19 21281.56 22995.30 21787.78 21785.98 17794.19 21872.30 21678.84 22378.90 21590.06 21196.59 15095.47 15899.46 16995.49 219
v7n91.61 20192.95 20290.04 19690.56 21097.69 16993.74 19585.59 17895.89 20776.95 20086.60 20978.60 21693.76 19997.01 14494.99 18399.65 10699.87 13
test20.0390.65 20693.71 18187.09 20890.44 21196.24 20289.74 21485.46 17995.59 21272.99 21490.68 16185.33 15784.41 22095.94 17195.10 17199.52 16397.06 210
v1892.63 17793.67 18291.43 16792.13 16295.65 20595.09 15285.44 18097.06 16880.78 16390.06 16583.06 17795.47 16195.16 18995.01 17899.64 11799.67 104
v1792.55 17893.65 18391.27 17392.11 16495.63 20694.89 15885.15 18197.12 16780.39 17290.02 16683.02 17895.45 16395.17 18594.92 18899.66 10099.68 99
v1692.66 17693.80 17991.32 17192.13 16295.62 20794.89 15885.12 18297.20 16280.66 16489.96 17183.93 16995.49 15595.17 18595.04 17399.63 12399.68 99
anonymousdsp93.12 15795.86 13589.93 19991.09 20498.25 14595.12 15185.08 18397.44 15173.30 21290.89 15990.78 12495.25 17797.91 11095.96 15099.71 6999.82 25
IterMVS94.81 12997.71 8491.42 16894.83 13497.63 17397.38 10485.08 18398.93 7675.67 20594.02 14097.64 6596.66 12398.45 7397.60 10498.90 19399.72 80
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
Fast-Effi-MVS+-dtu95.38 11998.20 6992.09 14993.91 14098.87 10697.35 10685.01 18599.08 5981.09 16198.10 6296.36 7895.62 14998.43 7697.03 12099.55 15799.50 146
v1592.27 19093.33 19491.04 17891.83 17595.60 20894.79 16984.88 18696.66 18579.66 18288.72 18582.45 19195.40 16695.19 18495.00 18299.65 10699.67 104
V1492.31 18993.41 19291.03 17991.80 17895.59 21094.79 16984.70 18796.58 19079.83 17788.79 18382.98 18195.41 16595.22 17995.02 17799.65 10699.67 104
new_pmnet90.45 20792.84 20687.66 20788.96 21496.16 20388.71 21684.66 18897.56 14971.91 21785.60 21386.58 14693.28 20196.07 16993.54 20598.46 19894.39 221
EG-PatchMatch MVS92.45 18093.92 17690.72 18892.56 15698.43 13794.88 16184.54 18997.18 16379.55 18486.12 21283.23 17693.15 20397.22 13896.00 14699.67 9599.27 161
PM-MVS89.55 20990.30 21488.67 20587.06 21795.60 20890.88 20884.51 19096.14 20075.75 20486.89 20863.47 22994.64 18396.85 14793.89 20299.17 18999.29 159
V992.24 19193.32 19690.98 18191.76 18195.58 21294.83 16784.50 19196.68 18479.73 18088.66 18682.39 19295.39 16795.22 17995.03 17599.65 10699.67 104
new-patchmatchnet86.12 21687.30 21784.74 21486.92 21995.19 21983.57 22484.42 19292.67 22165.66 22380.32 22164.72 22789.41 21292.33 21889.21 22498.43 19996.69 215
v1292.18 19393.29 19790.88 18491.70 18795.59 21094.61 18384.36 19396.65 18679.59 18388.85 18182.03 19695.35 17095.22 17995.04 17399.65 10699.68 99
Anonymous2023121183.86 21783.39 22384.40 21685.29 22193.44 22386.29 22184.24 19485.55 23068.63 21961.25 23059.57 23284.33 22192.50 21592.52 21397.65 21298.89 181
testus88.77 21292.77 20884.10 21788.24 21593.95 22087.16 21984.24 19497.37 15261.54 23095.70 12673.10 22284.90 21995.56 17595.82 15298.51 19697.88 200
v1392.16 19493.28 19890.85 18691.75 18295.58 21294.65 18284.23 19696.49 19679.51 18588.40 19282.58 18795.31 17495.21 18295.03 17599.66 10099.68 99
FPMVS83.82 21884.61 22282.90 21990.39 21290.71 22590.85 20984.10 19795.47 21365.15 22483.44 21574.46 22175.48 22481.63 22879.42 23091.42 23187.14 229
v1192.43 18293.77 18090.85 18691.72 18695.58 21294.87 16284.07 19896.98 17179.28 18788.03 19784.22 16895.53 15496.55 15395.36 16299.65 10699.70 86
MDTV_nov1_ep1395.57 11497.48 9193.35 13395.43 12198.97 10197.19 11383.72 19998.92 7787.91 12397.75 7296.12 8297.88 9496.84 14895.64 15797.96 20698.10 195
test235688.81 21192.86 20484.09 21887.85 21693.46 22287.07 22083.60 20096.50 19562.08 22997.06 8775.04 22085.17 21895.08 19895.42 16098.75 19597.46 203
gm-plane-assit89.44 21092.82 20785.49 21391.37 20095.34 21679.55 22782.12 20191.68 22364.79 22687.98 19880.26 20795.66 14698.51 7197.56 10599.45 17098.41 190
pmmvs388.19 21491.27 21184.60 21585.60 22093.66 22185.68 22281.13 20292.36 22263.66 22889.51 17577.10 21893.22 20296.37 15892.40 21598.30 20297.46 203
tpm cat194.06 14194.90 14893.06 13695.42 12398.52 13096.64 12680.67 20397.82 14392.63 9393.39 14795.00 9196.06 13891.36 22391.58 22296.98 22396.66 216
CostFormer94.25 14094.88 14993.51 12895.43 12198.34 14296.21 13580.64 20497.94 13494.01 7298.30 5886.20 15097.52 9992.71 21192.69 21197.23 22298.02 198
tpmp4_e2393.84 15094.58 15692.98 13895.41 12498.29 14396.81 12280.57 20598.15 12290.53 10797.00 8884.39 16796.91 11493.69 20792.45 21497.67 21198.06 196
PMVScopyleft72.60 1776.39 22577.66 22774.92 22681.04 23069.37 23868.47 23480.54 20685.39 23165.07 22573.52 22772.91 22365.67 23280.35 23076.81 23188.71 23385.25 233
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
dps94.63 13395.31 14593.84 11795.53 11798.71 11996.54 12880.12 20797.81 14597.21 2396.98 8992.37 11696.34 13192.46 21691.77 22097.26 22097.08 209
EPMVS95.05 12596.86 10892.94 13995.84 11098.96 10296.68 12479.87 20899.05 6590.15 11197.12 8695.99 8397.49 10195.17 18594.75 19497.59 21396.96 211
testmv81.83 22086.26 21876.66 22384.10 22289.42 22874.29 23179.65 20990.61 22451.85 23582.11 21963.06 23172.61 22791.94 22092.75 20997.49 21593.94 223
test123567881.83 22086.26 21876.66 22384.10 22289.41 22974.29 23179.64 21090.60 22551.84 23682.11 21963.07 23072.61 22791.94 22092.75 20997.49 21593.94 223
MDTV_nov1_ep13_2view92.44 18195.66 13888.68 20491.05 20597.92 15592.17 20379.64 21098.83 8476.20 20391.45 15693.51 11095.04 18095.68 17493.70 20497.96 20698.53 187
PatchmatchNetpermissive94.70 13097.08 10391.92 15695.53 11798.85 10795.77 14079.54 21298.95 7185.98 13398.52 4896.45 7597.39 10495.32 17794.09 20197.32 21897.38 206
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
tpmrst93.86 14895.88 13491.50 16695.69 11398.62 12495.64 14379.41 21398.80 8983.76 14495.63 12796.13 8197.25 10592.92 21092.31 21697.27 21996.74 214
test1235680.53 22384.80 22175.54 22582.31 22588.05 23275.99 22879.31 21488.53 22653.24 23483.30 21656.38 23365.16 23390.87 22493.10 20897.25 22193.34 226
CR-MVSNet94.57 13697.34 9591.33 17094.90 13298.59 12697.15 11479.14 21597.98 12980.42 16996.59 10393.50 11196.85 11798.10 9497.49 10999.50 16599.15 167
Patchmtry98.59 12697.15 11479.14 21580.42 169
ADS-MVSNet94.65 13297.04 10491.88 15995.68 11498.99 9995.89 13879.03 21799.15 5085.81 13596.96 9098.21 6297.10 10994.48 20494.24 19997.74 20897.21 207
tpm92.38 18594.79 15189.56 20094.30 13797.50 18494.24 19178.97 21897.72 14674.93 20997.97 6782.91 18296.60 12593.65 20994.81 19298.33 20198.98 175
MIMVSNet94.49 13797.59 8890.87 18591.74 18598.70 12094.68 17978.73 21997.98 12983.71 14597.71 7594.81 9496.96 11397.97 10797.92 8699.40 17898.04 197
PatchT93.96 14597.36 9490.00 19794.76 13598.65 12290.11 21378.57 22097.96 13280.42 16996.07 11394.10 10696.85 11798.10 9497.49 10999.26 18599.15 167
RPMNet94.66 13197.16 10191.75 16294.98 13098.59 12697.00 12178.37 22197.98 12983.78 14296.27 10994.09 10796.91 11497.36 13396.73 12699.48 16699.09 172
LP92.12 19594.60 15489.22 20294.96 13198.45 13493.01 19877.58 22297.85 14177.26 19989.80 17393.00 11494.54 18493.69 20792.58 21298.00 20596.83 213
E-PMN68.30 22868.43 22968.15 22874.70 23471.56 23755.64 23677.24 22377.48 23439.46 23851.95 23441.68 23873.28 22670.65 23279.51 22988.61 23486.20 232
EMVS68.12 22968.11 23068.14 22975.51 23371.76 23655.38 23777.20 22477.78 23337.79 23953.59 23243.61 23674.72 22567.05 23476.70 23288.27 23586.24 231
PMMVS277.26 22479.47 22674.70 22776.00 23288.37 23174.22 23376.34 22578.31 23254.13 23269.96 22852.50 23570.14 23084.83 22788.71 22597.35 21793.58 225
gg-mvs-nofinetune90.85 20394.14 16387.02 20994.89 13399.25 8698.64 5576.29 22688.24 22757.50 23179.93 22295.45 8795.18 17898.77 5098.07 7999.62 12999.24 163
Gipumacopyleft81.40 22281.78 22480.96 22183.21 22485.61 23379.73 22676.25 22797.33 15964.21 22755.32 23155.55 23486.04 21692.43 21792.20 21896.32 22693.99 222
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
no-one66.79 23067.62 23165.81 23173.06 23581.79 23451.90 23976.20 22861.07 23654.05 23351.62 23541.72 23749.18 23467.26 23382.83 22890.47 23287.07 230
MVS-HIRNet92.51 17995.97 13188.48 20693.73 14698.37 14190.33 21175.36 22998.32 11577.78 19689.15 17894.87 9295.14 17997.62 12696.39 13698.51 19697.11 208
testpf91.80 20094.43 16088.74 20393.89 14195.30 21792.05 20471.77 23097.52 15087.24 12694.77 13692.68 11591.48 20991.75 22292.11 21996.02 22796.89 212
MVEpermissive67.97 1965.53 23167.43 23263.31 23259.33 23674.20 23553.09 23870.43 23166.27 23543.13 23745.98 23630.62 23970.65 22979.34 23186.30 22683.25 23689.33 228
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
111182.87 21985.67 22079.62 22281.86 22689.62 22674.44 22968.81 23287.44 22866.59 22176.83 22570.33 22487.71 21492.65 21293.37 20698.28 20389.42 227
.test124569.67 22672.22 22866.70 23081.86 22689.62 22674.44 22968.81 23287.44 22866.59 22176.83 22570.33 22487.71 21492.65 21237.65 23320.79 23751.04 234
tmp_tt82.25 22097.73 6288.71 23080.18 22568.65 23499.15 5086.98 12899.47 785.31 15868.35 23187.51 22683.81 22791.64 230
testmvs31.24 23240.15 23320.86 23412.61 23717.99 23925.16 24013.30 23548.42 23724.82 24053.07 23330.13 24128.47 23542.73 23537.65 23320.79 23751.04 234
test12326.75 23334.25 23418.01 2357.93 23817.18 24024.85 24112.36 23644.83 23816.52 24141.80 23718.10 24228.29 23633.08 23634.79 23518.10 23949.95 236
GG-mvs-BLEND69.11 22798.13 7235.26 2333.49 23998.20 14894.89 1582.38 23798.42 1135.82 24296.37 10898.60 555.97 23798.75 5397.98 8499.01 19198.61 185
sosnet-low-res0.00 2340.00 2350.00 2360.00 2400.00 2410.00 2420.00 2380.00 2390.00 2430.00 2380.00 2430.00 2380.00 2370.00 2360.00 2400.00 237
sosnet0.00 2340.00 2350.00 2360.00 2400.00 2410.00 2420.00 2380.00 2390.00 2430.00 2380.00 2430.00 2380.00 2370.00 2360.00 2400.00 237
ambc80.99 22580.04 23190.84 22490.91 20796.09 20174.18 21062.81 22930.59 24082.44 22396.25 16691.77 22095.91 22898.56 186
MTAPA98.09 1099.97 3
MTMP98.46 799.96 9
Patchmatch-RL test66.86 235
XVS97.42 6699.62 3398.59 5793.81 7999.95 1499.69 79
X-MVStestdata97.42 6699.62 3398.59 5793.81 7999.95 1499.69 79
mPP-MVS99.53 2499.89 29
NP-MVS98.57 105