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
sorted bysort bysort bysort bysort bysort bysort bysort bysort by
DeepC-MVS_fast96.13 190.94 192.20 290.11 188.82 389.85 393.36 487.11 195.58 2
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
DeepPCF-MVS95.28 290.81 292.43 189.74 289.48 290.81 192.19 1086.22 395.37 4
PLCcopyleft94.95 388.67 1291.36 586.88 1487.76 1087.68 1289.37 2483.60 1294.95 5
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
DeepC-MVS94.87 489.95 391.17 689.14 588.02 689.92 291.23 1586.27 294.32 7
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
TAPA-MVS94.18 588.45 1389.81 1287.55 1186.30 1186.96 1592.78 882.90 1393.33 9
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
PCF-MVS93.95 689.54 689.88 1189.31 387.84 888.77 893.74 285.42 691.93 14
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
3Dnovator+93.91 785.28 1685.33 2185.24 1679.62 2185.33 1992.89 577.50 1691.04 18
3Dnovator93.79 885.21 1785.62 2084.93 1779.72 2085.52 1892.87 676.41 1791.53 16
ACMP92.88 988.85 1090.87 787.50 1285.90 1389.04 689.44 2384.01 1195.84 1
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
ACMM92.75 1088.44 1489.50 1487.73 1083.45 1589.50 489.60 2284.07 1095.56 3
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
OpenMVScopyleft92.33 1184.09 1984.77 2283.63 1878.56 2284.52 2191.52 1274.86 1990.98 19
ACMH+90.88 1289.52 790.82 888.65 687.84 888.79 791.27 1485.90 493.79 8
ACMH90.77 1388.84 1189.59 1388.35 986.19 1287.49 1392.09 1185.47 592.98 10
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
COLMAP_ROBcopyleft90.49 1483.26 2185.82 1981.55 2282.60 1784.70 2090.60 1669.35 2189.04 22
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
IB-MVS89.56 1583.97 2086.30 1882.42 2181.06 1988.13 990.15 2068.99 2391.55 15
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
LTVRE_ROB87.32 1686.71 1587.48 1586.19 1585.19 1482.89 2392.87 682.80 1489.78 21
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
CMPMVSbinary65.18 1714.29 3435.51 340.14 340.00 340.00 340.42 340.00 3471.01 34
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
PMVScopyleft63.12 1852.32 3365.84 2943.30 3347.64 2947.26 3264.19 3218.44 3384.04 30
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
MVEpermissive50.86 1954.30 3058.07 3151.79 2934.01 3356.04 2949.97 3349.37 2882.12 31
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
unsupervisedMVS_cas67.52 2874.85 2862.63 2862.01 2866.63 2774.37 2846.89 2987.68 26
BP-MVSNet83.21 2286.41 1781.08 2381.38 1886.89 1689.69 2166.65 2491.45 17
Christian Sormann, Patrick Knöbelreiter, Andreas Kuhn, Mattia Rossi, Thomas Pock, Friedrich Fraundorfer: BP-MVSNet: Belief-Propagation-Layers for Multi-View-Stereo. 3DV 2020
CasMVSNet(SR_A)68.49 2777.25 2662.65 2766.50 2659.94 2876.21 2751.79 2588.00 23
CasMVSNet(SR_B)74.84 2577.25 2673.23 2566.50 2681.27 2586.63 2551.79 2588.00 23
TAPA-MVS(SR)89.65 490.36 989.18 488.43 588.13 994.10 185.31 792.29 12
CasMVSNet(base)74.01 2677.33 2571.79 2667.32 2579.52 2685.68 2650.18 2787.34 27
GSE89.62 591.37 488.46 890.21 189.35 593.42 382.60 1592.54 11
LPCS84.61 1886.97 1683.04 2083.12 1682.92 2291.30 1374.89 1890.82 20
COLMAP(SR)89.14 890.11 1088.50 787.96 788.10 1192.26 985.14 892.27 13
COLMAP(base)88.99 991.50 387.31 1388.59 487.20 1490.52 1784.20 994.42 6
dnet0.00 350.00 350.00 350.00 340.00 340.00 350.00 340.00 35
CIDER80.48 2480.41 2480.54 2475.96 2381.91 2490.42 1869.28 2284.85 29
Qingshan Xu and Wenbing Tao: Learning Inverse Depth Regression for Multi-View Stereo with Correlation Cost Volume. AAAI 2020
A-TVSNet + Gipumacopyleft82.64 2381.67 2383.28 1975.62 2485.59 1790.18 1974.08 2087.73 25
hgnet52.82 3157.62 3249.62 3136.41 3048.11 3072.42 3028.33 3178.82 32
example54.42 2959.80 3050.84 3034.60 3242.22 3373.18 2937.13 3085.00 28
DPSNet52.82 3157.62 3249.62 3136.41 3048.11 3072.42 3028.33 3178.82 32