This table lists the benchmark results for the low-res many-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 Infoalllow-res
many-view
indooroutdoordelivery areaelectroforestplaygroundterrains
sort bysorted bysort bysort bysort bysort bysort bysort bysort by
IB-MVS98.10 1498.99 199.54 198.62 299.09 199.30 199.72 496.85 5100.00 1
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
TAPA-MVS(SR)98.82 299.09 398.64 198.19 399.26 398.69 1097.97 199.99 14
BP-MVSNet98.62 399.06 498.33 398.12 598.91 799.63 596.45 8100.00 1
Christian Sormann, Patrick Knöbelreiter, Andreas Kuhn, Mattia Rossi, Thomas Pock, Friedrich Fraundorfer: BP-MVSNet: Belief-Propagation-Layers for Multi-View-Stereo. 3DV 2020
3Dnovator99.16 398.47 498.71 898.31 497.42 899.29 299.18 696.47 799.99 14
CasMVSNet(SR_B)98.41 598.73 698.20 597.46 698.98 699.74 395.88 11100.00 1
CasMVSNet(base)98.41 599.20 297.89 798.39 298.64 1099.80 295.24 16100.00 1
CasMVSNet(SR_A)98.39 798.73 698.16 697.46 698.62 1199.99 195.88 11100.00 1
LPCS98.30 899.06 497.80 998.14 499.11 498.12 1396.17 999.97 21
LTVRE_ROB99.39 198.05 998.31 1097.88 896.88 1097.96 1999.16 796.52 699.74 31
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
3Dnovator+98.92 797.92 1098.20 1297.74 1196.41 1299.00 598.68 1195.53 1499.99 14
OpenMVScopyleft98.82 897.92 1098.10 1397.80 996.21 1398.82 898.97 895.61 1399.99 14
COLMAP_ROBcopyleft99.18 297.85 1298.22 1197.61 1296.43 1198.47 1397.24 1697.11 3100.00 1
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
GSE97.49 1398.49 996.82 1797.00 998.70 997.39 1594.39 1899.99 14
ACMH99.11 497.49 1397.48 1697.51 1395.19 1798.58 1296.49 1997.45 299.76 30
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
DeepC-MVS99.05 597.27 1597.00 2097.44 1494.01 2098.44 1496.93 1896.97 4100.00 1
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
DeepC-MVS_fast98.69 997.06 1697.33 1896.89 1694.66 1898.43 1597.04 1795.18 1799.99 14
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
ACMH+98.94 696.99 1797.41 1796.71 1895.30 1698.39 1695.66 2296.07 1099.52 33
TAPA-MVS98.54 1096.57 1895.76 2697.11 1591.52 2697.63 2398.40 1295.30 15100.00 1
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
DeepPCF-MVS98.38 1196.34 1997.00 2095.90 1994.01 2098.22 1896.15 2193.34 20100.00 1
COLMAP(SR)96.13 2097.71 1495.07 2395.48 1497.72 2195.42 2392.07 2399.93 25
COLMAP(base)95.84 2197.62 1594.64 2595.35 1597.81 2093.61 2692.51 2299.90 26
CIDER95.66 2296.26 2395.25 2092.52 2494.82 2798.92 992.02 24100.00 1
Qingshan Xu and Wenbing Tao: Learning Inverse Depth Regression for Multi-View Stereo with Correlation Cost Volume. AAAI 2020
ACMM98.37 1295.52 2395.93 2595.24 2191.88 2598.27 1793.88 2593.57 1999.98 20
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
ACMP98.32 1395.41 2496.44 2294.72 2492.92 2297.65 2293.55 2792.95 2199.97 21
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
PLCcopyleft97.83 1695.09 2597.04 1993.79 2794.26 1997.35 2492.40 2891.61 2599.82 27
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
PCF-MVS97.86 1595.04 2696.18 2494.29 2692.59 2395.57 2696.48 2090.81 2699.77 28
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
A-TVSNet + Gipumacopyleft94.94 2794.65 2795.14 2289.35 2797.25 2597.77 1490.41 2799.94 24
unsupervisedMVS_cas86.95 2892.46 2883.28 2884.95 2885.50 2886.57 3277.77 2899.97 21
PMVScopyleft94.32 1781.46 2987.48 2977.45 2975.34 2972.46 3394.59 2465.31 3099.62 32
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
example75.72 3073.81 3177.00 3047.61 3183.90 3089.76 3157.33 31100.00 1
MVEpermissive91.08 1873.93 3174.76 3073.38 3149.74 3084.47 2964.92 3370.73 2999.77 28
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
hgnet71.02 3273.45 3269.40 3246.90 3276.94 3191.32 2939.93 32100.00 1
DPSNet71.02 3273.45 3269.40 3246.90 3276.94 3191.32 2939.93 32100.00 1
CMPMVSbinary76.62 1919.37 3444.80 342.42 340.00 340.00 347.21 340.05 3489.59 34
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
dnet0.00 350.00 350.00 350.00 340.00 340.00 350.00 350.00 35