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
DeepC-MVS_fast86.59 273.32 472.00 474.20 471.55 674.06 584.63 563.92 472.44 4
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
3Dnovator80.58 860.77 1960.30 1961.08 2053.83 2264.91 1977.54 1940.78 2266.77 14
OpenMVScopyleft77.91 1159.23 2259.17 2259.28 2253.66 2363.31 2175.83 2238.70 2364.69 21
3Dnovator+81.14 561.76 1860.65 1762.50 1855.47 1965.67 1879.28 1642.55 1865.84 18
DeepPCF-MVS86.71 175.56 175.59 175.55 374.79 277.01 184.87 364.76 376.39 1
DeepC-MVS84.14 372.02 672.53 371.68 972.70 574.89 481.64 1358.50 1072.36 5
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
PLCcopyleft81.02 671.17 870.25 771.79 869.95 870.68 1184.71 459.97 970.56 7
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
TAPA-MVS80.99 770.99 975.47 268.01 1479.31 166.60 1780.76 1456.68 1171.63 6
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
PCF-MVS82.38 474.21 371.14 676.26 272.95 375.68 286.62 266.49 269.34 10
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
IB-MVS74.10 1262.63 1761.42 1663.45 1656.43 1872.44 1076.01 2141.89 2066.40 17
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
ACMM78.09 1070.74 1068.97 1171.91 764.11 1372.53 982.64 1060.58 673.84 2
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
ACMP79.58 972.70 572.00 473.16 571.36 775.34 382.56 1161.58 572.64 3
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
COLMAP_ROBcopyleft66.31 1556.93 2457.55 2356.51 2453.13 2458.44 2276.99 2034.10 2461.97 22
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
ACMH71.22 1467.50 1465.13 1469.07 1261.81 1568.46 1482.90 855.85 1368.45 11
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
CMPMVSbinary50.59 178.59 3421.41 340.05 340.00 340.00 340.15 340.00 3442.82 34
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
ACMH+72.14 1371.51 770.05 972.49 669.87 973.36 683.87 760.23 770.23 8
LTVRE_ROB63.07 1659.37 2160.22 2058.80 2355.01 2057.68 2471.12 2447.61 1665.43 20
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
PMVScopyleft36.83 1826.97 3335.46 3321.31 3313.72 3321.30 3035.44 337.19 3357.21 28
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
MVEpermissive25.07 1935.01 2943.85 2929.12 2932.82 2928.76 2838.03 3220.55 2954.88 30
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
unsupervisedMVS_cas45.37 2748.59 2843.22 2739.10 2844.79 2761.57 2723.30 2858.08 27
BP-MVSNet63.84 1664.88 1563.14 1763.04 1472.63 775.71 2341.09 2166.71 15
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)40.58 2849.65 2534.53 2840.21 2527.33 2949.81 2826.45 2559.09 25
CasMVSNet(SR_B)50.41 2549.65 2550.92 2540.21 2557.58 2568.72 2526.45 2559.09 25
TAPA-MVS(SR)68.09 1366.03 1369.47 1165.58 1269.51 1282.49 1256.41 1266.48 16
CasMVSNet(base)48.92 2649.64 2748.44 2639.87 2754.66 2666.45 2624.20 2759.42 24
GSE68.46 1268.46 1268.45 1368.49 1168.47 1382.85 954.04 1468.42 12
LPCS60.42 2059.85 2160.80 2153.87 2158.18 2378.22 1746.01 1765.83 19
COLMAP(SR)74.52 270.25 777.38 172.76 472.54 888.95 170.64 167.74 13
COLMAP(base)70.50 1169.79 1070.97 1069.37 1068.30 1584.56 660.04 870.21 9
dnet0.00 350.00 350.00 350.00 340.00 340.00 350.00 340.00 35
CIDER58.94 2355.33 2461.34 1958.29 1764.08 2077.68 1842.26 1952.38 31
Qingshan Xu and Wenbing Tao: Learning Inverse Depth Regression for Multi-View Stereo with Correlation Cost Volume. AAAI 2020
A-TVSNet + Gipumacopyleft63.85 1560.37 1866.18 1561.29 1667.86 1680.67 1550.01 1559.45 23
hgnet28.34 3135.56 3123.53 3125.58 3014.06 3241.95 3014.58 3145.54 32
example30.14 3036.56 3025.86 3016.24 3214.08 3145.65 2917.85 3056.87 29
DPSNet28.34 3135.56 3123.53 3125.58 3014.06 3241.95 3014.58 3145.54 32