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
indooroutdoorbotani.boulde.bridgedoorexhibi.lectur.living.loungeobserv.old co.statueterrac.
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test_fmvsm_n_192097.55 1697.89 396.53 10598.41 8591.73 13098.01 6699.02 196.37 1399.30 798.92 2392.39 4499.79 4699.16 1499.46 4698.08 228
PGM-MVS96.81 5896.53 6997.65 4799.35 2593.53 6597.65 12998.98 292.22 17797.14 7698.44 6491.17 7199.85 2194.35 16399.46 4699.57 36
MVS_111021_HR96.68 6996.58 6896.99 8498.46 7992.31 11096.20 30598.90 394.30 8695.86 13497.74 14492.33 4599.38 13696.04 9699.42 5699.28 77
test_fmvsmconf_n97.49 2197.56 1697.29 6497.44 16592.37 10797.91 8598.88 495.83 1998.92 2399.05 1491.45 6199.80 4099.12 1699.46 4699.69 14
lecture97.58 1597.63 1297.43 5899.37 1992.93 8698.86 798.85 595.27 3498.65 3698.90 2591.97 5299.80 4097.63 3899.21 8399.57 36
ACMMPcopyleft96.27 8695.93 8997.28 6699.24 3392.62 9898.25 4098.81 692.99 14094.56 18298.39 6888.96 10299.85 2194.57 15797.63 16399.36 72
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
MVS_111021_LR96.24 8796.19 8596.39 12498.23 10591.35 15396.24 30298.79 793.99 9595.80 13697.65 15489.92 9199.24 14995.87 10099.20 8898.58 172
patch_mono-296.83 5797.44 2495.01 22599.05 4585.39 37296.98 21798.77 894.70 6697.99 5198.66 4393.61 2199.91 197.67 3799.50 4099.72 13
fmvsm_s_conf0.5_n96.85 5497.13 3196.04 14998.07 12090.28 20497.97 7798.76 994.93 4898.84 2899.06 1288.80 10699.65 7999.06 1898.63 12398.18 213
fmvsm_l_conf0.5_n97.65 997.75 897.34 6198.21 10692.75 9297.83 9898.73 1095.04 4599.30 798.84 3693.34 2499.78 4999.32 799.13 9899.50 52
fmvsm_s_conf0.5_n_a96.75 6296.93 4696.20 14097.64 15190.72 18698.00 6798.73 1094.55 7398.91 2499.08 888.22 11899.63 8898.91 2198.37 13698.25 208
fmvsm_s_conf0.5_n_1097.29 3197.40 2696.97 8698.24 10091.96 12697.89 8898.72 1296.77 799.46 399.06 1287.78 12799.84 2699.40 499.27 7599.12 92
fmvsm_l_conf0.5_n_997.59 1397.79 696.97 8698.28 9491.49 14497.61 13898.71 1397.10 599.70 198.93 2290.95 7699.77 5299.35 699.53 3399.65 20
FC-MVSNet-test93.94 18393.57 17595.04 22395.48 31691.45 14998.12 5598.71 1393.37 12290.23 29696.70 22287.66 12997.85 34791.49 22790.39 33695.83 322
UniMVSNet (Re)93.31 21092.55 22395.61 18995.39 32293.34 7197.39 17298.71 1393.14 13590.10 30594.83 32487.71 12898.03 32091.67 22583.99 41295.46 341
MED-MVS test98.00 2399.56 194.50 3598.69 1198.70 1693.45 11898.73 3098.53 5199.86 997.40 5099.58 2399.65 20
MED-MVS97.91 497.88 498.00 2399.56 194.50 3598.69 1198.70 1694.23 8798.73 3098.53 5195.46 799.86 997.40 5099.58 2399.65 20
TestfortrainingZip a97.92 397.70 1098.58 399.56 196.08 598.69 1198.70 1693.45 11898.73 3098.53 5195.46 799.86 996.63 6999.58 2399.80 1
fmvsm_l_conf0.5_n_a97.63 1197.76 797.26 6898.25 9992.59 10097.81 10398.68 1994.93 4899.24 1098.87 3193.52 2299.79 4699.32 799.21 8399.40 66
FIs94.09 17493.70 17195.27 21295.70 30592.03 12298.10 5698.68 1993.36 12490.39 29396.70 22287.63 13297.94 33892.25 20590.50 33595.84 321
WR-MVS_H92.00 26791.35 26493.95 29595.09 34989.47 24098.04 6398.68 1991.46 20888.34 35894.68 33185.86 17097.56 37985.77 35884.24 41094.82 392
fmvsm_s_conf0.5_n_496.75 6297.07 3495.79 17397.76 14289.57 23397.66 12898.66 2295.36 3099.03 1698.90 2588.39 11499.73 6199.17 1398.66 12198.08 228
VPA-MVSNet93.24 21292.48 22895.51 19995.70 30592.39 10697.86 9198.66 2292.30 17492.09 25495.37 29980.49 29298.40 27493.95 16985.86 38395.75 330
fmvsm_l_conf0.5_n_397.64 1097.60 1397.79 3498.14 11393.94 5697.93 8398.65 2496.70 899.38 599.07 1189.92 9199.81 3599.16 1499.43 5399.61 30
fmvsm_s_conf0.5_n_397.15 3697.36 2896.52 10797.98 12691.19 16197.84 9598.65 2497.08 699.25 999.10 687.88 12599.79 4699.32 799.18 9098.59 171
fmvsm_s_conf0.5_n_897.32 2897.48 2396.85 8898.28 9491.07 16997.76 10898.62 2697.53 299.20 1299.12 588.24 11799.81 3599.41 399.17 9199.67 15
fmvsm_s_conf0.5_n_296.62 7096.82 5596.02 15197.98 12690.43 19697.50 15398.59 2796.59 1099.31 699.08 884.47 20499.75 5899.37 598.45 13397.88 241
UniMVSNet_NR-MVSNet93.37 20892.67 21795.47 20595.34 32892.83 8997.17 20098.58 2892.98 14590.13 30195.80 27588.37 11697.85 34791.71 22283.93 41395.73 332
CSCG96.05 9095.91 9096.46 11799.24 3390.47 19398.30 3398.57 2989.01 30493.97 20397.57 16492.62 4099.76 5494.66 15199.27 7599.15 87
fmvsm_s_conf0.5_n_997.33 2797.57 1596.62 10198.43 8290.32 20397.80 10498.53 3097.24 499.62 299.14 288.65 10999.80 4099.54 199.15 9599.74 9
fmvsm_s_conf0.5_n_697.08 3997.17 3096.81 8997.28 17091.73 13097.75 11098.50 3194.86 5299.22 1198.78 4089.75 9499.76 5499.10 1799.29 7398.94 121
MSLP-MVS++96.94 4897.06 3596.59 10298.72 6491.86 12897.67 12598.49 3294.66 6997.24 7298.41 6792.31 4798.94 19596.61 7199.46 4698.96 114
HyFIR lowres test93.66 19592.92 20595.87 16298.24 10089.88 21994.58 38898.49 3285.06 40293.78 20695.78 27982.86 23998.67 24891.77 22095.71 23499.07 100
CHOSEN 1792x268894.15 16993.51 18196.06 14798.27 9689.38 24595.18 37198.48 3485.60 39293.76 20797.11 19783.15 22999.61 9091.33 23098.72 11999.19 83
fmvsm_s_conf0.5_n_796.45 7796.80 5795.37 20897.29 16988.38 28697.23 19498.47 3595.14 3998.43 4199.09 787.58 13399.72 6598.80 2599.21 8398.02 232
fmvsm_s_conf0.5_n_597.00 4596.97 4397.09 7997.58 16192.56 10197.68 12498.47 3594.02 9398.90 2598.89 2888.94 10399.78 4999.18 1299.03 10798.93 125
PHI-MVS96.77 6096.46 7697.71 4598.40 8694.07 5298.21 4798.45 3789.86 27497.11 7898.01 10492.52 4299.69 7396.03 9799.53 3399.36 72
fmvsm_s_conf0.1_n96.58 7396.77 6096.01 15496.67 22890.25 20597.91 8598.38 3894.48 7798.84 2899.14 288.06 12099.62 8998.82 2398.60 12598.15 217
PVSNet_BlendedMVS94.06 17593.92 16594.47 26298.27 9689.46 24296.73 25098.36 3990.17 26694.36 18895.24 30788.02 12199.58 9893.44 18390.72 33194.36 413
PVSNet_Blended94.87 14494.56 14395.81 16998.27 9689.46 24295.47 35098.36 3988.84 31394.36 18896.09 26488.02 12199.58 9893.44 18398.18 14598.40 193
3Dnovator91.36 595.19 12694.44 15297.44 5796.56 24393.36 7098.65 1698.36 3994.12 9089.25 33598.06 9882.20 25699.77 5293.41 18599.32 7199.18 84
FOURS199.55 493.34 7199.29 198.35 4294.98 4698.49 39
DPE-MVScopyleft97.86 697.65 1198.47 699.17 3895.78 897.21 19798.35 4295.16 3898.71 3598.80 3895.05 1299.89 396.70 6899.73 199.73 12
Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025
ME-MVS97.54 1797.39 2798.00 2399.21 3694.50 3597.75 11098.34 4494.23 8798.15 4698.53 5193.32 2799.84 2697.40 5099.58 2399.65 20
fmvsm_s_conf0.1_n_a96.40 7996.47 7396.16 14295.48 31690.69 18797.91 8598.33 4594.07 9198.93 2099.14 287.44 14199.61 9098.63 2698.32 13898.18 213
HFP-MVS97.14 3796.92 4797.83 3099.42 1094.12 5098.52 2098.32 4693.21 12797.18 7398.29 8492.08 4999.83 3195.63 11399.59 1999.54 45
ACMMPR97.07 4196.84 5197.79 3499.44 993.88 5798.52 2098.31 4793.21 12797.15 7598.33 7891.35 6599.86 995.63 11399.59 1999.62 27
test_fmvsmvis_n_192096.70 6596.84 5196.31 12996.62 23091.73 13097.98 7198.30 4896.19 1496.10 12498.95 2089.42 9599.76 5498.90 2299.08 10297.43 268
APDe-MVScopyleft97.82 797.73 998.08 1999.15 3994.82 2998.81 898.30 4894.76 6498.30 4398.90 2593.77 1999.68 7597.93 2999.69 399.75 7
Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition
test072699.45 695.36 1498.31 3298.29 5094.92 5098.99 1898.92 2395.08 10
MSP-MVS97.59 1397.54 1797.73 4299.40 1493.77 6198.53 1998.29 5095.55 2798.56 3897.81 13693.90 1799.65 7996.62 7099.21 8399.77 3
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
DVP-MVS++98.06 197.99 198.28 1098.67 6795.39 1299.29 198.28 5294.78 6198.93 2098.87 3196.04 299.86 997.45 4699.58 2399.59 32
test_0728_SECOND98.51 599.45 695.93 698.21 4798.28 5299.86 997.52 4299.67 699.75 7
CP-MVS97.02 4396.81 5697.64 4999.33 2693.54 6498.80 998.28 5292.99 14096.45 11198.30 8391.90 5399.85 2195.61 11599.68 499.54 45
test_fmvsmconf0.1_n97.09 3897.06 3597.19 7395.67 30792.21 11497.95 8098.27 5595.78 2398.40 4299.00 1689.99 8999.78 4999.06 1899.41 5999.59 32
SED-MVS98.05 297.99 198.24 1199.42 1095.30 1898.25 4098.27 5595.13 4099.19 1398.89 2895.54 599.85 2197.52 4299.66 1099.56 40
test_241102_TWO98.27 5595.13 4098.93 2098.89 2894.99 1399.85 2197.52 4299.65 1399.74 9
test_241102_ONE99.42 1095.30 1898.27 5595.09 4399.19 1398.81 3795.54 599.65 79
SF-MVS97.39 2497.13 3198.17 1699.02 4895.28 2098.23 4498.27 5592.37 17198.27 4498.65 4593.33 2599.72 6596.49 7599.52 3599.51 49
SteuartSystems-ACMMP97.62 1297.53 1897.87 2898.39 8894.25 4498.43 2798.27 5595.34 3298.11 4798.56 4794.53 1499.71 6796.57 7399.62 1799.65 20
Skip Steuart: Steuart Systems R&D Blog.
test_one_060199.32 2795.20 2198.25 6195.13 4098.48 4098.87 3195.16 9
PVSNet_Blended_VisFu95.27 11694.91 12596.38 12598.20 10790.86 17997.27 18898.25 6190.21 26594.18 19697.27 18687.48 14099.73 6193.53 18097.77 16198.55 174
region2R97.07 4196.84 5197.77 3899.46 593.79 5998.52 2098.24 6393.19 13097.14 7698.34 7591.59 6099.87 795.46 11999.59 1999.64 25
PS-CasMVS91.55 28990.84 28893.69 31294.96 35388.28 28997.84 9598.24 6391.46 20888.04 36995.80 27579.67 30897.48 39187.02 33884.54 40795.31 355
DU-MVS92.90 23092.04 23995.49 20294.95 35492.83 8997.16 20198.24 6393.02 13990.13 30195.71 28283.47 22197.85 34791.71 22283.93 41395.78 326
9.1496.75 6198.93 5697.73 11598.23 6691.28 21797.88 5598.44 6493.00 2999.65 7995.76 10699.47 45
reproduce_model97.51 2097.51 2097.50 5498.99 5293.01 8297.79 10698.21 6795.73 2497.99 5199.03 1592.63 3999.82 3397.80 3199.42 5699.67 15
D2MVS91.30 30690.95 28292.35 36594.71 36985.52 36696.18 30798.21 6788.89 31186.60 39893.82 38079.92 30497.95 33689.29 28090.95 32893.56 429
reproduce-ours97.53 1897.51 2097.60 5198.97 5393.31 7397.71 12098.20 6995.80 2197.88 5598.98 1892.91 3099.81 3597.68 3399.43 5399.67 15
our_new_method97.53 1897.51 2097.60 5198.97 5393.31 7397.71 12098.20 6995.80 2197.88 5598.98 1892.91 3099.81 3597.68 3399.43 5399.67 15
SDMVSNet94.17 16793.61 17495.86 16598.09 11691.37 15197.35 17698.20 6993.18 13291.79 26297.28 18479.13 31698.93 19694.61 15492.84 29497.28 276
XVS97.18 3496.96 4597.81 3299.38 1794.03 5498.59 1798.20 6994.85 5396.59 9998.29 8491.70 5699.80 4095.66 10899.40 6199.62 27
X-MVStestdata91.71 27689.67 34497.81 3299.38 1794.03 5498.59 1798.20 6994.85 5396.59 9932.69 49191.70 5699.80 4095.66 10899.40 6199.62 27
ACMMP_NAP97.20 3396.86 4998.23 1299.09 4095.16 2397.60 13998.19 7492.82 15497.93 5498.74 4291.60 5999.86 996.26 8099.52 3599.67 15
CP-MVSNet91.89 27291.24 27193.82 30495.05 35088.57 27797.82 10098.19 7491.70 19788.21 36495.76 28081.96 26197.52 38987.86 30684.65 40195.37 351
ZNCC-MVS96.96 4696.67 6497.85 2999.37 1994.12 5098.49 2498.18 7692.64 16196.39 11398.18 9191.61 5899.88 495.59 11899.55 3099.57 36
SMA-MVScopyleft97.35 2597.03 4098.30 999.06 4495.42 1197.94 8198.18 7690.57 25698.85 2798.94 2193.33 2599.83 3196.72 6699.68 499.63 26
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
PEN-MVS91.20 31190.44 30793.48 32894.49 37787.91 30597.76 10898.18 7691.29 21487.78 37395.74 28180.35 29597.33 40285.46 36282.96 42395.19 366
DELS-MVS96.61 7196.38 8097.30 6397.79 14093.19 7895.96 31998.18 7695.23 3595.87 13397.65 15491.45 6199.70 7295.87 10099.44 5299.00 109
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
tfpnnormal89.70 36388.40 36993.60 32095.15 34590.10 20897.56 14498.16 8087.28 36586.16 40594.63 33577.57 34498.05 31674.48 44984.59 40592.65 442
VNet95.89 9895.45 10197.21 7198.07 12092.94 8597.50 15398.15 8193.87 9997.52 6297.61 16085.29 18899.53 11295.81 10595.27 24799.16 85
DeepPCF-MVS93.97 196.61 7197.09 3395.15 21698.09 11686.63 33896.00 31798.15 8195.43 2897.95 5398.56 4793.40 2399.36 13796.77 6399.48 4499.45 59
SD-MVS97.41 2397.53 1897.06 8298.57 7894.46 3897.92 8498.14 8394.82 5799.01 1798.55 4994.18 1697.41 39896.94 5899.64 1499.32 74
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
GST-MVS96.85 5496.52 7097.82 3199.36 2394.14 4998.29 3498.13 8492.72 15796.70 9198.06 9891.35 6599.86 994.83 14099.28 7499.47 58
UA-Net95.95 9595.53 9797.20 7297.67 14792.98 8497.65 12998.13 8494.81 5996.61 9798.35 7288.87 10499.51 11790.36 25597.35 17499.11 94
QAPM93.45 20692.27 23396.98 8596.77 22192.62 9898.39 2998.12 8684.50 41088.27 36297.77 14082.39 25399.81 3585.40 36398.81 11598.51 179
Vis-MVSNetpermissive95.23 12194.81 13196.51 11197.18 17591.58 14198.26 3998.12 8694.38 8494.90 17198.15 9382.28 25498.92 19891.45 22998.58 12799.01 106
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
OpenMVScopyleft89.19 1292.86 23391.68 25496.40 12295.34 32892.73 9498.27 3798.12 8684.86 40585.78 41197.75 14178.89 32699.74 5987.50 32898.65 12296.73 293
TranMVSNet+NR-MVSNet92.50 24291.63 25595.14 21794.76 36592.07 11997.53 15098.11 8992.90 15189.56 32396.12 25983.16 22897.60 37689.30 27983.20 42295.75 330
CPTT-MVS95.57 10895.19 11296.70 9299.27 3191.48 14698.33 3198.11 8987.79 35095.17 16198.03 10187.09 14899.61 9093.51 18199.42 5699.02 103
APD-MVScopyleft96.95 4796.60 6698.01 2199.03 4794.93 2897.72 11898.10 9191.50 20698.01 5098.32 8092.33 4599.58 9894.85 13799.51 3899.53 48
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
mPP-MVS96.86 5296.60 6697.64 4999.40 1493.44 6698.50 2398.09 9293.27 12695.95 13198.33 7891.04 7399.88 495.20 12299.57 2999.60 31
ZD-MVS99.05 4594.59 3398.08 9389.22 29797.03 8198.10 9492.52 4299.65 7994.58 15699.31 72
MTGPAbinary98.08 93
MTAPA97.08 3996.78 5997.97 2799.37 1994.42 4097.24 19098.08 9395.07 4496.11 12398.59 4690.88 7999.90 296.18 9299.50 4099.58 35
CNVR-MVS97.68 897.44 2498.37 898.90 5995.86 797.27 18898.08 9395.81 2097.87 5898.31 8194.26 1599.68 7597.02 5799.49 4399.57 36
DP-MVS Recon95.68 10395.12 11697.37 6099.19 3794.19 4697.03 20898.08 9388.35 33195.09 16397.65 15489.97 9099.48 12492.08 21498.59 12698.44 190
SR-MVS97.01 4496.86 4997.47 5699.09 4093.27 7597.98 7198.07 9893.75 10297.45 6498.48 6191.43 6399.59 9596.22 8399.27 7599.54 45
MCST-MVS97.18 3496.84 5198.20 1599.30 2995.35 1697.12 20498.07 9893.54 11296.08 12597.69 14993.86 1899.71 6796.50 7499.39 6399.55 43
NR-MVSNet92.34 25191.27 27095.53 19494.95 35493.05 8197.39 17298.07 9892.65 15984.46 42295.71 28285.00 19597.77 35889.71 26783.52 41995.78 326
MP-MVS-pluss96.70 6596.27 8397.98 2699.23 3594.71 3096.96 21998.06 10190.67 24695.55 14798.78 4091.07 7299.86 996.58 7299.55 3099.38 70
MP-MVS-pluss: MP-MVS-pluss. MP-MVS-pluss
APD-MVS_3200maxsize96.81 5896.71 6397.12 7699.01 5192.31 11097.98 7198.06 10193.11 13697.44 6598.55 4990.93 7799.55 10896.06 9399.25 8099.51 49
MP-MVScopyleft96.77 6096.45 7797.72 4399.39 1693.80 5898.41 2898.06 10193.37 12295.54 14998.34 7590.59 8399.88 494.83 14099.54 3299.49 54
Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo.
HPM-MVS_fast96.51 7496.27 8397.22 7099.32 2792.74 9398.74 1098.06 10190.57 25696.77 8898.35 7290.21 8699.53 11294.80 14499.63 1699.38 70
HPM-MVScopyleft96.69 6796.45 7797.40 5999.36 2393.11 8098.87 698.06 10191.17 22596.40 11297.99 10790.99 7499.58 9895.61 11599.61 1899.49 54
Chunlin Ren, Qingshan Xu, Shikun Zhang, Jiaqi Yang: Hierarchical Prior Mining for Non-local Multi-View Stereo. ICCV 2023
sss94.51 15893.80 16796.64 9497.07 18191.97 12496.32 29498.06 10188.94 30994.50 18596.78 21784.60 20199.27 14791.90 21596.02 22498.68 165
DeepC-MVS93.07 396.06 8995.66 9497.29 6497.96 12893.17 7997.30 18298.06 10193.92 9793.38 22298.66 4386.83 15099.73 6195.60 11799.22 8298.96 114
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
NCCC97.30 2997.03 4098.11 1898.77 6295.06 2697.34 17798.04 10895.96 1597.09 7997.88 12393.18 2899.71 6795.84 10499.17 9199.56 40
DeepC-MVS_fast93.89 296.93 4996.64 6597.78 3698.64 7394.30 4197.41 16798.04 10894.81 5996.59 9998.37 7091.24 6899.64 8795.16 12499.52 3599.42 65
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
SR-MVS-dyc-post96.88 5196.80 5797.11 7899.02 4892.34 10897.98 7198.03 11093.52 11597.43 6798.51 5691.40 6499.56 10696.05 9499.26 7899.43 63
RE-MVS-def96.72 6299.02 4892.34 10897.98 7198.03 11093.52 11597.43 6798.51 5690.71 8196.05 9499.26 7899.43 63
RPMNet88.98 36987.05 38394.77 24494.45 37987.19 32290.23 46598.03 11077.87 46392.40 24087.55 46880.17 29999.51 11768.84 47193.95 28097.60 261
save fliter98.91 5894.28 4297.02 21098.02 11395.35 31
TEST998.70 6594.19 4696.41 28098.02 11388.17 33596.03 12697.56 16692.74 3699.59 95
train_agg96.30 8595.83 9397.72 4398.70 6594.19 4696.41 28098.02 11388.58 32296.03 12697.56 16692.73 3799.59 9595.04 12699.37 6799.39 68
test_898.67 6794.06 5396.37 28898.01 11688.58 32295.98 13097.55 16892.73 3799.58 98
fmvsm_s_conf0.5_n_1197.30 2997.59 1496.43 11998.42 8391.37 15198.04 6398.00 11797.30 399.45 499.21 189.28 9799.80 4099.27 1099.35 6998.12 220
agg_prior98.67 6793.79 5998.00 11795.68 14399.57 105
test_prior97.23 6998.67 6792.99 8398.00 11799.41 13299.29 75
WR-MVS92.34 25191.53 25994.77 24495.13 34790.83 18096.40 28497.98 12091.88 19289.29 33295.54 29382.50 24997.80 35489.79 26685.27 39295.69 333
HPM-MVS++copyleft97.34 2696.97 4398.47 699.08 4296.16 497.55 14997.97 12195.59 2596.61 9797.89 11892.57 4199.84 2695.95 9999.51 3899.40 66
CANet96.39 8096.02 8897.50 5497.62 15493.38 6897.02 21097.96 12295.42 2994.86 17297.81 13687.38 14399.82 3396.88 6099.20 8899.29 75
114514_t93.95 18293.06 19996.63 9899.07 4391.61 13897.46 16497.96 12277.99 46193.00 23197.57 16486.14 16699.33 13989.22 28399.15 9598.94 121
IU-MVS99.42 1095.39 1297.94 12490.40 26398.94 1997.41 4999.66 1099.74 9
MSC_two_6792asdad98.86 198.67 6796.94 197.93 12599.86 997.68 3399.67 699.77 3
No_MVS98.86 198.67 6796.94 197.93 12599.86 997.68 3399.67 699.77 3
fmvsm_s_conf0.1_n_296.33 8496.44 7996.00 15597.30 16890.37 20297.53 15097.92 12796.52 1199.14 1599.08 883.21 22699.74 5999.22 1198.06 15097.88 241
Anonymous2023121190.63 33589.42 35194.27 27698.24 10089.19 25798.05 6297.89 12879.95 45288.25 36394.96 31672.56 38998.13 29989.70 26885.14 39495.49 337
原ACMM196.38 12598.59 7591.09 16897.89 12887.41 36195.22 16097.68 15090.25 8599.54 11087.95 30599.12 10098.49 182
CDPH-MVS95.97 9495.38 10697.77 3898.93 5694.44 3996.35 28997.88 13086.98 36996.65 9597.89 11891.99 5199.47 12592.26 20399.46 4699.39 68
test1197.88 130
EIA-MVS95.53 10995.47 10095.71 18497.06 18489.63 22997.82 10097.87 13293.57 10893.92 20495.04 31390.61 8298.95 19394.62 15398.68 12098.54 175
CS-MVS96.86 5297.06 3596.26 13598.16 11291.16 16699.09 397.87 13295.30 3397.06 8098.03 10191.72 5498.71 24197.10 5599.17 9198.90 130
无先验95.79 33197.87 13283.87 41899.65 7987.68 31998.89 136
3Dnovator+91.43 495.40 11094.48 15098.16 1796.90 20195.34 1798.48 2597.87 13294.65 7088.53 35498.02 10383.69 21799.71 6793.18 18998.96 11099.44 61
VPNet92.23 25991.31 26794.99 22795.56 31290.96 17297.22 19697.86 13692.96 14690.96 28496.62 23475.06 36598.20 29391.90 21583.65 41895.80 324
test_vis1_n_192094.17 16794.58 14292.91 34997.42 16682.02 42097.83 9897.85 13794.68 6798.10 4898.49 5870.15 40899.32 14197.91 3098.82 11497.40 270
DVP-MVScopyleft97.91 497.81 598.22 1499.45 695.36 1498.21 4797.85 13794.92 5098.73 3098.87 3195.08 1099.84 2697.52 4299.67 699.48 56
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
TSAR-MVS + MP.97.42 2297.33 2997.69 4699.25 3294.24 4598.07 6097.85 13793.72 10398.57 3798.35 7293.69 2099.40 13397.06 5699.46 4699.44 61
Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition
SPE-MVS-test96.89 5097.04 3996.45 11898.29 9391.66 13799.03 497.85 13795.84 1896.90 8397.97 10991.24 6898.75 23196.92 5999.33 7098.94 121
test_fmvsmconf0.01_n96.15 8895.85 9297.03 8392.66 43291.83 12997.97 7797.84 14195.57 2697.53 6199.00 1684.20 21099.76 5498.82 2399.08 10299.48 56
GDP-MVS95.62 10595.13 11497.09 7996.79 21493.26 7697.89 8897.83 14293.58 10796.80 8597.82 13483.06 23399.16 16194.40 16097.95 15698.87 140
balanced_conf0396.84 5696.89 4896.68 9397.63 15392.22 11398.17 5397.82 14394.44 7998.23 4597.36 17990.97 7599.22 15197.74 3299.66 1098.61 168
AdaColmapbinary94.34 16293.68 17296.31 12998.59 7591.68 13696.59 26997.81 14489.87 27392.15 25097.06 20083.62 22099.54 11089.34 27898.07 14997.70 254
MVSMamba_PlusPlus96.51 7496.48 7296.59 10298.07 12091.97 12498.14 5497.79 14590.43 26197.34 7097.52 16991.29 6799.19 15498.12 2899.64 1498.60 169
KinetiMVS95.26 11794.75 13696.79 9096.99 19492.05 12097.82 10097.78 14694.77 6396.46 10997.70 14780.62 28999.34 13892.37 20298.28 14098.97 111
mamv494.66 15596.10 8790.37 41998.01 12373.41 47196.82 23697.78 14689.95 27294.52 18397.43 17492.91 3099.09 17498.28 2799.16 9498.60 169
ETV-MVS96.02 9195.89 9196.40 12297.16 17692.44 10597.47 16297.77 14894.55 7396.48 10794.51 34191.23 7098.92 19895.65 11198.19 14497.82 249
新几何197.32 6298.60 7493.59 6397.75 14981.58 44395.75 13897.85 12890.04 8899.67 7786.50 34499.13 9898.69 164
旧先验198.38 8993.38 6897.75 14998.09 9692.30 4899.01 10899.16 85
EC-MVSNet96.42 7896.47 7396.26 13597.01 19291.52 14398.89 597.75 14994.42 8096.64 9697.68 15089.32 9698.60 25797.45 4699.11 10198.67 166
EI-MVSNet-Vis-set96.51 7496.47 7396.63 9898.24 10091.20 16096.89 22797.73 15294.74 6596.49 10698.49 5890.88 7999.58 9896.44 7698.32 13899.13 89
PAPM_NR95.01 13594.59 14196.26 13598.89 6090.68 18897.24 19097.73 15291.80 19392.93 23696.62 23489.13 10099.14 16689.21 28497.78 16098.97 111
Anonymous2024052991.98 26890.73 29595.73 18298.14 11389.40 24497.99 6897.72 15479.63 45493.54 21597.41 17669.94 41099.56 10691.04 23791.11 32498.22 210
CHOSEN 280x42093.12 21892.72 21694.34 27096.71 22787.27 31890.29 46497.72 15486.61 37691.34 27395.29 30184.29 20998.41 27393.25 18798.94 11197.35 273
EI-MVSNet-UG-set96.34 8396.30 8296.47 11598.20 10790.93 17696.86 23097.72 15494.67 6896.16 12298.46 6290.43 8499.58 9896.23 8297.96 15598.90 130
LS3D93.57 19992.61 22196.47 11597.59 15791.61 13897.67 12597.72 15485.17 40090.29 29598.34 7584.60 20199.73 6183.85 38698.27 14198.06 230
PAPR94.18 16693.42 18896.48 11497.64 15191.42 15095.55 34597.71 15888.99 30692.34 24695.82 27489.19 9899.11 16986.14 35097.38 17298.90 130
UGNet94.04 17793.28 19196.31 12996.85 20691.19 16197.88 9097.68 15994.40 8293.00 23196.18 25473.39 38499.61 9091.72 22198.46 13298.13 218
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
testdata95.46 20698.18 11188.90 26897.66 16082.73 43397.03 8198.07 9790.06 8798.85 20589.67 26998.98 10998.64 167
test1297.65 4798.46 7994.26 4397.66 16095.52 15090.89 7899.46 12699.25 8099.22 82
DTE-MVSNet90.56 33689.75 34293.01 34593.95 39287.25 31997.64 13397.65 16290.74 24187.12 38695.68 28579.97 30397.00 41583.33 38781.66 42994.78 399
TAPA-MVS90.10 792.30 25491.22 27395.56 19198.33 9189.60 23196.79 24297.65 16281.83 44091.52 26897.23 18987.94 12398.91 20071.31 46498.37 13698.17 216
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
sd_testset93.10 21992.45 22995.05 22198.09 11689.21 25496.89 22797.64 16493.18 13291.79 26297.28 18475.35 36498.65 25188.99 28992.84 29497.28 276
test_cas_vis1_n_192094.48 16094.55 14694.28 27596.78 21986.45 34497.63 13597.64 16493.32 12597.68 6098.36 7173.75 38099.08 17796.73 6599.05 10497.31 275
NormalMVS96.36 8296.11 8697.12 7699.37 1992.90 8797.99 6897.63 16695.92 1696.57 10297.93 11185.34 18699.50 12094.99 12999.21 8398.97 111
Elysia94.00 17993.12 19696.64 9496.08 29192.72 9597.50 15397.63 16691.15 22794.82 17397.12 19574.98 36799.06 18390.78 24298.02 15198.12 220
StellarMVS94.00 17993.12 19696.64 9496.08 29192.72 9597.50 15397.63 16691.15 22794.82 17397.12 19574.98 36799.06 18390.78 24298.02 15198.12 220
cdsmvs_eth3d_5k23.24 46030.99 4620.00 4790.00 5020.00 5040.00 49197.63 1660.00 4970.00 49896.88 21384.38 2060.00 4980.00 4970.00 4960.00 494
DPM-MVS95.69 10294.92 12498.01 2198.08 11995.71 1095.27 36297.62 17090.43 26195.55 14797.07 19991.72 5499.50 12089.62 27198.94 11198.82 146
sasdasda96.02 9195.45 10197.75 4097.59 15795.15 2498.28 3597.60 17194.52 7596.27 11796.12 25987.65 13099.18 15796.20 8894.82 25698.91 127
canonicalmvs96.02 9195.45 10197.75 4097.59 15795.15 2498.28 3597.60 17194.52 7596.27 11796.12 25987.65 13099.18 15796.20 8894.82 25698.91 127
test22298.24 10092.21 11495.33 35797.60 17179.22 45695.25 15897.84 13088.80 10699.15 9598.72 161
cascas91.20 31190.08 32494.58 25694.97 35289.16 25893.65 42997.59 17479.90 45389.40 32792.92 40875.36 36398.36 28192.14 20894.75 25996.23 303
E295.20 12395.00 12195.79 17396.79 21489.66 22696.82 23697.58 17592.35 17295.28 15697.83 13286.68 15298.76 22594.79 14796.92 19398.95 118
E395.20 12395.00 12195.79 17396.77 22189.66 22696.82 23697.58 17592.35 17295.28 15697.83 13286.69 15198.76 22594.79 14796.92 19398.95 118
h-mvs3394.15 16993.52 18096.04 14997.81 13990.22 20697.62 13797.58 17595.19 3696.74 8997.45 17183.67 21899.61 9095.85 10279.73 43698.29 206
E5new95.04 13194.88 12695.52 19596.62 23089.02 26297.29 18397.57 17892.54 16295.04 16497.89 11885.65 17898.77 21994.92 13296.44 21798.78 149
E6new95.04 13194.88 12695.52 19596.60 23489.02 26297.29 18397.57 17892.54 16295.04 16497.90 11685.66 17698.77 21994.92 13296.44 21798.78 149
E695.04 13194.88 12695.52 19596.60 23489.02 26297.29 18397.57 17892.54 16295.04 16497.90 11685.66 17698.77 21994.92 13296.44 21798.78 149
E595.04 13194.88 12695.52 19596.62 23089.02 26297.29 18397.57 17892.54 16295.04 16497.89 11885.65 17898.77 21994.92 13296.44 21798.78 149
MGCFI-Net95.94 9695.40 10597.56 5397.59 15794.62 3298.21 4797.57 17894.41 8196.17 12196.16 25787.54 13599.17 15996.19 9094.73 26198.91 127
MVSFormer95.37 11195.16 11395.99 15696.34 26791.21 15898.22 4597.57 17891.42 21096.22 11997.32 18086.20 16497.92 34194.07 16699.05 10498.85 142
test_djsdf93.07 22192.76 21194.00 28993.49 41188.70 27298.22 4597.57 17891.42 21090.08 30795.55 29282.85 24097.92 34194.07 16691.58 31595.40 348
OMC-MVS95.09 12894.70 13796.25 13898.46 7991.28 15496.43 27697.57 17892.04 18894.77 17797.96 11087.01 14999.09 17491.31 23196.77 19898.36 197
E495.09 12894.86 13095.77 17696.58 23889.56 23496.85 23197.56 18692.50 16695.03 16897.86 12686.03 16798.78 21594.71 15096.65 20798.96 114
viewcassd2359sk1195.26 11795.09 11895.80 17096.95 19889.72 22596.80 24197.56 18692.21 17995.37 15497.80 13887.17 14798.77 21994.82 14297.10 18798.90 130
PS-MVSNAJss93.74 19293.51 18194.44 26493.91 39489.28 25297.75 11097.56 18692.50 16689.94 30996.54 23788.65 10998.18 29693.83 17590.90 32995.86 318
casdiffmvs_mvgpermissive95.81 10195.57 9596.51 11196.87 20391.49 14497.50 15397.56 18693.99 9595.13 16297.92 11487.89 12498.78 21595.97 9897.33 17599.26 79
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
E3new95.28 11595.11 11795.80 17097.03 18989.76 22396.78 24697.54 19092.06 18795.40 15397.75 14187.49 13998.76 22594.85 13797.10 18798.88 138
jajsoiax92.42 24791.89 24794.03 28893.33 41988.50 28297.73 11597.53 19192.00 19088.85 34696.50 23975.62 36298.11 30393.88 17391.56 31695.48 338
mvs_tets92.31 25391.76 25093.94 29793.41 41688.29 28897.63 13597.53 19192.04 18888.76 34996.45 24174.62 37298.09 30893.91 17191.48 31795.45 343
dcpmvs_296.37 8197.05 3894.31 27398.96 5584.11 39397.56 14497.51 19393.92 9797.43 6798.52 5592.75 3599.32 14197.32 5499.50 4099.51 49
HQP_MVS93.78 19193.43 18694.82 23796.21 27189.99 21297.74 11397.51 19394.85 5391.34 27396.64 22781.32 27398.60 25793.02 19592.23 30395.86 318
plane_prior597.51 19398.60 25793.02 19592.23 30395.86 318
viewmanbaseed2359cas95.24 12095.02 12095.91 15996.87 20389.98 21496.82 23697.49 19692.26 17595.47 15197.82 13486.47 15798.69 24394.80 14497.20 18399.06 101
reproduce_monomvs91.30 30691.10 27791.92 37996.82 21182.48 41497.01 21397.49 19694.64 7188.35 35795.27 30470.53 40398.10 30495.20 12284.60 40495.19 366
viewmacassd2359aftdt95.07 13094.80 13295.87 16296.53 24889.84 22096.90 22697.48 19892.44 16895.36 15597.89 11885.23 18998.68 24594.40 16097.00 19199.09 96
PS-MVSNAJ95.37 11195.33 10895.49 20297.35 16790.66 18995.31 35997.48 19893.85 10096.51 10595.70 28488.65 10999.65 7994.80 14498.27 14196.17 307
API-MVS94.84 14694.49 14995.90 16097.90 13492.00 12397.80 10497.48 19889.19 29894.81 17596.71 22088.84 10599.17 15988.91 29198.76 11896.53 296
MG-MVS95.61 10695.38 10696.31 12998.42 8390.53 19196.04 31497.48 19893.47 11795.67 14498.10 9489.17 9999.25 14891.27 23298.77 11799.13 89
MAR-MVS94.22 16593.46 18396.51 11198.00 12592.19 11797.67 12597.47 20288.13 33993.00 23195.84 27284.86 19999.51 11787.99 30498.17 14697.83 248
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
CLD-MVS92.98 22592.53 22594.32 27196.12 28689.20 25595.28 36097.47 20292.66 15889.90 31095.62 28880.58 29098.40 27492.73 20092.40 30195.38 350
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
UniMVSNet_ETH3D91.34 30490.22 32094.68 24894.86 36187.86 30697.23 19497.46 20487.99 34089.90 31096.92 21166.35 43898.23 29090.30 25690.99 32797.96 235
nrg03094.05 17693.31 19096.27 13495.22 33994.59 3398.34 3097.46 20492.93 14791.21 28296.64 22787.23 14698.22 29194.99 12985.80 38495.98 317
XVG-OURS93.72 19393.35 18994.80 24297.07 18188.61 27594.79 38397.46 20491.97 19193.99 20197.86 12681.74 26798.88 20292.64 20192.67 29996.92 288
LPG-MVS_test92.94 22892.56 22294.10 28396.16 28188.26 29097.65 12997.46 20491.29 21490.12 30397.16 19279.05 31998.73 23592.25 20591.89 31195.31 355
LGP-MVS_train94.10 28396.16 28188.26 29097.46 20491.29 21490.12 30397.16 19279.05 31998.73 23592.25 20591.89 31195.31 355
MVS91.71 27690.44 30795.51 19995.20 34191.59 14096.04 31497.45 20973.44 47187.36 38295.60 28985.42 18599.10 17185.97 35597.46 16795.83 322
XVG-OURS-SEG-HR93.86 18893.55 17694.81 23997.06 18488.53 28195.28 36097.45 20991.68 19894.08 20097.68 15082.41 25298.90 20193.84 17492.47 30096.98 284
baseline95.58 10795.42 10496.08 14596.78 21990.41 19797.16 20197.45 20993.69 10695.65 14597.85 12887.29 14498.68 24595.66 10897.25 18199.13 89
ab-mvs93.57 19992.55 22396.64 9497.28 17091.96 12695.40 35397.45 20989.81 27893.22 22896.28 25079.62 31099.46 12690.74 24593.11 29198.50 180
xiu_mvs_v2_base95.32 11495.29 10995.40 20797.22 17290.50 19295.44 35297.44 21393.70 10596.46 10996.18 25488.59 11399.53 11294.79 14797.81 15996.17 307
131492.81 23792.03 24095.14 21795.33 33189.52 23996.04 31497.44 21387.72 35486.25 40395.33 30083.84 21598.79 21489.26 28197.05 19097.11 282
casdiffmvspermissive95.64 10495.49 9896.08 14596.76 22590.45 19497.29 18397.44 21394.00 9495.46 15297.98 10887.52 13898.73 23595.64 11297.33 17599.08 98
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
viewdifsd2359ckpt0794.76 15294.68 13895.01 22596.76 22587.41 31496.38 28697.43 21692.65 15994.52 18397.75 14185.55 18398.81 21194.36 16296.69 20498.82 146
XXY-MVS92.16 26191.23 27294.95 23394.75 36690.94 17597.47 16297.43 21689.14 29988.90 34296.43 24279.71 30798.24 28989.56 27287.68 36595.67 334
anonymousdsp92.16 26191.55 25893.97 29392.58 43489.55 23697.51 15297.42 21889.42 29288.40 35694.84 32380.66 28897.88 34691.87 21791.28 32194.48 408
Effi-MVS+94.93 14094.45 15196.36 12796.61 23391.47 14796.41 28097.41 21991.02 23394.50 18595.92 26887.53 13698.78 21593.89 17296.81 19798.84 145
RRT-MVS94.51 15894.35 15594.98 22996.40 26186.55 34197.56 14497.41 21993.19 13094.93 17097.04 20179.12 31799.30 14596.19 9097.32 17799.09 96
HQP3-MVS97.39 22192.10 308
HQP-MVS93.19 21592.74 21494.54 25995.86 29789.33 24896.65 26097.39 22193.55 10990.14 29795.87 27080.95 27998.50 26792.13 21192.10 30895.78 326
PLCcopyleft91.00 694.11 17393.43 18696.13 14398.58 7791.15 16796.69 25697.39 22187.29 36491.37 27296.71 22088.39 11499.52 11687.33 33197.13 18697.73 252
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
diffmvs_AUTHOR95.33 11395.27 11095.50 20196.37 26589.08 26096.08 31297.38 22493.09 13896.53 10497.74 14486.45 15898.68 24596.32 7897.48 16698.75 157
v7n90.76 32889.86 33593.45 33093.54 40887.60 31297.70 12397.37 22588.85 31287.65 37594.08 37181.08 27898.10 30484.68 37283.79 41794.66 405
UnsupCasMVSNet_eth85.99 41184.45 41590.62 41589.97 45282.40 41793.62 43097.37 22589.86 27478.59 46192.37 41865.25 44895.35 45082.27 40170.75 46994.10 419
viewdifsd2359ckpt1394.87 14494.52 14795.90 16096.88 20290.19 20796.92 22397.36 22791.26 21894.65 17997.46 17085.79 17398.64 25293.64 17896.76 19998.88 138
ACMM89.79 892.96 22692.50 22794.35 26896.30 26988.71 27197.58 14097.36 22791.40 21290.53 29096.65 22679.77 30698.75 23191.24 23391.64 31395.59 336
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
xiu_mvs_v1_base_debu95.01 13594.76 13395.75 17996.58 23891.71 13396.25 29997.35 22992.99 14096.70 9196.63 23182.67 24499.44 12996.22 8397.46 16796.11 313
xiu_mvs_v1_base95.01 13594.76 13395.75 17996.58 23891.71 13396.25 29997.35 22992.99 14096.70 9196.63 23182.67 24499.44 12996.22 8397.46 16796.11 313
xiu_mvs_v1_base_debi95.01 13594.76 13395.75 17996.58 23891.71 13396.25 29997.35 22992.99 14096.70 9196.63 23182.67 24499.44 12996.22 8397.46 16796.11 313
diffmvspermissive95.25 11995.13 11495.63 18796.43 26089.34 24795.99 31897.35 22992.83 15396.31 11597.37 17886.44 15998.67 24896.26 8097.19 18498.87 140
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
WTY-MVS94.71 15494.02 16396.79 9097.71 14592.05 12096.59 26997.35 22990.61 25294.64 18096.93 20886.41 16099.39 13491.20 23494.71 26298.94 121
viewdifsd2359ckpt0994.81 14994.37 15496.12 14496.91 19990.75 18596.94 22097.31 23490.51 25994.31 19097.38 17785.70 17598.71 24193.54 17996.75 20098.90 130
SSM_040794.54 15794.12 16295.80 17096.79 21490.38 19996.79 24297.29 23591.24 21993.68 20897.60 16185.03 19398.67 24892.14 20896.51 21098.35 199
SSM_040494.73 15394.31 15795.98 15797.05 18690.90 17897.01 21397.29 23591.24 21994.17 19797.60 16185.03 19398.76 22592.14 20897.30 17898.29 206
F-COLMAP93.58 19792.98 20395.37 20898.40 8688.98 26697.18 19997.29 23587.75 35390.49 29197.10 19885.21 19099.50 12086.70 34196.72 20397.63 256
VortexMVS92.88 23292.64 21893.58 32296.58 23887.53 31396.93 22297.28 23892.78 15689.75 31594.99 31482.73 24397.76 35994.60 15588.16 36095.46 341
XVG-ACMP-BASELINE90.93 32490.21 32193.09 34394.31 38585.89 35995.33 35797.26 23991.06 23289.38 32895.44 29868.61 42198.60 25789.46 27491.05 32594.79 397
PCF-MVS89.48 1191.56 28889.95 33296.36 12796.60 23492.52 10392.51 44997.26 23979.41 45588.90 34296.56 23684.04 21499.55 10877.01 44097.30 17897.01 283
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
ACMP89.59 1092.62 24192.14 23694.05 28696.40 26188.20 29497.36 17597.25 24191.52 20588.30 36096.64 22778.46 33198.72 24091.86 21891.48 31795.23 362
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
icg_test_0407_293.58 19793.46 18393.94 29796.19 27586.16 35393.73 42497.24 24291.54 20193.50 21797.04 20185.64 18196.91 41890.68 24795.59 23898.76 153
IMVS_040793.94 18393.75 16994.49 26196.19 27586.16 35396.35 28997.24 24291.54 20193.50 21797.04 20185.64 18198.54 26490.68 24795.59 23898.76 153
IMVS_040492.44 24591.92 24594.00 28996.19 27586.16 35393.84 42197.24 24291.54 20188.17 36697.04 20176.96 34997.09 40990.68 24795.59 23898.76 153
IMVS_040393.98 18193.79 16894.55 25896.19 27586.16 35396.35 28997.24 24291.54 20193.59 21297.04 20185.86 17098.73 23590.68 24795.59 23898.76 153
OPM-MVS93.28 21192.76 21194.82 23794.63 37290.77 18396.65 26097.18 24693.72 10391.68 26697.26 18779.33 31498.63 25492.13 21192.28 30295.07 371
Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS).
PatchMatch-RL92.90 23092.02 24195.56 19198.19 10990.80 18195.27 36297.18 24687.96 34191.86 26195.68 28580.44 29398.99 19184.01 38197.54 16596.89 289
alignmvs95.87 10095.23 11197.78 3697.56 16395.19 2297.86 9197.17 24894.39 8396.47 10896.40 24485.89 16999.20 15396.21 8795.11 25298.95 118
MVS_Test94.89 14294.62 14095.68 18596.83 20989.55 23696.70 25497.17 24891.17 22595.60 14696.11 26387.87 12698.76 22593.01 19797.17 18598.72 161
Fast-Effi-MVS+93.46 20392.75 21395.59 19096.77 22190.03 20996.81 24097.13 25088.19 33491.30 27694.27 35986.21 16398.63 25487.66 32196.46 21698.12 220
usedtu_dtu_shiyan191.65 28090.67 29994.60 25093.65 40590.95 17394.86 38097.12 25189.69 28189.21 33693.62 39081.17 27697.67 36687.54 32589.14 34795.17 368
FE-MVSNET391.65 28090.67 29994.60 25093.65 40590.95 17394.86 38097.12 25189.69 28189.21 33693.62 39081.17 27697.67 36687.54 32589.14 34795.17 368
EI-MVSNet93.03 22392.88 20793.48 32895.77 30386.98 32796.44 27497.12 25190.66 24891.30 27697.64 15786.56 15498.05 31689.91 26290.55 33395.41 345
MVSTER93.20 21492.81 21094.37 26796.56 24389.59 23297.06 20797.12 25191.24 21991.30 27695.96 26682.02 26098.05 31693.48 18290.55 33395.47 340
viewmambaseed2359dif94.28 16394.14 16094.71 24796.21 27186.97 32895.93 32197.11 25589.00 30595.00 16997.70 14786.02 16898.59 26193.71 17796.59 20998.57 173
test_yl94.78 15094.23 15896.43 11997.74 14391.22 15696.85 23197.10 25691.23 22295.71 14096.93 20884.30 20799.31 14393.10 19095.12 25098.75 157
DCV-MVSNet94.78 15094.23 15896.43 11997.74 14391.22 15696.85 23197.10 25691.23 22295.71 14096.93 20884.30 20799.31 14393.10 19095.12 25098.75 157
LTVRE_ROB88.41 1390.99 32089.92 33494.19 27796.18 27989.55 23696.31 29597.09 25887.88 34485.67 41295.91 26978.79 32798.57 26281.50 40489.98 33894.44 411
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
viewmsd2359difaftdt93.46 20393.23 19394.17 27896.12 28685.42 36896.43 27697.08 25992.91 14894.21 19398.00 10580.82 28598.74 23394.41 15989.05 34998.34 203
test_fmvs1_n92.73 23992.88 20792.29 36996.08 29181.05 42897.98 7197.08 25990.72 24396.79 8798.18 9163.07 45398.45 27197.62 4098.42 13597.36 271
v1091.04 31890.23 31893.49 32794.12 38888.16 29797.32 18097.08 25988.26 33388.29 36194.22 36482.17 25797.97 32886.45 34584.12 41194.33 414
viewdifsd2359ckpt1193.46 20393.22 19494.17 27896.11 28885.42 36896.43 27697.07 26292.91 14894.20 19498.00 10580.82 28598.73 23594.42 15889.04 35198.34 203
mamba_040893.70 19492.99 20095.83 16796.79 21490.38 19988.69 47497.07 26290.96 23593.68 20897.31 18284.97 19698.76 22590.95 23896.51 21098.35 199
SSM_0407293.51 20292.99 20095.05 22196.79 21490.38 19988.69 47497.07 26290.96 23593.68 20897.31 18284.97 19696.42 42990.95 23896.51 21098.35 199
v14419291.06 31790.28 31493.39 33193.66 40387.23 32196.83 23597.07 26287.43 36089.69 31894.28 35881.48 27098.00 32387.18 33584.92 40094.93 379
v119291.07 31690.23 31893.58 32293.70 40087.82 30896.73 25097.07 26287.77 35189.58 32194.32 35680.90 28397.97 32886.52 34385.48 38794.95 375
v891.29 30890.53 30693.57 32494.15 38788.12 29897.34 17797.06 26788.99 30688.32 35994.26 36183.08 23198.01 32287.62 32383.92 41594.57 407
mvs_anonymous93.82 18993.74 17094.06 28596.44 25985.41 37095.81 32997.05 26889.85 27690.09 30696.36 24687.44 14197.75 36193.97 16896.69 20499.02 103
IterMVS-LS92.29 25591.94 24493.34 33396.25 27086.97 32896.57 27297.05 26890.67 24689.50 32694.80 32686.59 15397.64 37189.91 26286.11 38295.40 348
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
v192192090.85 32690.03 32993.29 33593.55 40786.96 33096.74 24997.04 27087.36 36289.52 32594.34 35380.23 29897.97 32886.27 34685.21 39394.94 377
CDS-MVSNet94.14 17293.54 17795.93 15896.18 27991.46 14896.33 29397.04 27088.97 30893.56 21396.51 23887.55 13497.89 34589.80 26595.95 22698.44 190
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
SSC-MVS3.289.74 36289.26 35591.19 40495.16 34280.29 43994.53 39097.03 27291.79 19488.86 34594.10 36869.94 41097.82 35185.29 36486.66 37895.45 343
v114491.37 30190.60 30293.68 31493.89 39588.23 29296.84 23497.03 27288.37 33089.69 31894.39 34882.04 25997.98 32587.80 30985.37 38994.84 387
v124090.70 33289.85 33693.23 33793.51 41086.80 33196.61 26697.02 27487.16 36789.58 32194.31 35779.55 31197.98 32585.52 36185.44 38894.90 382
EPP-MVSNet95.22 12295.04 11995.76 17797.49 16489.56 23498.67 1597.00 27590.69 24494.24 19297.62 15989.79 9398.81 21193.39 18696.49 21498.92 126
V4291.58 28790.87 28493.73 30894.05 39188.50 28297.32 18096.97 27688.80 31889.71 31694.33 35482.54 24898.05 31689.01 28885.07 39694.64 406
test_fmvs193.21 21393.53 17892.25 37296.55 24581.20 42797.40 17196.96 27790.68 24596.80 8598.04 10069.25 41698.40 27497.58 4198.50 12897.16 281
FMVSNet291.31 30590.08 32494.99 22796.51 25292.21 11497.41 16796.95 27888.82 31588.62 35194.75 32873.87 37697.42 39785.20 36788.55 35795.35 352
ACMH87.59 1690.53 33789.42 35193.87 30296.21 27187.92 30397.24 19096.94 27988.45 32883.91 43296.27 25171.92 39298.62 25684.43 37589.43 34495.05 373
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
GBi-Net91.35 30290.27 31594.59 25296.51 25291.18 16397.50 15396.93 28088.82 31589.35 32994.51 34173.87 37697.29 40486.12 35188.82 35295.31 355
test191.35 30290.27 31594.59 25296.51 25291.18 16397.50 15396.93 28088.82 31589.35 32994.51 34173.87 37697.29 40486.12 35188.82 35295.31 355
FMVSNet391.78 27490.69 29895.03 22496.53 24892.27 11297.02 21096.93 28089.79 27989.35 32994.65 33477.01 34797.47 39286.12 35188.82 35295.35 352
FMVSNet189.88 35788.31 37094.59 25295.41 32191.18 16397.50 15396.93 28086.62 37587.41 38094.51 34165.94 44397.29 40483.04 39087.43 36895.31 355
GeoE93.89 18693.28 19195.72 18396.96 19789.75 22498.24 4396.92 28489.47 28992.12 25297.21 19084.42 20598.39 27987.71 31496.50 21399.01 106
SymmetryMVS95.94 9695.54 9697.15 7497.85 13692.90 8797.99 6896.91 28595.92 1696.57 10297.93 11185.34 18699.50 12094.99 12996.39 22199.05 102
miper_enhance_ethall91.54 29191.01 28093.15 34195.35 32787.07 32693.97 41396.90 28686.79 37389.17 33893.43 40286.55 15597.64 37189.97 26186.93 37394.74 402
eth_miper_zixun_eth91.02 31990.59 30392.34 36795.33 33184.35 38994.10 41096.90 28688.56 32488.84 34794.33 35484.08 21297.60 37688.77 29484.37 40995.06 372
TAMVS94.01 17893.46 18395.64 18696.16 28190.45 19496.71 25396.89 28889.27 29693.46 22096.92 21187.29 14497.94 33888.70 29695.74 23298.53 176
miper_ehance_all_eth91.59 28591.13 27692.97 34795.55 31386.57 33994.47 39496.88 28987.77 35188.88 34494.01 37386.22 16297.54 38589.49 27386.93 37394.79 397
v2v48291.59 28590.85 28793.80 30593.87 39688.17 29696.94 22096.88 28989.54 28689.53 32494.90 32081.70 26898.02 32189.25 28285.04 39895.20 363
CNLPA94.28 16393.53 17896.52 10798.38 8992.55 10296.59 26996.88 28990.13 26991.91 25897.24 18885.21 19099.09 17487.64 32297.83 15897.92 238
PAPM91.52 29290.30 31395.20 21495.30 33489.83 22193.38 43596.85 29286.26 38388.59 35295.80 27584.88 19898.15 29875.67 44595.93 22797.63 256
c3_l91.38 29990.89 28392.88 35195.58 31186.30 34794.68 38596.84 29388.17 33588.83 34894.23 36285.65 17897.47 39289.36 27784.63 40294.89 383
pm-mvs190.72 33189.65 34693.96 29494.29 38689.63 22997.79 10696.82 29489.07 30186.12 40795.48 29778.61 32997.78 35686.97 33981.67 42894.46 409
test_vis1_n92.37 25092.26 23492.72 35794.75 36682.64 41098.02 6596.80 29591.18 22497.77 5997.93 11158.02 46398.29 28797.63 3898.21 14397.23 279
CMPMVSbinary62.92 2185.62 41684.92 40887.74 44389.14 45773.12 47394.17 40896.80 29573.98 46873.65 47194.93 31866.36 43797.61 37583.95 38391.28 32192.48 447
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
MS-PatchMatch90.27 34489.77 34091.78 38894.33 38384.72 38695.55 34596.73 29786.17 38586.36 40295.28 30371.28 39797.80 35484.09 38098.14 14792.81 439
Effi-MVS+-dtu93.08 22093.21 19592.68 36096.02 29483.25 40397.14 20396.72 29893.85 10091.20 28393.44 39983.08 23198.30 28691.69 22495.73 23396.50 298
TSAR-MVS + GP.96.69 6796.49 7197.27 6798.31 9293.39 6796.79 24296.72 29894.17 8997.44 6597.66 15392.76 3499.33 13996.86 6297.76 16299.08 98
1112_ss93.37 20892.42 23096.21 13997.05 18690.99 17096.31 29596.72 29886.87 37289.83 31396.69 22486.51 15699.14 16688.12 30193.67 28598.50 180
PVSNet86.66 1892.24 25891.74 25393.73 30897.77 14183.69 40092.88 44496.72 29887.91 34393.00 23194.86 32278.51 33099.05 18686.53 34297.45 17198.47 185
miper_lstm_enhance90.50 34090.06 32891.83 38495.33 33183.74 39793.86 41996.70 30287.56 35887.79 37293.81 38183.45 22396.92 41787.39 32984.62 40394.82 392
v14890.99 32090.38 30992.81 35493.83 39785.80 36096.78 24696.68 30389.45 29188.75 35093.93 37782.96 23797.82 35187.83 30783.25 42094.80 395
ACMH+87.92 1490.20 34889.18 35793.25 33696.48 25586.45 34496.99 21696.68 30388.83 31484.79 42196.22 25370.16 40798.53 26584.42 37688.04 36194.77 400
CANet_DTU94.37 16193.65 17396.55 10496.46 25892.13 11896.21 30396.67 30594.38 8493.53 21697.03 20679.34 31399.71 6790.76 24498.45 13397.82 249
cl____90.96 32390.32 31192.89 35095.37 32586.21 35094.46 39696.64 30687.82 34788.15 36794.18 36582.98 23597.54 38587.70 31585.59 38594.92 381
HY-MVS89.66 993.87 18792.95 20496.63 9897.10 18092.49 10495.64 34296.64 30689.05 30393.00 23195.79 27885.77 17499.45 12889.16 28794.35 26497.96 235
Test_1112_low_res92.84 23591.84 24895.85 16697.04 18889.97 21695.53 34796.64 30685.38 39589.65 32095.18 30885.86 17099.10 17187.70 31593.58 29098.49 182
DIV-MVS_self_test90.97 32290.33 31092.88 35195.36 32686.19 35294.46 39696.63 30987.82 34788.18 36594.23 36282.99 23497.53 38787.72 31285.57 38694.93 379
Fast-Effi-MVS+-dtu92.29 25591.99 24293.21 33995.27 33585.52 36697.03 20896.63 30992.09 18589.11 34095.14 31080.33 29698.08 30987.54 32594.74 26096.03 316
UnsupCasMVSNet_bld82.13 43379.46 43890.14 42288.00 47082.47 41590.89 46296.62 31178.94 45775.61 46684.40 47756.63 46696.31 43177.30 43766.77 47891.63 458
cl2291.21 31090.56 30593.14 34296.09 29086.80 33194.41 39896.58 31287.80 34988.58 35393.99 37580.85 28497.62 37489.87 26486.93 37394.99 374
jason94.84 14694.39 15396.18 14195.52 31490.93 17696.09 31196.52 31389.28 29596.01 12997.32 18084.70 20098.77 21995.15 12598.91 11398.85 142
jason: jason.
tt080591.09 31590.07 32794.16 28195.61 30988.31 28797.56 14496.51 31489.56 28589.17 33895.64 28767.08 43598.38 28091.07 23688.44 35895.80 324
AUN-MVS91.76 27590.75 29394.81 23997.00 19388.57 27796.65 26096.49 31589.63 28392.15 25096.12 25978.66 32898.50 26790.83 24079.18 43997.36 271
hse-mvs293.45 20692.99 20094.81 23997.02 19188.59 27696.69 25696.47 31695.19 3696.74 8996.16 25783.67 21898.48 27095.85 10279.13 44097.35 273
SD_040390.01 35290.02 33089.96 42595.65 30876.76 46195.76 33396.46 31790.58 25586.59 39996.29 24982.12 25894.78 45473.00 45993.76 28398.35 199
EG-PatchMatch MVS87.02 39685.44 39991.76 39092.67 43185.00 38096.08 31296.45 31883.41 42679.52 45593.49 39657.10 46597.72 36379.34 42890.87 33092.56 444
KD-MVS_self_test85.95 41284.95 40788.96 43789.55 45679.11 45595.13 37396.42 31985.91 38884.07 43090.48 44170.03 40994.82 45380.04 42072.94 46192.94 437
FE-MVSNET286.36 40584.68 41391.39 39887.67 47286.47 34396.21 30396.41 32087.87 34579.31 45789.64 44965.29 44795.58 44582.42 39977.28 44692.14 455
pmmvs687.81 38486.19 39292.69 35991.32 44486.30 34797.34 17796.41 32080.59 45184.05 43194.37 35067.37 43097.67 36684.75 37179.51 43894.09 421
PMMVS92.86 23392.34 23194.42 26694.92 35786.73 33494.53 39096.38 32284.78 40794.27 19195.12 31283.13 23098.40 27491.47 22896.49 21498.12 220
RPSCF90.75 32990.86 28590.42 41896.84 20776.29 46495.61 34396.34 32383.89 41691.38 27197.87 12476.45 35398.78 21587.16 33692.23 30396.20 305
BP-MVS195.89 9895.49 9897.08 8196.67 22893.20 7798.08 5896.32 32494.56 7296.32 11497.84 13084.07 21399.15 16396.75 6498.78 11698.90 130
MSDG91.42 29790.24 31794.96 23297.15 17888.91 26793.69 42796.32 32485.72 39186.93 39596.47 24080.24 29798.98 19280.57 41795.05 25396.98 284
blended_shiyan687.55 38885.52 39893.64 31788.78 46288.50 28295.23 36596.30 32682.80 43186.09 40887.70 46673.69 38297.56 37987.70 31571.36 46694.86 384
blend_shiyan486.87 39784.61 41493.67 31588.87 46088.70 27295.17 37296.30 32682.80 43186.16 40587.11 47065.12 44997.55 38187.73 31072.21 46394.75 401
WBMVS90.69 33489.99 33192.81 35496.48 25585.00 38095.21 36896.30 32689.46 29089.04 34194.05 37272.45 39097.82 35189.46 27487.41 37095.61 335
blended_shiyan887.58 38785.55 39793.66 31688.76 46488.54 27995.21 36896.29 32982.81 43086.25 40387.73 46573.70 38197.58 37887.81 30871.42 46594.85 386
OurMVSNet-221017-090.51 33990.19 32291.44 39693.41 41681.25 42596.98 21796.28 33091.68 19886.55 40096.30 24874.20 37597.98 32588.96 29087.40 37195.09 370
FE-blended-shiyan787.29 39085.21 40393.53 32588.54 46788.21 29394.51 39396.27 33182.69 43485.92 40986.89 47273.03 38597.55 38187.68 31971.36 46694.83 388
MVP-Stereo90.74 33090.08 32492.71 35893.19 42188.20 29495.86 32596.27 33186.07 38684.86 42094.76 32777.84 34297.75 36183.88 38598.01 15392.17 454
Qingsong Yan: MVP-Stereo: A Parallel Multi-View Patchmatch Stereo Method with Dilation Matching for Photogrammetric Application.
lupinMVS94.99 13994.56 14396.29 13396.34 26791.21 15895.83 32796.27 33188.93 31096.22 11996.88 21386.20 16498.85 20595.27 12199.05 10498.82 146
BH-untuned92.94 22892.62 22093.92 30197.22 17286.16 35396.40 28496.25 33490.06 27089.79 31496.17 25683.19 22798.35 28287.19 33497.27 18097.24 278
CL-MVSNet_self_test86.31 40785.15 40489.80 42788.83 46181.74 42393.93 41696.22 33586.67 37485.03 41890.80 43978.09 33894.50 45574.92 44871.86 46493.15 435
IS-MVSNet94.90 14194.52 14796.05 14897.67 14790.56 19098.44 2696.22 33593.21 12793.99 20197.74 14485.55 18398.45 27189.98 26097.86 15799.14 88
FA-MVS(test-final)93.52 20192.92 20595.31 21196.77 22188.54 27994.82 38296.21 33789.61 28494.20 19495.25 30683.24 22599.14 16690.01 25996.16 22398.25 208
GA-MVS91.38 29990.31 31294.59 25294.65 37187.62 31194.34 40196.19 33890.73 24290.35 29493.83 37871.84 39397.96 33287.22 33393.61 28898.21 211
LuminaMVS94.89 14294.35 15596.53 10595.48 31692.80 9196.88 22996.18 33992.85 15295.92 13296.87 21581.44 27198.83 20896.43 7797.10 18797.94 237
IterMVS-SCA-FT90.31 34289.81 33891.82 38595.52 31484.20 39294.30 40496.15 34090.61 25287.39 38194.27 35975.80 35996.44 42887.34 33086.88 37794.82 392
IterMVS90.15 35089.67 34491.61 39295.48 31683.72 39894.33 40296.12 34189.99 27187.31 38494.15 36775.78 36196.27 43286.97 33986.89 37694.83 388
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
DP-MVS92.76 23891.51 26296.52 10798.77 6290.99 17097.38 17496.08 34282.38 43689.29 33297.87 12483.77 21699.69 7381.37 41096.69 20498.89 136
pmmvs490.93 32489.85 33694.17 27893.34 41890.79 18294.60 38796.02 34384.62 40887.45 37895.15 30981.88 26597.45 39487.70 31587.87 36394.27 418
ppachtmachnet_test88.35 37987.29 37891.53 39392.45 43783.57 40193.75 42395.97 34484.28 41185.32 41794.18 36579.00 32596.93 41675.71 44484.99 39994.10 419
Anonymous2024052186.42 40485.44 39989.34 43490.33 44979.79 44596.73 25095.92 34583.71 42183.25 43691.36 43663.92 45196.01 43378.39 43285.36 39092.22 452
ITE_SJBPF92.43 36395.34 32885.37 37395.92 34591.47 20787.75 37496.39 24571.00 39997.96 33282.36 40089.86 34093.97 424
test_fmvs289.77 36189.93 33389.31 43593.68 40276.37 46397.64 13395.90 34789.84 27791.49 26996.26 25258.77 46197.10 40894.65 15291.13 32394.46 409
USDC88.94 37087.83 37592.27 37094.66 37084.96 38293.86 41995.90 34787.34 36383.40 43495.56 29167.43 42998.19 29582.64 39889.67 34293.66 428
COLMAP_ROBcopyleft87.81 1590.40 34189.28 35493.79 30697.95 12987.13 32596.92 22395.89 34982.83 42986.88 39797.18 19173.77 37999.29 14678.44 43193.62 28794.95 375
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
VDD-MVS93.82 18993.08 19896.02 15197.88 13589.96 21797.72 11895.85 35092.43 16995.86 13498.44 6468.42 42599.39 13496.31 7994.85 25498.71 163
VDDNet93.05 22292.07 23796.02 15196.84 20790.39 19898.08 5895.85 35086.22 38495.79 13798.46 6267.59 42899.19 15494.92 13294.85 25498.47 185
mvsmamba94.57 15694.14 16095.87 16297.03 18989.93 21897.84 9595.85 35091.34 21394.79 17696.80 21680.67 28798.81 21194.85 13798.12 14898.85 142
Vis-MVSNet (Re-imp)94.15 16993.88 16694.95 23397.61 15587.92 30398.10 5695.80 35392.22 17793.02 23097.45 17184.53 20397.91 34488.24 30097.97 15499.02 103
MM97.29 3196.98 4298.23 1298.01 12395.03 2798.07 6095.76 35497.78 197.52 6298.80 3888.09 11999.86 999.44 299.37 6799.80 1
KD-MVS_2432*160084.81 42282.64 42591.31 39991.07 44685.34 37491.22 45795.75 35585.56 39383.09 43790.21 44467.21 43195.89 43577.18 43862.48 48292.69 440
miper_refine_blended84.81 42282.64 42591.31 39991.07 44685.34 37491.22 45795.75 35585.56 39383.09 43790.21 44467.21 43195.89 43577.18 43862.48 48292.69 440
FE-MVS92.05 26691.05 27895.08 22096.83 20987.93 30293.91 41895.70 35786.30 38194.15 19894.97 31576.59 35199.21 15284.10 37996.86 19598.09 227
tpm cat188.36 37887.21 38191.81 38695.13 34780.55 43492.58 44895.70 35774.97 46787.45 37891.96 42978.01 34198.17 29780.39 41988.74 35596.72 294
our_test_388.78 37487.98 37491.20 40392.45 43782.53 41293.61 43195.69 35985.77 39084.88 41993.71 38379.99 30296.78 42479.47 42586.24 37994.28 417
BH-w/o92.14 26391.75 25193.31 33496.99 19485.73 36395.67 33795.69 35988.73 32089.26 33494.82 32582.97 23698.07 31385.26 36696.32 22296.13 312
CR-MVSNet90.82 32789.77 34093.95 29594.45 37987.19 32290.23 46595.68 36186.89 37192.40 24092.36 42180.91 28197.05 41181.09 41493.95 28097.60 261
Patchmtry88.64 37687.25 37992.78 35694.09 38986.64 33589.82 46995.68 36180.81 44887.63 37692.36 42180.91 28197.03 41278.86 42985.12 39594.67 404
testing9191.90 27191.02 27994.53 26096.54 24686.55 34195.86 32595.64 36391.77 19591.89 25993.47 39869.94 41098.86 20390.23 25893.86 28298.18 213
BH-RMVSNet92.72 24091.97 24394.97 23197.16 17687.99 30196.15 30995.60 36490.62 25191.87 26097.15 19478.41 33298.57 26283.16 38897.60 16498.36 197
PVSNet_082.17 1985.46 41783.64 42090.92 40795.27 33579.49 45190.55 46395.60 36483.76 42083.00 43989.95 44671.09 39897.97 32882.75 39660.79 48495.31 355
guyue95.17 12794.96 12395.82 16896.97 19689.65 22897.56 14495.58 36694.82 5795.72 13997.42 17582.90 23898.84 20796.71 6796.93 19298.96 114
SCA91.84 27391.18 27593.83 30395.59 31084.95 38394.72 38495.58 36690.82 23892.25 24893.69 38575.80 35998.10 30486.20 34895.98 22598.45 187
MonoMVSNet91.92 26991.77 24992.37 36492.94 42583.11 40697.09 20695.55 36892.91 14890.85 28694.55 33881.27 27596.52 42793.01 19787.76 36497.47 267
usedtu_blend_shiyan587.06 39584.84 40993.69 31288.54 46788.70 27295.83 32795.54 36978.74 45885.92 40986.89 47273.03 38597.55 38187.73 31071.36 46694.83 388
AllTest90.23 34688.98 36093.98 29197.94 13086.64 33596.51 27395.54 36985.38 39585.49 41496.77 21870.28 40599.15 16380.02 42192.87 29296.15 310
TestCases93.98 29197.94 13086.64 33595.54 36985.38 39585.49 41496.77 21870.28 40599.15 16380.02 42192.87 29296.15 310
mmtdpeth89.70 36388.96 36191.90 38195.84 30284.42 38897.46 16495.53 37290.27 26494.46 18790.50 44069.74 41498.95 19397.39 5369.48 47292.34 448
tpmvs89.83 36089.15 35891.89 38294.92 35780.30 43893.11 44095.46 37386.28 38288.08 36892.65 41180.44 29398.52 26681.47 40689.92 33996.84 290
pmmvs589.86 35988.87 36492.82 35392.86 42786.23 34996.26 29895.39 37484.24 41287.12 38694.51 34174.27 37497.36 40187.61 32487.57 36694.86 384
PatchmatchNetpermissive91.91 27091.35 26493.59 32195.38 32384.11 39393.15 43995.39 37489.54 28692.10 25393.68 38782.82 24198.13 29984.81 37095.32 24698.52 177
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
tpmrst91.44 29691.32 26691.79 38795.15 34579.20 45493.42 43495.37 37688.55 32593.49 21993.67 38882.49 25098.27 28890.41 25389.34 34597.90 239
Anonymous2023120687.09 39486.14 39389.93 42691.22 44580.35 43696.11 31095.35 37783.57 42384.16 42693.02 40673.54 38395.61 44372.16 46186.14 38193.84 426
MIMVSNet184.93 42083.05 42290.56 41689.56 45584.84 38595.40 35395.35 37783.91 41580.38 45192.21 42657.23 46493.34 46970.69 46782.75 42693.50 430
TDRefinement86.53 40084.76 41191.85 38382.23 48484.25 39096.38 28695.35 37784.97 40484.09 42994.94 31765.76 44498.34 28584.60 37474.52 45792.97 436
TR-MVS91.48 29590.59 30394.16 28196.40 26187.33 31595.67 33795.34 38087.68 35591.46 27095.52 29476.77 35098.35 28282.85 39393.61 28896.79 292
EPNet_dtu91.71 27691.28 26992.99 34693.76 39983.71 39996.69 25695.28 38193.15 13487.02 39195.95 26783.37 22497.38 40079.46 42696.84 19697.88 241
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
FMVSNet587.29 39085.79 39591.78 38894.80 36487.28 31795.49 34995.28 38184.09 41483.85 43391.82 43062.95 45494.17 46078.48 43085.34 39193.91 425
MDTV_nov1_ep1390.76 29195.22 33980.33 43793.03 44295.28 38188.14 33892.84 23793.83 37881.34 27298.08 30982.86 39194.34 265
LF4IMVS87.94 38287.25 37989.98 42492.38 43980.05 44494.38 39995.25 38487.59 35784.34 42394.74 32964.31 45097.66 37084.83 36987.45 36792.23 451
TransMVSNet (Re)88.94 37087.56 37693.08 34494.35 38288.45 28597.73 11595.23 38587.47 35984.26 42595.29 30179.86 30597.33 40279.44 42774.44 45893.45 432
test20.0386.14 41085.40 40188.35 43890.12 45080.06 44395.90 32495.20 38688.59 32181.29 44693.62 39071.43 39692.65 47371.26 46581.17 43192.34 448
new-patchmatchnet83.18 42981.87 43287.11 44686.88 47575.99 46593.70 42595.18 38785.02 40377.30 46488.40 45865.99 44293.88 46574.19 45370.18 47091.47 463
MDA-MVSNet_test_wron85.87 41484.23 41790.80 41392.38 43982.57 41193.17 43795.15 38882.15 43767.65 47792.33 42478.20 33495.51 44777.33 43579.74 43594.31 416
YYNet185.87 41484.23 41790.78 41492.38 43982.46 41693.17 43795.14 38982.12 43867.69 47592.36 42178.16 33795.50 44877.31 43679.73 43694.39 412
Baseline_NR-MVSNet91.20 31190.62 30192.95 34893.83 39788.03 30097.01 21395.12 39088.42 32989.70 31795.13 31183.47 22197.44 39589.66 27083.24 42193.37 433
thres20092.23 25991.39 26394.75 24697.61 15589.03 26196.60 26895.09 39192.08 18693.28 22594.00 37478.39 33399.04 18981.26 41394.18 27196.19 306
ADS-MVSNet89.89 35688.68 36693.53 32595.86 29784.89 38490.93 46095.07 39283.23 42791.28 27991.81 43179.01 32397.85 34779.52 42391.39 31997.84 246
pmmvs-eth3d86.22 40884.45 41591.53 39388.34 46987.25 31994.47 39495.01 39383.47 42479.51 45689.61 45069.75 41395.71 44083.13 38976.73 45091.64 457
Anonymous20240521192.07 26590.83 28995.76 17798.19 10988.75 27097.58 14095.00 39486.00 38793.64 21197.45 17166.24 44099.53 11290.68 24792.71 29799.01 106
MDA-MVSNet-bldmvs85.00 41982.95 42491.17 40593.13 42383.33 40294.56 38995.00 39484.57 40965.13 48192.65 41170.45 40495.85 43773.57 45677.49 44594.33 414
ambc86.56 44983.60 48170.00 47685.69 48194.97 39680.60 45088.45 45737.42 48396.84 42182.69 39775.44 45592.86 438
testgi87.97 38187.21 38190.24 42192.86 42780.76 42996.67 25994.97 39691.74 19685.52 41395.83 27362.66 45694.47 45776.25 44288.36 35995.48 338
myMVS_eth3d2891.52 29290.97 28193.17 34096.91 19983.24 40495.61 34394.96 39892.24 17691.98 25693.28 40369.31 41598.40 27488.71 29595.68 23597.88 241
dp88.90 37288.26 37290.81 41194.58 37576.62 46292.85 44594.93 39985.12 40190.07 30893.07 40575.81 35898.12 30280.53 41887.42 36997.71 253
test_fmvs383.21 42883.02 42383.78 45386.77 47668.34 47996.76 24894.91 40086.49 37784.14 42889.48 45136.04 48491.73 47591.86 21880.77 43391.26 465
test_040286.46 40384.79 41091.45 39595.02 35185.55 36596.29 29794.89 40180.90 44582.21 44293.97 37668.21 42697.29 40462.98 47688.68 35691.51 460
tfpn200view992.38 24991.52 26094.95 23397.85 13689.29 25097.41 16794.88 40292.19 18293.27 22694.46 34678.17 33599.08 17781.40 40794.08 27596.48 299
CVMVSNet91.23 30991.75 25189.67 42895.77 30374.69 46696.44 27494.88 40285.81 38992.18 24997.64 15779.07 31895.58 44588.06 30395.86 23098.74 160
thres40092.42 24791.52 26095.12 21997.85 13689.29 25097.41 16794.88 40292.19 18293.27 22694.46 34678.17 33599.08 17781.40 40794.08 27596.98 284
tt032085.39 41883.12 42192.19 37493.44 41585.79 36196.19 30694.87 40571.19 47582.92 44091.76 43358.43 46296.81 42281.03 41578.26 44493.98 423
EPNet95.20 12394.56 14397.14 7592.80 42992.68 9797.85 9494.87 40596.64 992.46 23997.80 13886.23 16199.65 7993.72 17698.62 12499.10 95
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
testing9991.62 28390.72 29694.32 27196.48 25586.11 35895.81 32994.76 40791.55 20091.75 26493.44 39968.55 42398.82 20990.43 25293.69 28498.04 231
sc_t186.48 40284.10 41993.63 31893.45 41485.76 36296.79 24294.71 40873.06 47286.45 40194.35 35155.13 46997.95 33684.38 37778.55 44397.18 280
SixPastTwentyTwo89.15 36888.54 36890.98 40693.49 41180.28 44096.70 25494.70 40990.78 23984.15 42795.57 29071.78 39497.71 36484.63 37385.07 39694.94 377
thres100view90092.43 24691.58 25794.98 22997.92 13289.37 24697.71 12094.66 41092.20 18093.31 22494.90 32078.06 33999.08 17781.40 40794.08 27596.48 299
thres600view792.49 24491.60 25695.18 21597.91 13389.47 24097.65 12994.66 41092.18 18493.33 22394.91 31978.06 33999.10 17181.61 40394.06 27996.98 284
PatchT88.87 37387.42 37793.22 33894.08 39085.10 37889.51 47094.64 41281.92 43992.36 24388.15 46180.05 30197.01 41472.43 46093.65 28697.54 264
baseline192.82 23691.90 24695.55 19397.20 17490.77 18397.19 19894.58 41392.20 18092.36 24396.34 24784.16 21198.21 29289.20 28583.90 41697.68 255
AstraMVS94.82 14894.64 13995.34 21096.36 26688.09 29997.58 14094.56 41494.98 4695.70 14297.92 11481.93 26498.93 19696.87 6195.88 22898.99 110
UBG91.55 28990.76 29193.94 29796.52 25185.06 37995.22 36694.54 41590.47 26091.98 25692.71 41072.02 39198.74 23388.10 30295.26 24898.01 233
Gipumacopyleft67.86 45065.41 45275.18 46692.66 43273.45 47066.50 48894.52 41653.33 48657.80 48766.07 48730.81 48689.20 47948.15 48578.88 44262.90 487
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
testing1191.68 27990.75 29394.47 26296.53 24886.56 34095.76 33394.51 41791.10 23191.24 28193.59 39368.59 42298.86 20391.10 23594.29 26798.00 234
CostFormer91.18 31490.70 29792.62 36194.84 36281.76 42294.09 41194.43 41884.15 41392.72 23893.77 38279.43 31298.20 29390.70 24692.18 30697.90 239
tpm289.96 35389.21 35692.23 37394.91 35981.25 42593.78 42294.42 41980.62 45091.56 26793.44 39976.44 35497.94 33885.60 36092.08 31097.49 265
testing3-292.10 26492.05 23892.27 37097.71 14579.56 44897.42 16694.41 42093.53 11393.22 22895.49 29569.16 41799.11 16993.25 18794.22 26998.13 218
MGCNet96.74 6496.31 8198.02 2096.87 20394.65 3197.58 14094.39 42196.47 1297.16 7498.39 6887.53 13699.87 798.97 2099.41 5999.55 43
JIA-IIPM88.26 38087.04 38491.91 38093.52 40981.42 42489.38 47194.38 42280.84 44790.93 28580.74 47979.22 31597.92 34182.76 39591.62 31496.38 302
dmvs_re90.21 34789.50 34992.35 36595.47 32085.15 37695.70 33694.37 42390.94 23788.42 35593.57 39474.63 37195.67 44282.80 39489.57 34396.22 304
Patchmatch-test89.42 36687.99 37393.70 31195.27 33585.11 37788.98 47294.37 42381.11 44487.10 38993.69 38582.28 25497.50 39074.37 45194.76 25898.48 184
LCM-MVSNet72.55 44369.39 44782.03 45570.81 49565.42 48490.12 46794.36 42555.02 48565.88 47981.72 47824.16 49289.96 47674.32 45268.10 47690.71 468
ADS-MVSNet289.45 36588.59 36792.03 37795.86 29782.26 41890.93 46094.32 42683.23 42791.28 27991.81 43179.01 32395.99 43479.52 42391.39 31997.84 246
mvs5depth86.53 40085.08 40590.87 40888.74 46582.52 41391.91 45394.23 42786.35 38087.11 38893.70 38466.52 43697.76 35981.37 41075.80 45292.31 450
EU-MVSNet88.72 37588.90 36388.20 44093.15 42274.21 46896.63 26594.22 42885.18 39987.32 38395.97 26576.16 35694.98 45285.27 36586.17 38095.41 345
usedtu_dtu_shiyan280.00 43676.91 44289.27 43682.13 48579.69 44795.45 35194.20 42972.95 47375.80 46587.75 46444.44 47994.30 45970.64 46868.81 47593.84 426
tt0320-xc84.83 42182.33 42992.31 36893.66 40386.20 35196.17 30894.06 43071.26 47482.04 44492.22 42555.07 47096.72 42581.49 40575.04 45694.02 422
MIMVSNet88.50 37786.76 38793.72 31094.84 36287.77 30991.39 45594.05 43186.41 37987.99 37092.59 41463.27 45295.82 43977.44 43492.84 29497.57 263
OpenMVS_ROBcopyleft81.14 2084.42 42482.28 43090.83 40990.06 45184.05 39595.73 33594.04 43273.89 47080.17 45491.53 43559.15 46097.64 37166.92 47489.05 34990.80 467
TinyColmap86.82 39885.35 40291.21 40194.91 35982.99 40893.94 41594.02 43383.58 42281.56 44594.68 33162.34 45798.13 29975.78 44387.35 37292.52 446
ETVMVS90.52 33889.14 35994.67 24996.81 21387.85 30795.91 32393.97 43489.71 28092.34 24692.48 41665.41 44697.96 33281.37 41094.27 26898.21 211
IB-MVS87.33 1789.91 35488.28 37194.79 24395.26 33887.70 31095.12 37493.95 43589.35 29487.03 39092.49 41570.74 40299.19 15489.18 28681.37 43097.49 265
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
Syy-MVS87.13 39387.02 38587.47 44495.16 34273.21 47295.00 37693.93 43688.55 32586.96 39291.99 42775.90 35794.00 46261.59 47894.11 27295.20 363
myMVS_eth3d87.18 39286.38 39089.58 42995.16 34279.53 44995.00 37693.93 43688.55 32586.96 39291.99 42756.23 46794.00 46275.47 44794.11 27295.20 363
testing22290.31 34288.96 36194.35 26896.54 24687.29 31695.50 34893.84 43890.97 23491.75 26492.96 40762.18 45898.00 32382.86 39194.08 27597.76 251
test_f80.57 43579.62 43783.41 45483.38 48267.80 48193.57 43293.72 43980.80 44977.91 46387.63 46733.40 48592.08 47487.14 33779.04 44190.34 469
LCM-MVSNet-Re92.50 24292.52 22692.44 36296.82 21181.89 42196.92 22393.71 44092.41 17084.30 42494.60 33685.08 19297.03 41291.51 22697.36 17398.40 193
tpm90.25 34589.74 34391.76 39093.92 39379.73 44693.98 41293.54 44188.28 33291.99 25593.25 40477.51 34597.44 39587.30 33287.94 36298.12 220
ET-MVSNet_ETH3D91.49 29490.11 32395.63 18796.40 26191.57 14295.34 35693.48 44290.60 25475.58 46795.49 29580.08 30096.79 42394.25 16489.76 34198.52 177
LFMVS93.60 19692.63 21996.52 10798.13 11591.27 15597.94 8193.39 44390.57 25696.29 11698.31 8169.00 41899.16 16194.18 16595.87 22999.12 92
MVStest182.38 43280.04 43689.37 43287.63 47382.83 40995.03 37593.37 44473.90 46973.50 47294.35 35162.89 45593.25 47173.80 45465.92 47992.04 456
FE-MVSNET83.85 42581.97 43189.51 43087.19 47483.19 40595.21 36893.17 44583.45 42578.90 45989.05 45465.46 44593.84 46669.71 47075.56 45491.51 460
Patchmatch-RL test87.38 38986.24 39190.81 41188.74 46578.40 45888.12 47993.17 44587.11 36882.17 44389.29 45281.95 26295.60 44488.64 29777.02 44798.41 192
ttmdpeth85.91 41384.76 41189.36 43389.14 45780.25 44195.66 34093.16 44783.77 41983.39 43595.26 30566.24 44095.26 45180.65 41675.57 45392.57 443
test-LLR91.42 29791.19 27492.12 37594.59 37380.66 43194.29 40592.98 44891.11 22990.76 28892.37 41879.02 32198.07 31388.81 29296.74 20197.63 256
test-mter90.19 34989.54 34892.12 37594.59 37380.66 43194.29 40592.98 44887.68 35590.76 28892.37 41867.67 42798.07 31388.81 29296.74 20197.63 256
WB-MVSnew89.88 35789.56 34790.82 41094.57 37683.06 40795.65 34192.85 45087.86 34690.83 28794.10 36879.66 30996.88 41976.34 44194.19 27092.54 445
testing387.67 38586.88 38690.05 42396.14 28480.71 43097.10 20592.85 45090.15 26887.54 37794.55 33855.70 46894.10 46173.77 45594.10 27495.35 352
test_method66.11 45164.89 45369.79 46972.62 49335.23 50165.19 48992.83 45220.35 49165.20 48088.08 46243.14 48182.70 48673.12 45863.46 48191.45 464
test0.0.03 189.37 36788.70 36591.41 39792.47 43685.63 36495.22 36692.70 45391.11 22986.91 39693.65 38979.02 32193.19 47278.00 43389.18 34695.41 345
new_pmnet82.89 43081.12 43588.18 44189.63 45480.18 44291.77 45492.57 45476.79 46575.56 46888.23 46061.22 45994.48 45671.43 46382.92 42489.87 470
mvsany_test193.93 18593.98 16493.78 30794.94 35686.80 33194.62 38692.55 45588.77 31996.85 8498.49 5888.98 10198.08 30995.03 12795.62 23796.46 301
thisisatest051592.29 25591.30 26895.25 21396.60 23488.90 26894.36 40092.32 45687.92 34293.43 22194.57 33777.28 34699.00 19089.42 27695.86 23097.86 245
thisisatest053093.03 22392.21 23595.49 20297.07 18189.11 25997.49 16192.19 45790.16 26794.09 19996.41 24376.43 35599.05 18690.38 25495.68 23598.31 205
tttt051792.96 22692.33 23294.87 23697.11 17987.16 32497.97 7792.09 45890.63 25093.88 20597.01 20776.50 35299.06 18390.29 25795.45 24498.38 195
K. test v387.64 38686.75 38890.32 42093.02 42479.48 45296.61 26692.08 45990.66 24880.25 45394.09 37067.21 43196.65 42685.96 35680.83 43294.83 388
TESTMET0.1,190.06 35189.42 35191.97 37894.41 38180.62 43394.29 40591.97 46087.28 36590.44 29292.47 41768.79 41997.67 36688.50 29996.60 20897.61 260
PM-MVS83.48 42781.86 43388.31 43987.83 47177.59 46093.43 43391.75 46186.91 37080.63 44989.91 44744.42 48095.84 43885.17 36876.73 45091.50 462
baseline291.63 28290.86 28593.94 29794.33 38386.32 34695.92 32291.64 46289.37 29386.94 39494.69 33081.62 26998.69 24388.64 29794.57 26396.81 291
APD_test179.31 43877.70 44084.14 45289.11 45969.07 47892.36 45291.50 46369.07 47773.87 47092.63 41339.93 48294.32 45870.54 46980.25 43489.02 472
FPMVS71.27 44469.85 44675.50 46574.64 49059.03 49091.30 45691.50 46358.80 48257.92 48688.28 45929.98 48885.53 48553.43 48382.84 42581.95 478
door91.13 465
door-mid91.06 466
EGC-MVSNET68.77 44963.01 45586.07 45192.49 43582.24 41993.96 41490.96 4670.71 4962.62 49790.89 43853.66 47193.46 46757.25 48184.55 40682.51 477
mvsany_test383.59 42682.44 42887.03 44783.80 47973.82 46993.70 42590.92 46886.42 37882.51 44190.26 44346.76 47895.71 44090.82 24176.76 44991.57 459
pmmvs379.97 43777.50 44187.39 44582.80 48379.38 45392.70 44790.75 46970.69 47678.66 46087.47 46951.34 47493.40 46873.39 45769.65 47189.38 471
UWE-MVS89.91 35489.48 35091.21 40195.88 29678.23 45994.91 37990.26 47089.11 30092.35 24594.52 34068.76 42097.96 33283.95 38395.59 23897.42 269
DSMNet-mixed86.34 40686.12 39487.00 44889.88 45370.43 47494.93 37890.08 47177.97 46285.42 41692.78 40974.44 37393.96 46474.43 45095.14 24996.62 295
MVS-HIRNet82.47 43181.21 43486.26 45095.38 32369.21 47788.96 47389.49 47266.28 47980.79 44874.08 48468.48 42497.39 39971.93 46295.47 24392.18 453
WB-MVS76.77 44076.63 44377.18 46085.32 47756.82 49294.53 39089.39 47382.66 43571.35 47389.18 45375.03 36688.88 48035.42 48966.79 47785.84 474
test111193.19 21592.82 20994.30 27497.58 16184.56 38798.21 4789.02 47493.53 11394.58 18198.21 8872.69 38799.05 18693.06 19398.48 13199.28 77
SSC-MVS76.05 44175.83 44476.72 46484.77 47856.22 49394.32 40388.96 47581.82 44170.52 47488.91 45574.79 37088.71 48133.69 49064.71 48085.23 475
ECVR-MVScopyleft93.19 21592.73 21594.57 25797.66 14985.41 37098.21 4788.23 47693.43 12094.70 17898.21 8872.57 38899.07 18193.05 19498.49 12999.25 80
EPMVS90.70 33289.81 33893.37 33294.73 36884.21 39193.67 42888.02 47789.50 28892.38 24293.49 39677.82 34397.78 35686.03 35492.68 29898.11 226
ANet_high63.94 45359.58 45677.02 46161.24 49766.06 48285.66 48287.93 47878.53 46042.94 48971.04 48625.42 49180.71 48852.60 48430.83 49084.28 476
PMMVS270.19 44566.92 44980.01 45676.35 48965.67 48386.22 48087.58 47964.83 48162.38 48280.29 48126.78 49088.49 48363.79 47554.07 48685.88 473
lessismore_v090.45 41791.96 44279.09 45687.19 48080.32 45294.39 34866.31 43997.55 38184.00 38276.84 44894.70 403
PMVScopyleft53.92 2258.58 45455.40 45768.12 47051.00 49848.64 49578.86 48587.10 48146.77 48735.84 49374.28 4838.76 49686.34 48442.07 48773.91 45969.38 484
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
UWE-MVS-2886.81 39986.41 38988.02 44292.87 42674.60 46795.38 35586.70 48288.17 33587.28 38594.67 33370.83 40193.30 47067.45 47294.31 26696.17 307
test_vis1_rt86.16 40985.06 40689.46 43193.47 41380.46 43596.41 28086.61 48385.22 39879.15 45888.64 45652.41 47397.06 41093.08 19290.57 33290.87 466
testf169.31 44766.76 45076.94 46278.61 48761.93 48688.27 47786.11 48455.62 48359.69 48385.31 47520.19 49489.32 47757.62 47969.44 47379.58 479
APD_test269.31 44766.76 45076.94 46278.61 48761.93 48688.27 47786.11 48455.62 48359.69 48385.31 47520.19 49489.32 47757.62 47969.44 47379.58 479
gg-mvs-nofinetune87.82 38385.61 39694.44 26494.46 37889.27 25391.21 45984.61 48680.88 44689.89 31274.98 48271.50 39597.53 38785.75 35997.21 18296.51 297
dmvs_testset81.38 43482.60 42777.73 45991.74 44351.49 49493.03 44284.21 48789.07 30178.28 46291.25 43776.97 34888.53 48256.57 48282.24 42793.16 434
GG-mvs-BLEND93.62 31993.69 40189.20 25592.39 45183.33 48887.98 37189.84 44871.00 39996.87 42082.08 40295.40 24594.80 395
MTMP97.86 9182.03 489
DeepMVS_CXcopyleft74.68 46790.84 44864.34 48581.61 49065.34 48067.47 47888.01 46348.60 47780.13 48962.33 47773.68 46079.58 479
E-PMN53.28 45552.56 45955.43 47374.43 49147.13 49683.63 48476.30 49142.23 48842.59 49062.22 48928.57 48974.40 49031.53 49131.51 48944.78 488
test250691.60 28490.78 29094.04 28797.66 14983.81 39698.27 3775.53 49293.43 12095.23 15998.21 8867.21 43199.07 18193.01 19798.49 12999.25 80
EMVS52.08 45751.31 46054.39 47472.62 49345.39 49883.84 48375.51 49341.13 48940.77 49159.65 49030.08 48773.60 49128.31 49329.90 49144.18 489
test_vis3_rt72.73 44270.55 44579.27 45780.02 48668.13 48093.92 41774.30 49476.90 46458.99 48573.58 48520.29 49395.37 44984.16 37872.80 46274.31 482
MVEpermissive50.73 2353.25 45648.81 46166.58 47265.34 49657.50 49172.49 48770.94 49540.15 49039.28 49263.51 4886.89 49873.48 49238.29 48842.38 48868.76 486
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
tmp_tt51.94 45853.82 45846.29 47533.73 49945.30 49978.32 48667.24 49618.02 49250.93 48887.05 47152.99 47253.11 49470.76 46625.29 49240.46 490
kuosan65.27 45264.66 45467.11 47183.80 47961.32 48988.53 47660.77 49768.22 47867.67 47680.52 48049.12 47670.76 49329.67 49253.64 48769.26 485
dongtai69.99 44669.33 44871.98 46888.78 46261.64 48889.86 46859.93 49875.67 46674.96 46985.45 47450.19 47581.66 48743.86 48655.27 48572.63 483
N_pmnet78.73 43978.71 43978.79 45892.80 42946.50 49794.14 40943.71 49978.61 45980.83 44791.66 43474.94 36996.36 43067.24 47384.45 40893.50 430
wuyk23d25.11 45924.57 46326.74 47673.98 49239.89 50057.88 4909.80 50012.27 49310.39 4946.97 4967.03 49736.44 49525.43 49417.39 4933.89 493
testmvs13.36 46116.33 4644.48 4785.04 5002.26 50393.18 4363.28 5012.70 4948.24 49521.66 4922.29 5002.19 4967.58 4952.96 4949.00 492
test12313.04 46215.66 4655.18 4774.51 5013.45 50292.50 4501.81 5022.50 4957.58 49620.15 4933.67 4992.18 4977.13 4961.07 4959.90 491
mmdepth0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
monomultidepth0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
test_blank0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
uanet_test0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
DCPMVS0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
pcd_1.5k_mvsjas7.39 4649.85 4670.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 49788.65 1090.00 4980.00 4970.00 4960.00 494
sosnet-low-res0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
sosnet0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
uncertanet0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
Regformer0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
n20.00 503
nn0.00 503
ab-mvs-re8.06 46310.74 4660.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 49896.69 2240.00 5010.00 4980.00 4970.00 4960.00 494
uanet0.00 4650.00 4680.00 4790.00 5020.00 5040.00 4910.00 5030.00 4970.00 4980.00 4970.00 5010.00 4980.00 4970.00 4960.00 494
TestfortrainingZip98.69 11
WAC-MVS79.53 44975.56 446
PC_three_145290.77 24098.89 2698.28 8696.24 198.35 28295.76 10699.58 2399.59 32
eth-test20.00 502
eth-test0.00 502
OPU-MVS98.55 498.82 6196.86 398.25 4098.26 8796.04 299.24 14995.36 12099.59 1999.56 40
test_0728_THIRD94.78 6198.73 3098.87 3195.87 499.84 2697.45 4699.72 299.77 3
GSMVS98.45 187
test_part299.28 3095.74 998.10 48
sam_mvs182.76 24298.45 187
sam_mvs81.94 263
test_post192.81 44616.58 49580.53 29197.68 36586.20 348
test_post17.58 49481.76 26698.08 309
patchmatchnet-post90.45 44282.65 24798.10 304
gm-plane-assit93.22 42078.89 45784.82 40693.52 39598.64 25287.72 312
test9_res94.81 14399.38 6499.45 59
agg_prior293.94 17099.38 6499.50 52
test_prior493.66 6296.42 279
test_prior296.35 28992.80 15596.03 12697.59 16392.01 5095.01 12899.38 64
旧先验295.94 32081.66 44297.34 7098.82 20992.26 203
新几何295.79 331
原ACMM295.67 337
testdata299.67 7785.96 356
segment_acmp92.89 33
testdata195.26 36493.10 137
plane_prior796.21 27189.98 214
plane_prior696.10 28990.00 21081.32 273
plane_prior496.64 227
plane_prior390.00 21094.46 7891.34 273
plane_prior297.74 11394.85 53
plane_prior196.14 284
plane_prior89.99 21297.24 19094.06 9292.16 307
HQP5-MVS89.33 248
HQP-NCC95.86 29796.65 26093.55 10990.14 297
ACMP_Plane95.86 29796.65 26093.55 10990.14 297
BP-MVS92.13 211
HQP4-MVS90.14 29798.50 26795.78 326
HQP2-MVS80.95 279
NP-MVS95.99 29589.81 22295.87 270
MDTV_nov1_ep13_2view70.35 47593.10 44183.88 41793.55 21482.47 25186.25 34798.38 195
ACMMP++_ref90.30 337
ACMMP++91.02 326
Test By Simon88.73 108