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 bysort bysort bysort bysort bysort bysorted bysort bysort bysort bysort by
HFP-MVS98.48 1198.62 1398.32 1299.39 1899.33 2399.27 1297.42 2098.27 995.25 2598.34 1298.83 2799.08 198.26 3598.08 2799.48 3099.26 36
ACMMPR98.40 1398.49 1598.28 1499.41 1499.40 1599.36 497.35 2398.30 895.02 2797.79 1998.39 3899.04 298.26 3598.10 2599.50 2999.22 42
SD-MVS98.52 998.77 1098.23 1698.15 5199.26 2898.79 2997.59 1798.52 396.25 1797.99 1799.75 799.01 398.27 3497.97 3399.59 799.63 2
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
CPTT-MVS97.78 2897.54 3798.05 2298.91 3699.05 3899.00 2396.96 3597.14 4395.92 1995.50 4698.78 2998.99 497.20 6996.07 10698.54 18199.04 67
DVP-MVScopyleft98.86 598.97 498.75 399.43 1399.63 199.25 1497.81 298.62 297.69 397.59 2299.90 298.93 598.99 498.42 1299.37 6199.62 4
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
MSLP-MVS++98.04 2497.93 3498.18 1799.10 2899.09 3798.34 3896.99 3497.54 3196.60 1494.82 5398.45 3698.89 697.46 6298.77 499.17 11099.37 22
TSAR-MVS + MP.98.49 1098.78 998.15 2098.14 5299.17 3499.34 897.18 3198.44 595.72 2197.84 1899.28 1398.87 799.05 198.05 2899.66 299.60 7
Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition
ME-MVS98.97 199.00 398.94 199.53 499.47 1199.35 697.66 998.36 698.80 199.17 199.76 698.86 898.57 1598.32 1899.42 5099.33 26
APDe-MVScopyleft98.87 498.96 598.77 299.58 299.53 799.44 197.81 298.22 1297.33 698.70 799.33 1198.86 898.96 698.40 1499.63 599.57 9
Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition
SMA-MVScopyleft98.66 898.89 898.39 1099.60 199.41 1499.00 2397.63 1497.78 2095.83 2098.33 1399.83 498.85 1098.93 898.56 799.41 5399.40 21
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
CNVR-MVS98.47 1298.46 1898.48 899.40 1599.05 3899.02 2197.54 1897.73 2196.65 1397.20 3199.13 2198.85 1098.91 998.10 2599.41 5399.08 58
PGM-MVS97.81 2798.11 3097.46 3099.55 399.34 2299.32 1194.51 4796.21 6593.07 3998.05 1697.95 4398.82 1298.22 3897.89 4099.48 3099.09 57
CP-MVS98.32 1898.34 2498.29 1399.34 2199.30 2499.15 1697.35 2397.49 3395.58 2397.72 2098.62 3598.82 1298.29 3097.67 4899.51 2799.28 31
MCST-MVS98.20 1998.36 2198.01 2399.40 1599.05 3899.00 2397.62 1597.59 3093.70 3697.42 2999.30 1298.77 1498.39 2897.48 5399.59 799.31 30
AdaColmapbinary97.53 3296.93 4998.24 1599.21 2498.77 6698.47 3697.34 2596.68 5396.52 1595.11 5196.12 5998.72 1597.19 7196.24 10299.17 11098.39 135
ACMMP_NAP98.20 1998.49 1597.85 2699.50 599.40 1599.26 1397.64 1397.47 3592.62 4997.59 2299.09 2398.71 1698.82 1297.86 4199.40 5699.19 46
DeepC-MVS_fast96.13 198.13 2198.27 2797.97 2599.16 2799.03 4499.05 2097.24 2898.22 1294.17 3495.82 4298.07 4098.69 1798.83 1198.80 299.52 2299.10 55
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
DVP-MVS++98.92 299.18 198.61 599.47 699.61 299.39 397.82 198.80 196.86 1098.90 399.92 198.67 1899.02 298.20 2199.43 4899.82 1
SED-MVS98.90 399.07 298.69 499.38 1999.61 299.33 1097.80 498.25 1097.60 498.87 599.89 398.67 1899.02 298.26 1999.36 6399.61 6
MSP-MVS98.73 798.93 698.50 799.44 1299.57 499.36 497.65 1198.14 1496.51 1698.49 999.65 998.67 1898.60 1498.42 1299.40 5699.63 2
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
HPM-MVS++copyleft98.34 1798.47 1798.18 1799.46 999.15 3599.10 1897.69 897.67 2694.93 2897.62 2199.70 898.60 2198.45 2297.46 5499.31 7199.26 36
DPE-MVScopyleft98.75 698.91 798.57 699.21 2499.54 699.42 297.78 697.49 3396.84 1198.94 299.82 598.59 2298.90 1098.22 2099.56 1799.48 17
Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025
NCCC98.10 2298.05 3298.17 1999.38 1999.05 3899.00 2397.53 1998.04 1695.12 2694.80 5499.18 1998.58 2398.49 1997.78 4599.39 5898.98 75
MP-MVScopyleft98.09 2398.30 2697.84 2799.34 2199.19 3399.23 1597.40 2197.09 4593.03 4297.58 2498.85 2698.57 2498.44 2497.69 4799.48 3099.23 40
Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo.
X-MVS97.84 2698.19 2997.42 3199.40 1599.35 1999.06 1997.25 2797.38 3690.85 7296.06 3998.72 3198.53 2598.41 2698.15 2499.46 3499.28 31
APD-MVScopyleft98.36 1698.32 2598.41 999.47 699.26 2899.12 1797.77 796.73 5196.12 1897.27 3098.88 2598.46 2698.47 2098.39 1599.52 2299.22 42
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
EC-MVSNet96.49 5197.63 3695.16 6594.75 11498.69 7297.39 5788.97 14396.34 6192.02 5596.04 4096.46 5398.21 2798.41 2697.96 3499.61 699.55 10
train_agg97.65 3198.06 3197.18 3498.94 3398.91 5798.98 2797.07 3396.71 5290.66 7997.43 2899.08 2498.20 2897.96 4797.14 6599.22 9299.19 46
SPE-MVS-test97.00 4197.85 3596.00 5297.77 5799.56 596.35 9191.95 7897.54 3192.20 5296.14 3896.00 6298.19 2998.46 2197.78 4599.57 1499.45 19
DeepC-MVS94.87 496.76 5096.50 5597.05 3698.21 5099.28 2698.67 3097.38 2297.31 3790.36 8689.19 10693.58 7398.19 2998.31 2998.50 899.51 2799.36 23
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
CS-MVS96.87 4597.41 4196.24 4797.42 6299.48 1097.30 5891.83 8697.17 4193.02 4394.80 5494.45 6898.16 3198.61 1397.85 4299.69 199.50 13
SteuartSystems-ACMMP98.38 1598.71 1297.99 2499.34 2199.46 1299.34 897.33 2697.31 3794.25 3298.06 1599.17 2098.13 3298.98 598.46 1099.55 1899.54 11
Skip Steuart: Steuart Systems R&D Blog.
SF-MVS98.39 1498.45 1998.33 1199.45 1099.05 3898.27 3997.65 1197.73 2197.02 998.18 1499.25 1698.11 3398.15 4097.62 4999.45 3899.19 46
CSCG97.44 3497.18 4597.75 2899.47 699.52 898.55 3495.41 4297.69 2595.72 2194.29 5795.53 6498.10 3496.20 11997.38 5899.24 8399.62 4
3Dnovator+93.91 797.23 3797.22 4297.24 3398.89 3798.85 6298.26 4093.25 5997.99 1795.56 2490.01 10298.03 4298.05 3597.91 4898.43 1199.44 4599.35 24
TSAR-MVS + GP.97.45 3398.36 2196.39 4395.56 8898.93 5497.74 5193.31 5697.61 2994.24 3398.44 1199.19 1898.03 3697.60 5797.41 5699.44 4599.33 26
PLCcopyleft94.95 397.37 3596.77 5298.07 2198.97 3298.21 10997.94 4896.85 3797.66 2797.58 593.33 6396.84 5098.01 3797.13 7396.20 10499.09 12398.01 151
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
3Dnovator93.79 897.08 3997.20 4396.95 3999.09 2999.03 4498.20 4193.33 5597.99 1793.82 3590.61 9696.80 5197.82 3897.90 4998.78 399.47 3399.26 36
LS3D95.46 6095.14 7895.84 5497.91 5698.90 5998.58 3397.79 597.07 4683.65 15088.71 11088.64 10597.82 3897.49 6097.42 5599.26 8197.72 163
CNLPA96.90 4496.28 5897.64 2998.56 4398.63 8096.85 7096.60 3897.73 2197.08 889.78 10496.28 5797.80 4096.73 8896.63 9098.94 14398.14 147
ACMMPcopyleft97.37 3597.48 3997.25 3298.88 3899.28 2698.47 3696.86 3697.04 4792.15 5397.57 2596.05 6197.67 4197.27 6795.99 11199.46 3499.14 54
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
sasdasda95.25 6695.45 7095.00 6995.27 9698.72 6996.89 6789.82 12896.51 5590.84 7593.72 6086.01 12397.66 4295.78 13697.94 3699.54 1999.50 13
canonicalmvs95.25 6695.45 7095.00 6995.27 9698.72 6996.89 6789.82 12896.51 5590.84 7593.72 6086.01 12397.66 4295.78 13697.94 3699.54 1999.50 13
QAPM96.78 4997.14 4696.36 4499.05 3099.14 3698.02 4593.26 5797.27 3990.84 7591.16 8897.31 4697.64 4497.70 5598.20 2199.33 6599.18 49
TAPA-MVS94.18 596.38 5296.49 5696.25 4598.26 4998.66 7598.00 4694.96 4597.17 4189.48 10292.91 6896.35 5597.53 4596.59 9795.90 11499.28 7597.82 155
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
PHI-MVS97.78 2898.44 2097.02 3798.73 3999.25 3098.11 4295.54 4196.66 5492.79 4698.52 899.38 1097.50 4697.84 5098.39 1599.45 3899.03 68
ETV-MVS96.31 5397.47 4094.96 7294.79 11198.78 6596.08 10591.41 10796.16 6690.50 8195.76 4496.20 5897.39 4798.42 2597.82 4399.57 1499.18 49
OMC-MVS97.00 4196.92 5097.09 3598.69 4098.66 7597.85 4995.02 4498.09 1594.47 3093.15 6496.90 4897.38 4897.16 7296.82 8799.13 11797.65 164
MGCFI-Net95.12 6895.39 7394.79 8195.24 9898.68 7396.80 7489.72 13296.48 5790.11 9093.64 6285.86 12897.36 4995.69 14297.92 3999.53 2199.49 16
MAR-MVS95.50 5795.60 6695.39 6298.67 4198.18 11295.89 11989.81 13094.55 11891.97 5692.99 6690.21 9297.30 5096.79 8597.49 5298.72 16698.99 73
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
DPM-MVS96.86 4696.82 5196.91 4098.08 5398.20 11098.52 3597.20 3097.24 4091.42 5991.84 8098.45 3697.25 5197.07 7497.40 5798.95 14297.55 167
MVS_111021_LR97.16 3898.01 3396.16 4898.47 4598.98 4996.94 6693.89 5197.64 2891.44 5898.89 496.41 5497.20 5298.02 4697.29 6399.04 13598.85 90
CDPH-MVS96.84 4797.49 3896.09 4998.92 3598.85 6298.61 3195.09 4396.00 7387.29 13495.45 4897.42 4597.16 5397.83 5197.94 3699.44 4598.92 81
thres40093.56 12292.43 14994.87 7795.40 9098.91 5796.70 7992.38 6992.93 15188.19 12786.69 13277.35 19597.13 5496.75 8795.85 11699.42 5098.56 118
thres20093.62 12092.54 14294.88 7595.36 9198.93 5496.75 7792.31 7092.84 15288.28 12586.99 12877.81 19397.13 5496.82 8095.92 11299.45 3898.49 125
tfpn200view993.64 11992.57 14194.89 7495.33 9298.94 5296.82 7192.31 7092.63 15688.29 12387.21 12678.01 18697.12 5696.82 8095.85 11699.45 3898.56 118
thres600view793.49 12492.37 15294.79 8195.42 8998.93 5496.58 8392.31 7093.04 14987.88 13086.62 13576.94 19897.09 5796.82 8095.63 12299.45 3898.63 112
EIA-MVS95.50 5796.19 6094.69 8694.83 11098.88 6195.93 11491.50 10394.47 12189.43 10393.14 6592.72 7897.05 5897.82 5397.13 6699.43 4899.15 52
ET-MVSNet_ETH3D93.34 12694.33 9492.18 13383.26 24297.66 12396.72 7889.89 12795.62 8887.17 13596.00 4183.69 15796.99 5993.78 17795.34 13099.06 13098.18 146
TSAR-MVS + COLMAP94.79 7594.51 8895.11 6696.50 7297.54 12497.99 4794.54 4697.81 1985.88 14196.73 3381.28 17196.99 5996.29 11395.21 13598.76 16596.73 192
PCF-MVS93.95 695.65 5695.14 7896.25 4597.73 6098.73 6897.59 5397.13 3292.50 16089.09 11589.85 10396.65 5296.90 6194.97 15994.89 14499.08 12598.38 136
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
TSAR-MVS + ACMM97.71 3098.60 1496.66 4198.64 4299.05 3898.85 2897.23 2998.45 489.40 10597.51 2699.27 1596.88 6298.53 1697.81 4498.96 14199.59 8
OpenMVScopyleft92.33 1195.50 5795.22 7695.82 5598.98 3198.97 5097.67 5293.04 6494.64 11689.18 11184.44 16794.79 6696.79 6397.23 6897.61 5099.24 8398.88 86
thres100view90093.55 12392.47 14894.81 8095.33 9298.74 6796.78 7692.30 7392.63 15688.29 12387.21 12678.01 18696.78 6496.38 10695.92 11299.38 5998.40 133
Anonymous2023121193.49 12492.33 15394.84 7894.78 11398.00 11796.11 10391.85 8094.86 11390.91 7174.69 21489.18 10096.73 6594.82 16095.51 12698.67 17199.24 39
Effi-MVS+92.93 13393.86 11191.86 13594.07 14898.09 11695.59 12685.98 17794.27 12679.54 17191.12 9181.81 16896.71 6696.67 9296.06 10799.27 7898.98 75
MVS_111021_HR97.04 4098.20 2895.69 5698.44 4799.29 2596.59 8293.20 6097.70 2489.94 9598.46 1096.89 4996.71 6698.11 4397.95 3599.27 7899.01 71
E294.88 7194.85 8594.91 7394.58 12498.59 8296.16 9891.80 8895.88 7791.04 6990.11 10186.91 11396.68 6896.91 7996.85 8299.19 10798.70 102
viewcassd2359sk1194.63 8094.45 9094.84 7894.58 12498.57 8596.13 10191.79 8995.32 9590.67 7888.73 10986.13 12196.65 6996.82 8096.87 8199.21 9898.68 104
viewdifsd2359ckpt0994.40 9094.26 9594.57 8994.51 13198.50 9895.96 11391.72 9695.31 9989.37 10688.33 11585.88 12696.64 7096.61 9396.57 9399.20 10598.60 115
E3new94.34 9293.98 10894.75 8394.56 12698.56 8796.13 10191.78 9194.54 12090.22 8787.24 12485.36 13396.62 7196.61 9396.90 7599.22 9298.68 104
Fast-Effi-MVS+91.87 14292.08 15691.62 14192.91 16497.21 13794.93 13784.60 20693.61 13681.49 16183.50 17278.95 17996.62 7196.55 9996.22 10399.16 11398.51 122
E394.33 9393.99 10794.73 8494.56 12698.56 8796.14 9991.78 9194.55 11890.05 9187.23 12585.39 13196.61 7396.61 9396.90 7599.21 9898.68 104
MGCNet97.94 2598.72 1197.02 3798.48 4499.50 999.02 2194.06 4998.33 794.51 2998.78 697.73 4496.60 7498.51 1798.68 599.45 3899.53 12
casdiffmvspermissive94.38 9194.15 10494.64 8894.70 11998.51 9296.03 11191.66 9895.70 8489.36 10786.48 14085.03 14196.60 7497.40 6397.30 6199.52 2298.67 107
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
casdiffmvs_mvgpermissive94.55 8394.26 9594.88 7594.96 10698.51 9297.11 6091.82 8794.28 12589.20 11086.60 13686.85 11496.56 7697.47 6197.25 6499.64 498.83 93
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
E5new93.95 10593.42 12394.57 8994.50 13498.51 9296.18 9691.84 8193.55 13989.12 11285.80 15384.38 14596.53 7796.16 12396.85 8299.23 9098.67 107
E593.95 10593.42 12394.57 8994.50 13498.51 9296.18 9691.84 8193.55 13989.12 11285.80 15384.38 14596.53 7796.16 12396.85 8299.23 9098.67 107
E493.88 11193.38 12794.48 9494.50 13498.51 9296.08 10591.74 9593.42 14588.84 11785.51 15684.38 14596.49 7996.22 11696.90 7599.22 9298.69 103
Anonymous20240521192.18 15495.04 10598.20 11096.14 9991.79 8993.93 12974.60 21588.38 10896.48 8095.17 15495.82 11999.00 13699.15 52
MVS_Test94.82 7395.66 6593.84 11494.79 11198.35 10396.49 8689.10 14296.12 6987.09 13692.58 7190.61 8996.48 8096.51 10496.89 7999.11 12098.54 120
E6new93.85 11293.39 12594.39 9794.50 13498.53 9095.93 11491.41 10793.47 14188.81 11885.51 15684.16 15196.46 8296.32 11196.99 7199.21 9898.78 98
E693.85 11293.39 12594.39 9794.50 13498.53 9095.93 11491.41 10793.47 14188.81 11885.51 15684.16 15196.46 8296.32 11196.99 7199.21 9898.78 98
viewmanbaseed2359cas94.31 9594.25 9794.38 9994.72 11698.59 8296.09 10491.84 8195.35 9387.92 12987.86 11885.54 12996.45 8496.71 8997.04 6799.26 8198.67 107
viewdifsd2359ckpt1394.14 9894.00 10594.30 10294.55 12898.55 8995.71 12491.76 9395.03 11088.12 12887.34 12185.15 13796.39 8596.81 8496.60 9199.24 8398.50 123
ACMM92.75 1094.41 8993.84 11395.09 6796.41 7596.80 14594.88 14193.54 5396.41 5990.16 8892.31 7483.11 16196.32 8696.22 11694.65 15099.22 9297.35 174
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
OPM-MVS93.61 12192.43 14995.00 6996.94 6997.34 13297.78 5094.23 4889.64 19385.53 14288.70 11182.81 16496.28 8796.28 11495.00 14399.24 8397.22 177
Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS).
casdiffseed41469214793.07 13192.06 15794.25 10594.46 13998.28 10595.61 12591.28 11192.74 15488.58 12182.11 17980.19 17496.25 8896.05 12696.49 9499.32 6798.57 117
CANet96.84 4797.20 4396.42 4297.92 5599.24 3298.60 3293.51 5497.11 4493.07 3991.16 8897.24 4796.21 8998.24 3798.05 2899.22 9299.35 24
viewmacassd2359aftdt93.65 11893.29 13094.07 10894.61 12298.51 9296.04 11091.75 9493.61 13686.56 13984.89 16284.41 14496.17 9095.97 12897.03 6899.28 7598.63 112
viewmambaseed2359dif93.92 10993.38 12794.54 9294.55 12898.15 11396.41 8891.47 10495.10 10789.58 10086.64 13385.10 13996.17 9094.08 17695.77 12099.09 12398.84 92
diffmvs_AUTHOR94.09 10193.86 11194.36 10094.60 12398.31 10496.29 9291.51 10296.39 6088.49 12287.35 12083.32 16096.16 9296.17 12296.64 8999.10 12198.82 95
PMMVS94.61 8195.56 6793.50 11994.30 14496.74 14994.91 13889.56 13595.58 9087.72 13196.15 3792.86 7696.06 9395.47 14695.02 14198.43 19097.09 180
CLD-MVS94.79 7594.36 9395.30 6395.21 10097.46 12797.23 5992.24 7496.43 5891.77 5792.69 7084.31 14896.06 9395.52 14495.03 14099.31 7199.06 63
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
PatchMatch-RL94.69 7994.41 9195.02 6897.63 6198.15 11394.50 15391.99 7695.32 9591.31 6195.47 4783.44 15896.02 9596.56 9895.23 13498.69 16996.67 193
diffmvspermissive94.31 9594.21 9894.42 9694.64 12198.28 10596.36 9091.56 9996.77 5088.89 11688.97 10784.23 15096.01 9696.05 12696.41 9799.05 13498.79 97
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
TPM-MVS98.94 3398.47 9998.04 4492.62 4996.51 3598.76 3095.94 9798.92 14597.55 167
Ray Leroy Khuboni and Hongjun Xu: Textureless Resilient Propagation Matching in Multiple View Stereosis (TPM-MVS). SATNAC 2025
DCV-MVSNet94.76 7895.12 8094.35 10195.10 10495.81 18096.46 8789.49 13696.33 6290.16 8892.55 7290.26 9195.83 9895.52 14496.03 10999.06 13099.33 26
HyFIR lowres test92.03 14091.55 16592.58 12897.13 6798.72 6994.65 14786.54 16893.58 13882.56 15467.75 24390.47 9095.67 9995.87 13295.54 12598.91 14798.93 80
viewdifsd2359ckpt0794.23 9794.19 9994.27 10394.69 12098.45 10096.06 10991.72 9695.09 10888.79 12086.81 12986.35 12095.64 10097.38 6496.88 8098.68 17098.40 133
baseline194.59 8294.47 8994.72 8595.16 10197.97 11996.07 10791.94 7994.86 11389.98 9391.60 8485.87 12795.64 10097.07 7496.90 7599.52 2297.06 184
GeoE92.52 13892.64 14092.39 13193.96 14997.76 12196.01 11285.60 18893.23 14683.94 14781.56 18284.80 14295.63 10296.22 11695.83 11899.19 10799.07 62
viewdifsd2359ckpt1193.27 12892.72 13793.91 11194.46 13997.42 13094.91 13891.42 10595.74 8289.57 10187.34 12182.87 16395.61 10392.62 19794.62 15297.49 21098.44 126
CHOSEN 280x42095.46 6097.01 4793.66 11797.28 6697.98 11896.40 8985.39 19396.10 7091.07 6896.53 3496.34 5695.61 10397.65 5696.95 7496.21 22697.49 169
viewmsd2359difaftdt93.27 12892.72 13793.91 11194.46 13997.42 13094.91 13891.42 10595.69 8689.59 9987.34 12182.90 16295.60 10592.62 19794.62 15297.49 21098.44 126
HQP-MVS94.43 8794.57 8794.27 10396.41 7597.23 13696.89 6793.98 5095.94 7583.68 14995.01 5284.46 14395.58 10695.47 14694.85 14899.07 12799.00 72
MSDG94.82 7393.73 11596.09 4998.34 4897.43 12997.06 6196.05 3995.84 8090.56 8086.30 14789.10 10295.55 10796.13 12595.61 12399.00 13695.73 211
DeepPCF-MVS95.28 297.00 4198.35 2395.42 6197.30 6598.94 5294.82 14296.03 4098.24 1192.11 5495.80 4398.64 3495.51 10898.95 798.66 696.78 21799.20 45
DI_MVS_pp94.01 10393.63 11794.44 9594.54 13098.26 10897.51 5490.63 11895.88 7789.34 10880.54 19089.36 9795.48 10996.33 11096.27 10199.17 11098.78 98
FA-MVS(training)93.94 10795.16 7792.53 12994.87 10998.57 8595.42 12979.49 23095.37 9290.98 7086.54 13894.26 7095.44 11097.80 5495.19 13698.97 13998.38 136
EPP-MVSNet95.27 6596.18 6194.20 10694.88 10898.64 7894.97 13690.70 11795.34 9489.67 9891.66 8393.84 7195.42 11197.32 6697.00 7099.58 1199.47 18
RPSCF94.05 10294.00 10594.12 10796.20 7796.41 15996.61 8191.54 10095.83 8189.73 9796.94 3292.80 7795.35 11291.63 21490.44 21795.27 24193.94 231
test250694.32 9493.00 13495.87 5396.16 7899.39 1796.96 6492.80 6695.22 10394.47 3091.55 8570.45 22995.25 11398.29 3097.98 3199.59 798.10 149
ECVR-MVScopyleft94.14 9892.96 13595.52 5996.16 7899.39 1796.96 6492.80 6695.22 10392.38 5181.48 18380.31 17295.25 11398.29 3097.98 3199.59 798.05 150
LGP-MVS_train94.12 10094.62 8693.53 11896.44 7497.54 12497.40 5691.84 8194.66 11581.09 16395.70 4583.36 15995.10 11596.36 10995.71 12199.32 6799.03 68
DELS-MVS96.06 5596.04 6296.07 5197.77 5799.25 3098.10 4393.26 5794.42 12292.79 4688.52 11493.48 7495.06 11698.51 1798.83 199.45 3899.28 31
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
test111193.94 10792.78 13695.29 6496.14 8099.42 1396.79 7592.85 6595.08 10991.39 6080.69 18879.86 17695.00 11798.28 3398.00 3099.58 1198.11 148
ACMP92.88 994.43 8794.38 9294.50 9396.01 8397.69 12295.85 12292.09 7595.74 8289.12 11295.14 5082.62 16694.77 11895.73 13994.67 14999.14 11699.06 63
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
thisisatest053094.54 8495.47 6993.46 12094.51 13198.65 7794.66 14690.72 11595.69 8686.90 13793.80 5889.44 9694.74 11996.98 7894.86 14599.19 10798.85 90
tttt051794.52 8595.44 7293.44 12194.51 13198.68 7394.61 14990.72 11595.61 8986.84 13893.78 5989.26 9994.74 11997.02 7794.86 14599.20 10598.87 88
baseline94.83 7295.82 6493.68 11694.75 11497.80 12096.51 8588.53 14897.02 4889.34 10892.93 6792.18 8094.69 12195.78 13696.08 10598.27 19398.97 79
PVSNet_BlendedMVS95.41 6295.28 7495.57 5797.42 6299.02 4695.89 11993.10 6296.16 6693.12 3791.99 7685.27 13494.66 12298.09 4497.34 5999.24 8399.08 58
PVSNet_Blended95.41 6295.28 7495.57 5797.42 6299.02 4695.89 11993.10 6296.16 6693.12 3791.99 7685.27 13494.66 12298.09 4497.34 5999.24 8399.08 58
FC-MVSNet-train93.85 11293.91 10993.78 11594.94 10796.79 14894.29 15691.13 11293.84 13388.26 12690.40 9785.23 13694.65 12496.54 10095.31 13199.38 5999.28 31
CANet_DTU93.92 10996.57 5490.83 15295.63 8698.39 10296.99 6387.38 15996.26 6371.97 21696.31 3693.02 7594.53 12597.38 6496.83 8698.49 18497.79 156
FMVSNet191.54 15090.93 17292.26 13290.35 18995.27 19895.22 13287.16 16291.37 17787.62 13275.45 20983.84 15594.43 12696.52 10196.30 9898.82 15597.74 162
IterMVS-LS92.56 13793.18 13191.84 13693.90 15094.97 20594.99 13586.20 17294.18 12782.68 15385.81 15287.36 11294.43 12695.31 15096.02 11098.87 15198.60 115
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
GBi-Net93.81 11594.18 10093.38 12291.34 17995.86 17696.22 9388.68 14595.23 10090.40 8286.39 14291.16 8394.40 12896.52 10196.30 9899.21 9897.79 156
test193.81 11594.18 10093.38 12291.34 17995.86 17696.22 9388.68 14595.23 10090.40 8286.39 14291.16 8394.40 12896.52 10196.30 9899.21 9897.79 156
FMVSNet293.30 12793.36 12993.22 12591.34 17995.86 17696.22 9388.24 15195.15 10689.92 9681.64 18189.36 9794.40 12896.77 8696.98 7399.21 9897.79 156
0.4-1-1-0.189.64 17688.08 19691.46 14286.21 23194.41 21894.79 14386.20 17288.54 20291.15 6686.64 13378.03 18394.36 13184.47 24588.05 22796.08 22996.40 196
0.3-1-1-0.01589.40 17987.72 20491.36 14486.10 23394.08 22494.62 14886.10 17488.02 20791.16 6286.39 14277.89 18994.30 13283.93 24887.88 22895.88 23195.86 208
IS_MVSNet95.28 6496.43 5793.94 10995.30 9499.01 4895.90 11791.12 11394.13 12887.50 13391.23 8794.45 6894.17 13398.45 2298.50 899.65 399.23 40
FMVSNet393.79 11794.17 10293.35 12491.21 18295.99 16996.62 8088.68 14595.23 10090.40 8286.39 14291.16 8394.11 13495.96 12996.67 8899.07 12797.79 156
CHOSEN 1792x268892.66 13692.49 14592.85 12797.13 6798.89 6095.90 11788.50 14995.32 9583.31 15171.99 23288.96 10394.10 13596.69 9096.49 9498.15 19599.10 55
0.4-1-1-0.289.32 18187.66 20691.26 14786.11 23293.97 22694.54 15085.98 17787.83 21091.12 6786.40 14178.02 18494.06 13684.03 24687.73 23095.75 23495.62 215
UniMVSNet_ETH3D88.47 19486.00 22691.35 14591.55 17696.29 16292.53 18388.81 14485.58 23482.33 15567.63 24466.87 24494.04 13791.49 21595.24 13398.84 15498.92 81
SCA90.92 15693.04 13388.45 18493.72 15597.33 13392.77 17876.08 24396.02 7278.26 18191.96 7890.86 8693.99 13890.98 21990.04 22095.88 23194.06 230
EPMVS90.88 15792.12 15589.44 17494.71 11797.24 13593.55 16476.81 23795.89 7681.77 15891.49 8686.47 11793.87 13990.21 22290.07 21995.92 23093.49 237
COLMAP_ROBcopyleft90.49 1493.27 12892.71 13993.93 11097.75 5997.44 12896.07 10793.17 6195.40 9183.86 14883.76 17188.72 10493.87 13994.25 17294.11 16898.87 15195.28 218
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
dmvs_re91.84 14391.60 16492.12 13491.60 17597.26 13495.14 13391.96 7791.02 18180.98 16486.56 13777.96 18893.84 14194.71 16195.08 13899.22 9298.62 114
ACMH+90.88 1291.41 15291.13 16991.74 13895.11 10396.95 14093.13 17489.48 13792.42 16279.93 16885.13 16078.02 18493.82 14293.49 18493.88 17498.94 14397.99 152
ACMH90.77 1391.51 15191.63 16391.38 14395.62 8796.87 14391.76 20289.66 13391.58 17578.67 17686.73 13178.12 18293.77 14394.59 16394.54 15998.78 16398.98 75
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
CostFormer90.69 15890.48 17790.93 15094.18 14596.08 16794.03 15878.20 23393.47 14189.96 9490.97 9380.30 17393.72 14487.66 23288.75 22495.51 23896.12 203
MVSTER94.89 7095.07 8194.68 8794.71 11796.68 15197.00 6290.57 11995.18 10593.05 4195.21 4986.41 11893.72 14497.59 5895.88 11599.00 13698.50 123
USDC90.69 15890.52 17690.88 15194.17 14696.43 15895.82 12386.76 16593.92 13076.27 19486.49 13974.30 21293.67 14695.04 15893.36 18498.61 17794.13 227
Effi-MVS+-dtu91.78 14593.59 11989.68 17092.44 17097.11 13894.40 15484.94 20292.43 16175.48 19891.09 9283.75 15693.55 14796.61 9395.47 12797.24 21398.67 107
PatchmatchNetpermissive90.56 16192.49 14588.31 18793.83 15396.86 14492.42 18676.50 24095.96 7478.31 18091.96 7889.66 9593.48 14890.04 22489.20 22395.32 23993.73 235
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
TinyColmap89.42 17788.58 18890.40 15993.80 15495.45 19293.96 16086.54 16892.24 16876.49 19180.83 18670.44 23093.37 14994.45 16793.30 18798.26 19493.37 238
LTVRE_ROB87.32 1687.55 20988.25 19286.73 21990.66 18495.80 18193.05 17584.77 20383.35 24060.32 25283.12 17467.39 24293.32 15094.36 17094.86 14598.28 19298.87 88
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
ADS-MVSNet89.80 17391.33 16888.00 19694.43 14296.71 15092.29 19074.95 24896.07 7177.39 18488.67 11286.09 12293.26 15188.44 22889.57 22295.68 23593.81 234
MDTV_nov1_ep1391.57 14993.18 13189.70 16893.39 15896.97 13993.53 16580.91 22795.70 8481.86 15792.40 7389.93 9393.25 15291.97 21190.80 21495.25 24294.46 222
UniMVSNet_NR-MVSNet90.35 16589.96 17890.80 15389.66 19895.83 17992.48 18490.53 12090.96 18379.57 16979.33 19477.14 19693.21 15392.91 19494.50 16299.37 6199.05 65
DU-MVS89.67 17588.84 18690.63 15689.26 20895.61 18592.48 18489.91 12591.22 17879.57 16977.72 20371.18 22693.21 15392.53 20094.57 15699.35 6499.05 65
pmmvs490.55 16289.91 17991.30 14690.26 19194.95 20692.73 18087.94 15493.44 14485.35 14382.28 17876.09 20493.02 15593.56 18292.26 20798.51 18396.77 191
tpmrst88.86 19189.62 18087.97 19794.33 14395.98 17092.62 18276.36 24194.62 11776.94 18885.98 15182.80 16592.80 15686.90 23487.15 23394.77 24693.93 232
RPMNet90.19 16892.03 15988.05 19393.46 15695.95 17393.41 16874.59 24992.40 16375.91 19684.22 16886.41 11892.49 15794.42 16893.85 17698.44 18896.96 185
FMVSNet590.36 16490.93 17289.70 16887.99 22492.25 23492.03 19783.51 21392.20 16984.13 14685.59 15586.48 11692.43 15894.61 16294.52 16098.13 19690.85 245
dps90.11 17189.37 18490.98 14993.89 15196.21 16493.49 16777.61 23591.95 17192.74 4888.85 10878.77 18192.37 15987.71 23187.71 23195.80 23394.38 223
Baseline_NR-MVSNet89.27 18388.01 19790.73 15589.26 20893.71 22892.71 18189.78 13190.73 18481.28 16273.53 22472.85 21892.30 16092.53 20093.84 17799.07 12798.88 86
CR-MVSNet90.16 16991.96 16088.06 19293.32 15995.95 17393.36 17075.99 24492.40 16375.19 20283.18 17385.37 13292.05 16195.21 15294.56 15798.47 18697.08 182
PatchT89.13 18691.71 16186.11 22592.92 16395.59 18783.64 24475.09 24791.87 17275.19 20282.63 17685.06 14092.05 16195.21 15294.56 15797.76 20497.08 182
v2v48288.25 19787.71 20588.88 17989.23 21295.28 19692.10 19487.89 15588.69 20173.31 21275.32 21071.64 22391.89 16392.10 20892.92 19398.86 15397.99 152
tfpnnormal88.50 19287.01 21490.23 16091.36 17895.78 18292.74 17990.09 12383.65 23976.33 19371.46 23569.58 23591.84 16495.54 14394.02 17199.06 13099.03 68
TranMVSNet+NR-MVSNet89.23 18488.48 19090.11 16689.07 21495.25 19992.91 17790.43 12190.31 18977.10 18776.62 20771.57 22491.83 16592.12 20694.59 15599.32 6798.92 81
EPNet96.27 5496.97 4895.46 6098.47 4598.28 10597.41 5593.67 5295.86 7992.86 4597.51 2693.79 7291.76 16697.03 7697.03 6898.61 17799.28 31
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
Fast-Effi-MVS+-dtu91.19 15393.64 11688.33 18692.19 17296.46 15793.99 15981.52 22592.59 15871.82 21792.17 7585.54 12991.68 16795.73 13994.64 15198.80 16098.34 138
usedtu_dtu_shiyan190.61 16091.45 16789.62 17185.03 23796.03 16893.51 16689.17 14093.13 14879.51 17281.79 18084.24 14991.63 16895.06 15793.79 17998.88 14996.12 203
tpm87.95 20189.44 18386.21 22492.53 16994.62 21591.40 21176.36 24191.46 17669.80 23187.43 11975.14 20791.55 16989.85 22690.60 21695.61 23696.96 185
tpm cat188.90 18987.78 20390.22 16193.88 15295.39 19493.79 16178.11 23492.55 15989.43 10381.31 18479.84 17791.40 17084.95 24286.34 23694.68 24894.09 228
baseline293.01 13294.17 10291.64 13992.83 16697.49 12693.40 16987.53 15793.67 13586.07 14091.83 8186.58 11591.36 17196.38 10695.06 13998.67 17198.20 145
v1088.00 19987.96 19888.05 19389.44 20394.68 21292.36 18783.35 21489.37 19572.96 21373.98 22172.79 21991.35 17293.59 17992.88 19498.81 15898.42 131
usedtu_blend_shiyan587.98 20086.70 22089.47 17277.63 24792.14 23994.53 15185.67 18386.74 22391.16 6286.06 14877.89 18991.22 17385.19 23882.63 24496.58 22196.25 197
blend_shiyan488.50 19286.74 21990.54 15785.31 23692.15 23893.79 16185.10 19887.64 21491.16 6286.06 14877.89 18991.22 17384.59 24382.60 24896.67 22096.25 197
FE-MVSNET387.75 20786.69 22188.99 17877.63 24792.14 23991.64 20685.67 18386.75 22191.16 6286.06 14877.89 18991.22 17385.19 23882.63 24496.58 22196.18 199
v119287.51 21087.31 20887.74 20189.04 21594.87 21092.07 19585.03 19988.49 20470.32 22472.65 22970.35 23191.21 17693.59 17992.80 19698.78 16398.42 131
UniMVSNet (Re)90.03 17289.61 18190.51 15889.97 19596.12 16692.32 18889.26 13890.99 18280.95 16578.25 20075.08 20991.14 17793.78 17793.87 17599.41 5399.21 44
v192192087.31 21487.13 21287.52 20788.87 21894.72 21191.96 20084.59 20788.28 20569.86 23072.50 23070.03 23491.10 17893.33 18692.61 20198.71 16798.44 126
v114487.92 20487.79 20288.07 19089.27 20795.15 20192.17 19385.62 18788.52 20371.52 21873.80 22272.40 22191.06 17993.54 18392.80 19698.81 15898.33 139
MIMVSNet88.99 18891.07 17086.57 22186.78 23095.62 18491.20 21675.40 24690.65 18676.57 19084.05 16982.44 16791.01 18095.84 13395.38 12998.48 18593.50 236
test-LLR91.62 14893.56 12089.35 17693.31 16096.57 15492.02 19887.06 16392.34 16675.05 20590.20 9888.64 10590.93 18196.19 12094.07 16997.75 20596.90 188
TESTMET0.1,191.07 15493.56 12088.17 18890.43 18696.57 15492.02 19882.83 21892.34 16675.05 20590.20 9888.64 10590.93 18196.19 12094.07 16997.75 20596.90 188
SixPastTwentyTwo88.37 19589.47 18287.08 21190.01 19495.93 17587.41 23385.32 19490.26 19170.26 22586.34 14671.95 22290.93 18192.89 19591.72 21098.55 18097.22 177
test-mter90.95 15593.54 12287.93 19890.28 19096.80 14591.44 21082.68 21992.15 17074.37 20989.57 10588.23 11090.88 18496.37 10894.31 16597.93 20297.37 173
PVSNet_Blended_VisFu94.77 7795.54 6893.87 11396.48 7398.97 5094.33 15591.84 8194.93 11290.37 8585.04 16194.99 6590.87 18598.12 4297.30 6199.30 7399.45 19
blended_shiyan886.10 22485.44 23086.88 21577.65 24692.22 23591.69 20385.52 19086.88 21978.82 17578.06 20276.43 20390.85 18685.36 23782.97 24296.74 21896.14 202
wanda-best-256-51286.03 22685.37 23186.79 21677.63 24792.14 23991.64 20685.67 18386.75 22178.43 17778.36 19776.66 20190.81 18785.19 23882.63 24496.58 22195.88 206
FE-blended-shiyan786.03 22685.37 23186.79 21677.63 24792.14 23991.64 20685.67 18386.74 22378.43 17778.36 19776.66 20190.81 18785.19 23882.63 24496.58 22195.88 206
blended_shiyan686.10 22485.52 22886.79 21677.63 24792.20 23691.66 20485.46 19286.86 22078.43 17778.30 19976.71 20090.80 18985.37 23682.98 24196.74 21896.18 199
CP-MVSNet87.89 20587.27 20988.62 18289.30 20695.06 20290.60 22185.78 18187.43 21775.98 19574.60 21568.14 24190.76 19093.07 19293.60 18199.30 7398.98 75
v14419287.40 21287.20 21187.64 20288.89 21694.88 20991.65 20584.70 20587.80 21171.17 22273.20 22770.91 22790.75 19192.69 19692.49 20298.71 16798.43 129
pmmvs587.83 20688.09 19487.51 20889.59 20195.48 19089.75 22784.73 20486.07 23271.44 21980.57 18970.09 23390.74 19294.47 16692.87 19598.82 15597.10 179
v888.21 19887.94 20088.51 18389.62 19995.01 20492.31 18984.99 20088.94 19674.70 20775.03 21173.51 21690.67 19392.11 20792.74 19998.80 16098.24 143
v124086.89 21686.75 21887.06 21288.75 22094.65 21491.30 21584.05 20987.49 21668.94 23471.96 23368.86 23990.65 19493.33 18692.72 20098.67 17198.24 143
gm-plane-assit83.26 23685.29 23380.89 23789.52 20289.89 24870.26 25778.24 23277.11 25258.01 25774.16 22066.90 24390.63 19597.20 6996.05 10898.66 17495.68 212
MS-PatchMatch91.82 14492.51 14391.02 14895.83 8596.88 14195.05 13484.55 20893.85 13282.01 15682.51 17791.71 8190.52 19695.07 15693.03 19198.13 19694.52 220
CDS-MVSNet92.77 13493.60 11891.80 13792.63 16896.80 14595.24 13189.14 14190.30 19084.58 14586.76 13090.65 8890.42 19795.89 13196.49 9498.79 16298.32 141
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
TAMVS90.54 16390.87 17490.16 16291.48 17796.61 15393.26 17286.08 17587.71 21281.66 16083.11 17584.04 15390.42 19794.54 16494.60 15498.04 20095.48 216
V4288.31 19687.95 19988.73 18189.44 20395.34 19592.23 19287.21 16188.83 19874.49 20874.89 21373.43 21790.41 19992.08 20992.77 19898.60 17998.33 139
anonymousdsp88.90 18991.00 17186.44 22288.74 22195.97 17190.40 22382.86 21788.77 20067.33 23781.18 18581.44 17090.22 20096.23 11594.27 16699.12 11999.16 51
PS-CasMVS87.33 21386.68 22288.10 18989.22 21394.93 20790.35 22485.70 18286.44 22974.01 21073.43 22566.59 24790.04 20192.92 19393.52 18299.28 7598.91 84
IterMVS-SCA-FT90.24 16692.48 14787.63 20392.85 16594.30 22293.79 16181.47 22692.66 15569.95 22884.66 16588.38 10889.99 20295.39 14994.34 16497.74 20797.63 165
IterMVS90.20 16792.43 14987.61 20492.82 16794.31 22194.11 15781.54 22492.97 15069.90 22984.71 16488.16 11189.96 20395.25 15194.17 16797.31 21297.46 170
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
gg-mvs-nofinetune86.17 22288.57 18983.36 23393.44 15798.15 11396.58 8372.05 25274.12 25449.23 26064.81 24790.85 8789.90 20497.83 5196.84 8598.97 13997.41 172
gbinet_0.2-2-1-0.0286.23 22185.66 22786.89 21478.33 24492.17 23791.62 20985.96 17986.51 22879.33 17378.13 20177.66 19489.55 20585.60 23582.66 24396.56 22596.87 190
GA-MVS89.28 18290.75 17587.57 20591.77 17496.48 15692.29 19087.58 15690.61 18765.77 24084.48 16676.84 19989.46 20695.84 13393.68 18098.52 18297.34 175
PEN-MVS87.22 21586.50 22488.07 19088.88 21794.44 21790.99 21886.21 17086.53 22773.66 21174.97 21266.56 24889.42 20791.20 21793.48 18399.24 8398.31 142
NR-MVSNet89.34 18088.66 18790.13 16590.40 18795.61 18593.04 17689.91 12591.22 17878.96 17477.72 20368.90 23889.16 20894.24 17393.95 17299.32 6798.99 73
pm-mvs189.19 18589.02 18589.38 17590.40 18795.74 18392.05 19688.10 15386.13 23077.70 18273.72 22379.44 17888.97 20995.81 13594.51 16199.08 12597.78 161
MVS-HIRNet85.36 23086.89 21583.57 23290.13 19294.51 21683.57 24572.61 25188.27 20671.22 22168.97 23981.81 16888.91 21093.08 19191.94 20894.97 24589.64 248
PM-MVS84.72 23384.47 23785.03 22884.67 23891.57 24486.27 23782.31 22287.65 21370.62 22376.54 20856.41 25988.75 21192.59 19989.85 22197.54 20996.66 194
Vis-MVSNet (Re-imp)94.46 8696.24 5992.40 13095.23 9998.64 7895.56 12790.99 11494.42 12285.02 14490.88 9494.65 6788.01 21298.17 3998.37 1799.57 1498.53 121
v7n86.43 21986.52 22386.33 22387.91 22594.93 20790.15 22583.05 21586.57 22670.21 22671.48 23466.78 24587.72 21394.19 17592.96 19298.92 14598.76 101
pmmvs685.98 22884.89 23687.25 21088.83 21994.35 22089.36 22885.30 19678.51 25175.44 19962.71 24975.41 20687.65 21493.58 18192.40 20496.89 21597.29 176
DTE-MVSNet86.67 21886.09 22587.35 20988.45 22394.08 22490.65 22086.05 17686.13 23072.19 21574.58 21766.77 24687.61 21590.31 22193.12 18999.13 11797.62 166
MDTV_nov1_ep13_2view86.30 22088.27 19184.01 23187.71 22794.67 21388.08 23176.78 23890.59 18868.66 23580.46 19180.12 17587.58 21689.95 22588.20 22695.25 24293.90 233
pmmvs-eth3d84.33 23482.94 23985.96 22784.16 23990.94 24586.55 23683.79 21084.25 23775.85 19770.64 23756.43 25887.44 21792.20 20590.41 21897.97 20195.68 212
v14887.51 21086.79 21688.36 18589.39 20595.21 20089.84 22688.20 15287.61 21577.56 18373.38 22670.32 23286.80 21890.70 22092.31 20598.37 19197.98 154
TransMVSNet (Re)87.73 20886.79 21688.83 18090.76 18394.40 21991.33 21489.62 13484.73 23675.41 20072.73 22871.41 22586.80 21894.53 16593.93 17399.06 13095.83 209
pmnet_mix0286.12 22387.12 21384.96 22989.82 19694.12 22384.88 24286.63 16791.78 17365.60 24180.76 18776.98 19786.61 22087.29 23384.80 23996.21 22694.09 228
WR-MVS_H87.93 20287.85 20188.03 19589.62 19995.58 18990.47 22285.55 18987.20 21876.83 18974.42 21872.67 22086.37 22193.22 18993.04 19099.33 6598.83 93
UGNet94.92 6996.63 5392.93 12696.03 8298.63 8094.53 15191.52 10196.23 6490.03 9292.87 6996.10 6086.28 22296.68 9196.60 9199.16 11399.32 29
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
UA-Net93.96 10495.95 6391.64 13996.06 8198.59 8295.29 13090.00 12491.06 18082.87 15290.64 9598.06 4186.06 22398.14 4198.20 2199.58 1196.96 185
test0.0.03 191.97 14193.91 10989.72 16793.31 16096.40 16091.34 21387.06 16393.86 13181.67 15991.15 9089.16 10186.02 22495.08 15595.09 13798.91 14796.64 195
thisisatest051590.12 17092.06 15787.85 19990.03 19396.17 16587.83 23287.45 15891.71 17477.15 18685.40 15984.01 15485.74 22595.41 14893.30 18798.88 14998.43 129
FC-MVSNet-test91.63 14793.82 11489.08 17792.02 17396.40 16093.26 17287.26 16093.72 13477.26 18588.61 11389.86 9485.50 22695.72 14195.02 14199.16 11397.44 171
CMPMVSbinary65.18 1784.76 23283.10 23886.69 22095.29 9595.05 20388.37 23085.51 19180.27 24871.31 22068.37 24173.85 21485.25 22787.72 23087.75 22994.38 24988.70 249
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
N_pmnet84.80 23185.10 23584.45 23089.25 21192.86 23184.04 24386.21 17088.78 19966.73 23972.41 23174.87 21185.21 22888.32 22986.45 23495.30 24092.04 242
WR-MVS87.93 20288.09 19487.75 20089.26 20895.28 19690.81 21986.69 16688.90 19775.29 20174.31 21973.72 21585.19 22992.26 20393.32 18699.27 7898.81 96
TDRefinement89.07 18788.15 19390.14 16495.16 10196.88 14195.55 12890.20 12289.68 19276.42 19276.67 20674.30 21284.85 23093.11 19091.91 20998.64 17694.47 221
CVMVSNet89.77 17491.66 16287.56 20693.21 16295.45 19291.94 20189.22 13989.62 19469.34 23383.99 17085.90 12584.81 23194.30 17195.28 13296.85 21697.09 180
pmmvs379.16 24280.12 24578.05 24379.36 24386.59 25378.13 25473.87 25076.42 25357.51 25870.59 23857.02 25784.66 23290.10 22388.32 22594.75 24791.77 244
Vis-MVSNetpermissive92.77 13495.00 8390.16 16294.10 14798.79 6494.76 14588.26 15092.37 16579.95 16788.19 11791.58 8284.38 23397.59 5897.58 5199.52 2298.91 84
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
EG-PatchMatch MVS86.68 21787.24 21086.02 22690.58 18596.26 16391.08 21781.59 22384.96 23569.80 23171.35 23675.08 20984.23 23494.24 17393.35 18598.82 15595.46 217
testgi89.42 17791.50 16687.00 21392.40 17195.59 18789.15 22985.27 19792.78 15372.42 21491.75 8276.00 20584.09 23594.38 16993.82 17898.65 17596.15 201
EPNet_dtu92.45 13995.02 8289.46 17398.02 5495.47 19194.79 14392.62 6894.97 11170.11 22794.76 5692.61 7984.07 23695.94 13095.56 12497.15 21495.82 210
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
FE-MVSNET281.81 23881.15 24182.57 23575.40 25492.39 23386.04 23883.61 21281.61 24568.16 23655.75 25259.22 25683.77 23793.31 18891.54 21298.45 18794.24 225
MDA-MVSNet-bldmvs80.11 24080.24 24479.94 23977.01 25293.21 22978.86 25385.94 18082.71 24360.86 24979.71 19351.77 26183.71 23875.60 25386.37 23593.28 25192.35 240
new_pmnet81.53 23982.68 24080.20 23883.47 24189.47 24982.21 24878.36 23187.86 20960.14 25467.90 24269.43 23682.03 23989.22 22787.47 23294.99 24487.39 250
DeepMVS_CXcopyleft86.86 25279.50 25270.43 25490.73 18463.66 24480.36 19260.83 25179.68 24076.23 25289.46 25486.53 251
EU-MVSNet85.62 22987.65 20783.24 23488.54 22292.77 23287.12 23485.32 19486.71 22564.54 24378.52 19675.11 20878.35 24192.25 20492.28 20695.58 23795.93 205
IB-MVS89.56 1591.71 14692.50 14490.79 15495.94 8498.44 10187.05 23591.38 11093.15 14792.98 4484.78 16385.14 13878.27 24292.47 20294.44 16399.10 12199.08 58
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
FE-MVSNET79.15 24380.25 24377.87 24469.65 25789.30 25081.34 25082.42 22179.49 25059.18 25659.18 25059.41 25577.03 24391.12 21890.65 21597.57 20892.63 239
MIMVSNet180.03 24180.93 24278.97 24172.46 25690.73 24680.81 25182.44 22080.39 24763.64 24557.57 25164.93 24976.37 24491.66 21391.55 21198.07 19989.70 247
new-patchmatchnet78.49 24478.19 24778.84 24284.13 24090.06 24777.11 25580.39 22879.57 24959.64 25566.01 24555.65 26075.62 24584.55 24480.70 25196.14 22890.77 246
Anonymous2023120683.84 23585.19 23482.26 23687.38 22892.87 23085.49 24083.65 21186.07 23263.44 24768.42 24069.01 23775.45 24693.34 18592.44 20398.12 19894.20 226
usedtu_dtu_shiyan275.82 24675.29 24976.44 24665.25 25987.28 25182.09 24976.55 23968.86 25566.94 23848.90 25560.22 25374.42 24783.98 24783.40 24093.39 25094.38 223
ambc73.83 25176.23 25385.13 25482.27 24784.16 23865.58 24252.82 25423.31 26673.55 24891.41 21685.26 23892.97 25294.70 219
test_method72.96 24778.68 24666.28 25050.17 26264.90 26075.45 25650.90 25987.89 20862.54 24862.98 24868.34 24070.45 24991.90 21282.41 24988.19 25692.35 240
Gipumacopyleft68.35 24966.71 25270.27 24774.16 25568.78 25963.93 26071.77 25383.34 24154.57 25934.37 25731.88 26368.69 25083.30 24985.53 23788.48 25579.78 254
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
test20.0382.92 23785.52 22879.90 24087.75 22691.84 24382.80 24682.99 21682.65 24460.32 25278.90 19570.50 22867.10 25192.05 21090.89 21398.44 18891.80 243
FPMVS75.84 24574.59 25077.29 24586.92 22983.89 25585.01 24180.05 22982.91 24260.61 25165.25 24660.41 25263.86 25275.60 25373.60 25587.29 25780.47 253
EMVS49.98 25446.76 25753.74 25464.96 26051.29 26337.81 26469.35 25651.83 25822.69 26429.57 25925.06 26457.28 25344.81 25956.11 25870.32 26268.64 259
E-PMN50.67 25347.85 25653.96 25364.13 26150.98 26438.06 26369.51 25551.40 25924.60 26329.46 26024.39 26556.07 25448.17 25859.70 25771.40 26170.84 258
PMVScopyleft63.12 1867.27 25066.39 25368.30 24877.98 24560.24 26159.53 26176.82 23666.65 25660.74 25054.39 25359.82 25451.24 25573.92 25670.52 25683.48 25879.17 255
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
tmp_tt66.88 24986.07 23473.86 25868.22 25833.38 26096.88 4980.67 16688.23 11678.82 18049.78 25682.68 25077.47 25383.19 259
MVEpermissive50.86 1949.54 25551.43 25547.33 25544.14 26359.20 26236.45 26560.59 25841.47 26031.14 26229.58 25817.06 26748.52 25762.22 25774.63 25463.12 26375.87 256
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
PMMVS264.36 25265.94 25462.52 25167.37 25877.44 25764.39 25969.32 25761.47 25734.59 26146.09 25641.03 26248.02 25874.56 25578.23 25291.43 25382.76 252
WB-MVS69.22 24876.91 24860.24 25285.80 23579.37 25656.86 26284.96 20181.50 24618.16 26576.85 20561.07 25034.23 25982.46 25181.81 25081.43 26075.31 257
testmvs12.09 25616.94 2586.42 2573.15 2646.08 2659.51 2673.84 26121.46 2615.31 26627.49 2616.76 26810.89 26017.06 26015.01 2595.84 26424.75 260
test1239.58 25713.53 2594.97 2581.31 2665.47 2668.32 2682.95 26218.14 2622.03 26820.82 2622.34 26910.60 26110.00 26114.16 2604.60 26523.77 261
GG-mvs-BLEND66.17 25194.91 8432.63 2561.32 26596.64 15291.40 2110.85 26394.39 1242.20 26790.15 10095.70 632.27 26296.39 10595.44 12897.78 20395.68 212
uanet_test0.00 2580.00 2600.00 2590.00 2670.00 2670.00 2690.00 2640.00 2630.00 2690.00 2630.00 2700.00 2630.00 2620.00 2610.00 2660.00 262
sosnet-low-res0.00 2580.00 2600.00 2590.00 2670.00 2670.00 2690.00 2640.00 2630.00 2690.00 2630.00 2700.00 2630.00 2620.00 2610.00 2660.00 262
sosnet0.00 2580.00 2600.00 2590.00 2670.00 2670.00 2690.00 2640.00 2630.00 2690.00 2630.00 2700.00 2630.00 2620.00 2610.00 2660.00 262
TestfortrainingZip99.35 697.66 998.71 299.42 50
RE-MVS-def63.50 246
9.1499.28 13
SR-MVS99.45 1097.61 1699.20 17
our_test_389.78 19793.84 22785.59 239
MTAPA96.83 1299.12 22
MTMP97.18 798.83 27
Patchmatch-RL test34.61 266
XVS96.60 7099.35 1996.82 7190.85 7298.72 3199.46 34
X-MVStestdata96.60 7099.35 1996.82 7190.85 7298.72 3199.46 34
mPP-MVS99.21 2498.29 39
NP-MVS95.32 95
Patchmtry95.96 17293.36 17075.99 24475.19 202