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.
sort bysorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
fmvsm_l_conf0.5_n_a99.71 199.67 199.85 3199.86 2099.61 7099.56 13099.63 3999.48 399.98 699.83 7298.75 5899.99 499.97 199.96 1299.94 11
fmvsm_l_conf0.5_n99.71 199.67 199.85 3199.84 3299.63 6799.56 13099.63 3999.47 499.98 699.82 8198.75 5899.99 499.97 199.97 799.94 11
test_fmvsmconf_n99.70 399.64 499.87 1499.80 5299.66 5699.48 18899.64 3699.45 599.92 1699.92 1498.62 7399.99 499.96 699.99 199.96 7
test_fmvsm_n_192099.69 499.66 399.78 5599.84 3299.44 9999.58 11799.69 1899.43 799.98 699.91 2098.62 73100.00 199.97 199.95 1799.90 16
APDe-MVScopyleft99.66 599.57 899.92 199.77 6399.89 499.75 4299.56 7099.02 4299.88 2499.85 5799.18 1099.96 3299.22 7399.92 2799.90 16
Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition
test_fmvsmvis_n_192099.65 699.61 699.77 5899.38 22499.37 10599.58 11799.62 4199.41 999.87 2999.92 1498.81 47100.00 199.97 199.93 2599.94 11
reproduce_model99.63 799.54 1199.90 499.78 5699.88 899.56 13099.55 7899.15 2199.90 1999.90 2799.00 2299.97 2199.11 8399.91 3499.86 32
reproduce-ours99.61 899.52 1299.90 499.76 6699.88 899.52 15799.54 8799.13 2499.89 2199.89 3298.96 2599.96 3299.04 9199.90 4399.85 36
our_new_method99.61 899.52 1299.90 499.76 6699.88 899.52 15799.54 8799.13 2499.89 2199.89 3298.96 2599.96 3299.04 9199.90 4399.85 36
SED-MVS99.61 899.52 1299.88 899.84 3299.90 299.60 10299.48 16199.08 3799.91 1799.81 9599.20 799.96 3298.91 10999.85 7599.79 77
DVP-MVS++99.59 1199.50 1699.88 899.51 17699.88 899.87 899.51 11998.99 4999.88 2499.81 9599.27 599.96 3298.85 12299.80 10399.81 64
TSAR-MVS + MP.99.58 1299.50 1699.81 4799.91 199.66 5699.63 9099.39 23098.91 6299.78 5499.85 5799.36 299.94 7298.84 12599.88 5799.82 57
Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition
EI-MVSNet-UG-set99.58 1299.57 899.64 8399.78 5699.14 13999.60 10299.45 20299.01 4499.90 1999.83 7298.98 2499.93 9099.59 2999.95 1799.86 32
EI-MVSNet-Vis-set99.58 1299.56 1099.64 8399.78 5699.15 13899.61 10199.45 20299.01 4499.89 2199.82 8199.01 1899.92 10299.56 3399.95 1799.85 36
DVP-MVScopyleft99.57 1599.47 2099.88 899.85 2699.89 499.57 12499.37 24699.10 3199.81 4399.80 10898.94 3299.96 3298.93 10699.86 6899.81 64
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
fmvsm_s_conf0.5_n_a99.56 1699.47 2099.85 3199.83 3999.64 6699.52 15799.65 3399.10 3199.98 699.92 1497.35 12599.96 3299.94 999.92 2799.95 9
test_fmvsmconf0.1_n99.55 1799.45 2499.86 2499.44 20699.65 6099.50 17399.61 4899.45 599.87 2999.92 1497.31 12699.97 2199.95 799.99 199.97 4
SteuartSystems-ACMMP99.54 1899.42 2599.87 1499.82 4299.81 2899.59 10999.51 11998.62 8999.79 4999.83 7299.28 499.97 2198.48 17699.90 4399.84 42
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XVS99.53 1999.42 2599.87 1499.85 2699.83 1999.69 6099.68 2098.98 5299.37 17099.74 14798.81 4799.94 7298.79 13399.86 6899.84 42
MTAPA99.52 2099.39 3299.89 799.90 499.86 1699.66 7599.47 18298.79 7499.68 8399.81 9598.43 8699.97 2198.88 11299.90 4399.83 52
fmvsm_s_conf0.5_n99.51 2199.40 3099.85 3199.84 3299.65 6099.51 16699.67 2399.13 2499.98 699.92 1496.60 15299.96 3299.95 799.96 1299.95 9
HPM-MVS_fast99.51 2199.40 3099.85 3199.91 199.79 3399.76 3799.56 7097.72 19999.76 6499.75 14299.13 1299.92 10299.07 8999.92 2799.85 36
mvsany_test199.50 2399.46 2399.62 9099.61 14599.09 14498.94 35299.48 16199.10 3199.96 1499.91 2098.85 4299.96 3299.72 1999.58 14599.82 57
CS-MVS99.50 2399.48 1899.54 10499.76 6699.42 10199.90 199.55 7898.56 9499.78 5499.70 16298.65 7199.79 19999.65 2599.78 11199.41 209
SPE-MVS-test99.49 2599.48 1899.54 10499.78 5699.30 11799.89 299.58 6298.56 9499.73 7099.69 17298.55 7899.82 18499.69 2199.85 7599.48 188
HFP-MVS99.49 2599.37 3699.86 2499.87 1599.80 3099.66 7599.67 2398.15 14299.68 8399.69 17299.06 1699.96 3298.69 14599.87 6099.84 42
ACMMPR99.49 2599.36 3899.86 2499.87 1599.79 3399.66 7599.67 2398.15 14299.67 8799.69 17298.95 3099.96 3298.69 14599.87 6099.84 42
DeepC-MVS_fast98.69 199.49 2599.39 3299.77 5899.63 13599.59 7399.36 24299.46 19199.07 3999.79 4999.82 8198.85 4299.92 10298.68 14799.87 6099.82 57
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
region2R99.48 2999.35 4099.87 1499.88 1199.80 3099.65 8199.66 2898.13 14799.66 9299.68 17998.96 2599.96 3298.62 15499.87 6099.84 42
APD-MVS_3200maxsize99.48 2999.35 4099.85 3199.76 6699.83 1999.63 9099.54 8798.36 11599.79 4999.82 8198.86 4199.95 6298.62 15499.81 9999.78 83
DELS-MVS99.48 2999.42 2599.65 7799.72 9499.40 10499.05 32499.66 2899.14 2399.57 12499.80 10898.46 8499.94 7299.57 3299.84 8399.60 152
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
ZNCC-MVS99.47 3299.33 4499.87 1499.87 1599.81 2899.64 8499.67 2398.08 15799.55 12999.64 19898.91 3799.96 3298.72 14099.90 4399.82 57
ACMMP_NAP99.47 3299.34 4299.88 899.87 1599.86 1699.47 19499.48 16198.05 16499.76 6499.86 5298.82 4699.93 9098.82 13299.91 3499.84 42
MVSMamba_PlusPlus99.46 3499.41 2999.64 8399.68 11299.50 9199.75 4299.50 13998.27 12599.87 2999.92 1498.09 10499.94 7299.65 2599.95 1799.47 194
balanced_conf0399.46 3499.39 3299.67 7299.55 16499.58 7899.74 4699.51 11998.42 10899.87 2999.84 6798.05 10799.91 11499.58 3199.94 2399.52 175
DPE-MVScopyleft99.46 3499.32 4699.91 299.78 5699.88 899.36 24299.51 11998.73 8199.88 2499.84 6798.72 6499.96 3298.16 20699.87 6099.88 25
Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025
MSLP-MVS++99.46 3499.47 2099.44 13699.60 15099.16 13499.41 21899.71 1398.98 5299.45 14599.78 12799.19 999.54 27199.28 6799.84 8399.63 145
SR-MVS-dyc-post99.45 3899.31 5299.85 3199.76 6699.82 2599.63 9099.52 10598.38 11199.76 6499.82 8198.53 7999.95 6298.61 15799.81 9999.77 85
PGM-MVS99.45 3899.31 5299.86 2499.87 1599.78 3999.58 11799.65 3397.84 18599.71 7799.80 10899.12 1399.97 2198.33 19299.87 6099.83 52
CP-MVS99.45 3899.32 4699.85 3199.83 3999.75 4299.69 6099.52 10598.07 15899.53 13299.63 20498.93 3699.97 2198.74 13799.91 3499.83 52
ACMMPcopyleft99.45 3899.32 4699.82 4499.89 899.67 5499.62 9599.69 1898.12 14899.63 10799.84 6798.73 6399.96 3298.55 17299.83 9299.81 64
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
SMA-MVScopyleft99.44 4299.30 5499.85 3199.73 9099.83 1999.56 13099.47 18297.45 23299.78 5499.82 8199.18 1099.91 11498.79 13399.89 5499.81 64
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
mPP-MVS99.44 4299.30 5499.86 2499.88 1199.79 3399.69 6099.48 16198.12 14899.50 13799.75 14298.78 5199.97 2198.57 16699.89 5499.83 52
EC-MVSNet99.44 4299.39 3299.58 9799.56 16099.49 9299.88 499.58 6298.38 11199.73 7099.69 17298.20 9999.70 23799.64 2799.82 9699.54 168
SR-MVS99.43 4599.29 5899.86 2499.75 7699.83 1999.59 10999.62 4198.21 13599.73 7099.79 12098.68 6799.96 3298.44 18299.77 11499.79 77
MCST-MVS99.43 4599.30 5499.82 4499.79 5499.74 4499.29 26399.40 22798.79 7499.52 13499.62 20998.91 3799.90 12698.64 15199.75 11999.82 57
MSP-MVS99.42 4799.27 6399.88 899.89 899.80 3099.67 6999.50 13998.70 8399.77 5899.49 25598.21 9899.95 6298.46 18099.77 11499.88 25
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
UA-Net99.42 4799.29 5899.80 4999.62 14199.55 8199.50 17399.70 1598.79 7499.77 5899.96 197.45 12099.96 3298.92 10899.90 4399.89 19
HPM-MVScopyleft99.42 4799.28 6099.83 4399.90 499.72 4599.81 2099.54 8797.59 21399.68 8399.63 20498.91 3799.94 7298.58 16399.91 3499.84 42
Chunlin Ren, Qingshan Xu, Shikun Zhang, Jiaqi Yang: Hierarchical Prior Mining for Non-local Multi-View Stereo. ICCV 2023
CNVR-MVS99.42 4799.30 5499.78 5599.62 14199.71 4799.26 28299.52 10598.82 6999.39 16699.71 15898.96 2599.85 15798.59 16299.80 10399.77 85
SD-MVS99.41 5199.52 1299.05 19199.74 8399.68 5199.46 19799.52 10599.11 3099.88 2499.91 2099.43 197.70 40098.72 14099.93 2599.77 85
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
MVS_111021_LR99.41 5199.33 4499.65 7799.77 6399.51 9098.94 35299.85 698.82 6999.65 9999.74 14798.51 8199.80 19698.83 12899.89 5499.64 140
MVS_111021_HR99.41 5199.32 4699.66 7399.72 9499.47 9698.95 35099.85 698.82 6999.54 13099.73 15398.51 8199.74 21598.91 10999.88 5799.77 85
MM99.40 5499.28 6099.74 6499.67 11499.31 11599.52 15798.87 35499.55 199.74 6899.80 10896.47 15899.98 1399.97 199.97 799.94 11
GST-MVS99.40 5499.24 6899.85 3199.86 2099.79 3399.60 10299.67 2397.97 17099.63 10799.68 17998.52 8099.95 6298.38 18599.86 6899.81 64
HPM-MVS++copyleft99.39 5699.23 7099.87 1499.75 7699.84 1899.43 20899.51 11998.68 8699.27 19499.53 24298.64 7299.96 3298.44 18299.80 10399.79 77
SF-MVS99.38 5799.24 6899.79 5299.79 5499.68 5199.57 12499.54 8797.82 19099.71 7799.80 10898.95 3099.93 9098.19 20299.84 8399.74 95
MP-MVS-pluss99.37 5899.20 7299.88 899.90 499.87 1599.30 25899.52 10597.18 25899.60 11799.79 12098.79 5099.95 6298.83 12899.91 3499.83 52
MP-MVS-pluss: MP-MVS-pluss. MP-MVS-pluss
TSAR-MVS + GP.99.36 5999.36 3899.36 14599.67 11498.61 20699.07 31999.33 26699.00 4799.82 4299.81 9599.06 1699.84 16499.09 8799.42 15699.65 133
PVSNet_Blended_VisFu99.36 5999.28 6099.61 9199.86 2099.07 14999.47 19499.93 297.66 20899.71 7799.86 5297.73 11599.96 3299.47 4899.82 9699.79 77
NCCC99.34 6199.19 7399.79 5299.61 14599.65 6099.30 25899.48 16198.86 6499.21 20899.63 20498.72 6499.90 12698.25 19899.63 14099.80 73
mamv499.33 6299.42 2599.07 18799.67 11497.73 26299.42 21599.60 5498.15 14299.94 1599.91 2098.42 8899.94 7299.72 1999.96 1299.54 168
MP-MVScopyleft99.33 6299.15 7699.87 1499.88 1199.82 2599.66 7599.46 19198.09 15399.48 14199.74 14798.29 9599.96 3297.93 22499.87 6099.82 57
Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo.
PS-MVSNAJ99.32 6499.32 4699.30 15999.57 15698.94 17198.97 34699.46 19198.92 6199.71 7799.24 32399.01 1899.98 1399.35 5599.66 13598.97 258
CSCG99.32 6499.32 4699.32 15399.85 2698.29 23199.71 5599.66 2898.11 15099.41 15999.80 10898.37 9299.96 3298.99 9799.96 1299.72 106
PHI-MVS99.30 6699.17 7599.70 7099.56 16099.52 8999.58 11799.80 897.12 26499.62 11199.73 15398.58 7599.90 12698.61 15799.91 3499.68 123
DeepC-MVS98.35 299.30 6699.19 7399.64 8399.82 4299.23 12799.62 9599.55 7898.94 5899.63 10799.95 395.82 18499.94 7299.37 5499.97 799.73 100
Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020
fmvsm_s_conf0.1_n99.29 6899.10 8199.86 2499.70 10499.65 6099.53 15699.62 4198.74 8099.99 299.95 394.53 24399.94 7299.89 1299.96 1299.97 4
xiu_mvs_v1_base_debu99.29 6899.27 6399.34 14799.63 13598.97 16199.12 30999.51 11998.86 6499.84 3599.47 26498.18 10099.99 499.50 4199.31 16699.08 243
xiu_mvs_v1_base99.29 6899.27 6399.34 14799.63 13598.97 16199.12 30999.51 11998.86 6499.84 3599.47 26498.18 10099.99 499.50 4199.31 16699.08 243
xiu_mvs_v1_base_debi99.29 6899.27 6399.34 14799.63 13598.97 16199.12 30999.51 11998.86 6499.84 3599.47 26498.18 10099.99 499.50 4199.31 16699.08 243
APD-MVScopyleft99.27 7299.08 8599.84 4299.75 7699.79 3399.50 17399.50 13997.16 26099.77 5899.82 8198.78 5199.94 7297.56 26399.86 6899.80 73
Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023
LS3D99.27 7299.12 7999.74 6499.18 27799.75 4299.56 13099.57 6598.45 10499.49 14099.85 5797.77 11499.94 7298.33 19299.84 8399.52 175
fmvsm_s_conf0.1_n_a99.26 7499.06 8799.85 3199.52 17399.62 6899.54 14899.62 4198.69 8499.99 299.96 194.47 24599.94 7299.88 1399.92 2799.98 2
patch_mono-299.26 7499.62 598.16 30699.81 4694.59 37499.52 15799.64 3699.33 1399.73 7099.90 2799.00 2299.99 499.69 2199.98 499.89 19
ETV-MVS99.26 7499.21 7199.40 13999.46 19999.30 11799.56 13099.52 10598.52 9899.44 15099.27 31998.41 9099.86 15199.10 8699.59 14499.04 250
xiu_mvs_v2_base99.26 7499.25 6799.29 16299.53 16898.91 17599.02 33299.45 20298.80 7399.71 7799.26 32198.94 3299.98 1399.34 6099.23 17198.98 257
CANet99.25 7899.14 7799.59 9499.41 21499.16 13499.35 24799.57 6598.82 6999.51 13699.61 21396.46 15999.95 6299.59 2999.98 499.65 133
3Dnovator97.25 999.24 7999.05 8899.81 4799.12 29399.66 5699.84 1299.74 1099.09 3698.92 26199.90 2795.94 17899.98 1398.95 10299.92 2799.79 77
dcpmvs_299.23 8099.58 798.16 30699.83 3994.68 37299.76 3799.52 10599.07 3999.98 699.88 3998.56 7799.93 9099.67 2399.98 499.87 30
test_fmvsmconf0.01_n99.22 8199.03 9299.79 5298.42 37999.48 9499.55 14499.51 11999.39 1099.78 5499.93 994.80 22199.95 6299.93 1099.95 1799.94 11
CHOSEN 1792x268899.19 8299.10 8199.45 13299.89 898.52 21699.39 23099.94 198.73 8199.11 22799.89 3295.50 19499.94 7299.50 4199.97 799.89 19
F-COLMAP99.19 8299.04 9099.64 8399.78 5699.27 12299.42 21599.54 8797.29 24999.41 15999.59 21898.42 8899.93 9098.19 20299.69 13099.73 100
EIA-MVS99.18 8499.09 8499.45 13299.49 18999.18 13199.67 6999.53 10097.66 20899.40 16499.44 27198.10 10399.81 18998.94 10399.62 14199.35 218
3Dnovator+97.12 1399.18 8498.97 10699.82 4499.17 28599.68 5199.81 2099.51 11999.20 1898.72 28899.89 3295.68 18999.97 2198.86 12099.86 6899.81 64
MVSFormer99.17 8699.12 7999.29 16299.51 17698.94 17199.88 499.46 19197.55 21999.80 4799.65 19297.39 12199.28 31199.03 9399.85 7599.65 133
sss99.17 8699.05 8899.53 11299.62 14198.97 16199.36 24299.62 4197.83 18699.67 8799.65 19297.37 12499.95 6299.19 7599.19 17499.68 123
test_cas_vis1_n_192099.16 8899.01 10099.61 9199.81 4698.86 18199.65 8199.64 3699.39 1099.97 1399.94 693.20 28199.98 1399.55 3499.91 3499.99 1
DP-MVS99.16 8898.95 11299.78 5599.77 6399.53 8699.41 21899.50 13997.03 27699.04 24399.88 3997.39 12199.92 10298.66 14999.90 4399.87 30
MVS_030499.15 9098.96 11099.73 6798.92 32899.37 10599.37 23796.92 40599.51 299.66 9299.78 12796.69 14999.97 2199.84 1599.97 799.84 42
casdiffmvs_mvgpermissive99.15 9099.02 9699.55 10399.66 12499.09 14499.64 8499.56 7098.26 12799.45 14599.87 4896.03 17399.81 18999.54 3599.15 17899.73 100
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
baseline99.15 9099.02 9699.53 11299.66 12499.14 13999.72 5299.48 16198.35 11699.42 15599.84 6796.07 17199.79 19999.51 4099.14 17999.67 126
diffmvspermissive99.14 9399.02 9699.51 12099.61 14598.96 16599.28 26899.49 14998.46 10399.72 7599.71 15896.50 15799.88 14399.31 6399.11 18199.67 126
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
CNLPA99.14 9398.99 10299.59 9499.58 15499.41 10399.16 30099.44 21098.45 10499.19 21499.49 25598.08 10599.89 13897.73 24699.75 11999.48 188
CDPH-MVS99.13 9598.91 11799.80 4999.75 7699.71 4799.15 30399.41 22196.60 30899.60 11799.55 23398.83 4599.90 12697.48 27099.83 9299.78 83
casdiffmvspermissive99.13 9598.98 10599.56 10199.65 13099.16 13499.56 13099.50 13998.33 11999.41 15999.86 5295.92 17999.83 17799.45 5099.16 17599.70 117
Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025
jason99.13 9599.03 9299.45 13299.46 19998.87 17899.12 30999.26 29498.03 16799.79 4999.65 19297.02 13899.85 15799.02 9599.90 4399.65 133
jason: jason.
lupinMVS99.13 9599.01 10099.46 13199.51 17698.94 17199.05 32499.16 31197.86 18099.80 4799.56 23097.39 12199.86 15198.94 10399.85 7599.58 160
EPP-MVSNet99.13 9598.99 10299.53 11299.65 13099.06 15099.81 2099.33 26697.43 23699.60 11799.88 3997.14 13199.84 16499.13 8198.94 19599.69 119
MG-MVS99.13 9599.02 9699.45 13299.57 15698.63 20399.07 31999.34 25998.99 4999.61 11499.82 8197.98 10999.87 14897.00 30099.80 10399.85 36
BP-MVS199.12 10198.94 11499.65 7799.51 17699.30 11799.67 6998.92 34298.48 10199.84 3599.69 17294.96 21199.92 10299.62 2899.79 11099.71 115
CHOSEN 280x42099.12 10199.13 7899.08 18699.66 12497.89 25598.43 39399.71 1398.88 6399.62 11199.76 13996.63 15199.70 23799.46 4999.99 199.66 129
DP-MVS Recon99.12 10198.95 11299.65 7799.74 8399.70 4999.27 27399.57 6596.40 32499.42 15599.68 17998.75 5899.80 19697.98 22199.72 12599.44 204
Vis-MVSNetpermissive99.12 10198.97 10699.56 10199.78 5699.10 14399.68 6699.66 2898.49 10099.86 3399.87 4894.77 22699.84 16499.19 7599.41 15799.74 95
Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020
TAMVS99.12 10199.08 8599.24 17199.46 19998.55 21099.51 16699.46 19198.09 15399.45 14599.82 8198.34 9399.51 27298.70 14298.93 19699.67 126
SDMVSNet99.11 10698.90 11899.75 6199.81 4699.59 7399.81 2099.65 3398.78 7799.64 10499.88 3994.56 23999.93 9099.67 2398.26 23799.72 106
VNet99.11 10698.90 11899.73 6799.52 17399.56 7999.41 21899.39 23099.01 4499.74 6899.78 12795.56 19299.92 10299.52 3998.18 24499.72 106
CPTT-MVS99.11 10698.90 11899.74 6499.80 5299.46 9799.59 10999.49 14997.03 27699.63 10799.69 17297.27 12999.96 3297.82 23599.84 8399.81 64
HyFIR lowres test99.11 10698.92 11599.65 7799.90 499.37 10599.02 33299.91 397.67 20799.59 12099.75 14295.90 18199.73 22199.53 3799.02 19299.86 32
MVS_Test99.10 11098.97 10699.48 12699.49 18999.14 13999.67 6999.34 25997.31 24799.58 12199.76 13997.65 11799.82 18498.87 11599.07 18799.46 199
CDS-MVSNet99.09 11199.03 9299.25 16999.42 20998.73 19499.45 19899.46 19198.11 15099.46 14499.77 13598.01 10899.37 29498.70 14298.92 19899.66 129
Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022
GDP-MVS99.08 11298.89 12199.64 8399.53 16899.34 10999.64 8499.48 16198.32 12099.77 5899.66 19095.14 20899.93 9098.97 10199.50 15199.64 140
PVSNet_Blended99.08 11298.97 10699.42 13799.76 6698.79 19098.78 36899.91 396.74 29399.67 8799.49 25597.53 11899.88 14398.98 9899.85 7599.60 152
OMC-MVS99.08 11299.04 9099.20 17599.67 11498.22 23599.28 26899.52 10598.07 15899.66 9299.81 9597.79 11399.78 20497.79 23799.81 9999.60 152
mvsmamba99.06 11598.96 11099.36 14599.47 19798.64 20299.70 5699.05 32697.61 21299.65 9999.83 7296.54 15599.92 10299.19 7599.62 14199.51 182
WTY-MVS99.06 11598.88 12399.61 9199.62 14199.16 13499.37 23799.56 7098.04 16599.53 13299.62 20996.84 14399.94 7298.85 12298.49 22599.72 106
IS-MVSNet99.05 11798.87 12499.57 9999.73 9099.32 11199.75 4299.20 30698.02 16899.56 12599.86 5296.54 15599.67 24598.09 20999.13 18099.73 100
PAPM_NR99.04 11898.84 13099.66 7399.74 8399.44 9999.39 23099.38 23897.70 20399.28 18999.28 31698.34 9399.85 15796.96 30499.45 15499.69 119
API-MVS99.04 11899.03 9299.06 18999.40 21999.31 11599.55 14499.56 7098.54 9699.33 18099.39 28798.76 5599.78 20496.98 30299.78 11198.07 377
mvs_anonymous99.03 12098.99 10299.16 17999.38 22498.52 21699.51 16699.38 23897.79 19199.38 16899.81 9597.30 12799.45 27799.35 5598.99 19399.51 182
sasdasda99.02 12198.86 12699.51 12099.42 20999.32 11199.80 2599.48 16198.63 8799.31 18298.81 36597.09 13399.75 21399.27 6997.90 25599.47 194
train_agg99.02 12198.77 13799.77 5899.67 11499.65 6099.05 32499.41 22196.28 32898.95 25799.49 25598.76 5599.91 11497.63 25499.72 12599.75 91
canonicalmvs99.02 12198.86 12699.51 12099.42 20999.32 11199.80 2599.48 16198.63 8799.31 18298.81 36597.09 13399.75 21399.27 6997.90 25599.47 194
PLCcopyleft97.94 499.02 12198.85 12899.53 11299.66 12499.01 15699.24 28699.52 10596.85 28899.27 19499.48 26198.25 9799.91 11497.76 24299.62 14199.65 133
Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019
MGCFI-Net99.01 12598.85 12899.50 12599.42 20999.26 12399.82 1699.48 16198.60 9199.28 18998.81 36597.04 13799.76 21099.29 6697.87 25899.47 194
AdaColmapbinary99.01 12598.80 13399.66 7399.56 16099.54 8399.18 29899.70 1598.18 14099.35 17699.63 20496.32 16499.90 12697.48 27099.77 11499.55 166
1112_ss98.98 12798.77 13799.59 9499.68 11299.02 15499.25 28499.48 16197.23 25599.13 22399.58 22296.93 14299.90 12698.87 11598.78 20999.84 42
MSDG98.98 12798.80 13399.53 11299.76 6699.19 12998.75 37199.55 7897.25 25299.47 14299.77 13597.82 11299.87 14896.93 30799.90 4399.54 168
CANet_DTU98.97 12998.87 12499.25 16999.33 23698.42 22899.08 31899.30 28499.16 2099.43 15299.75 14295.27 20299.97 2198.56 16999.95 1799.36 217
DPM-MVS98.95 13098.71 14399.66 7399.63 13599.55 8198.64 38299.10 31797.93 17399.42 15599.55 23398.67 6999.80 19695.80 33999.68 13399.61 149
114514_t98.93 13198.67 14799.72 6999.85 2699.53 8699.62 9599.59 5892.65 39399.71 7799.78 12798.06 10699.90 12698.84 12599.91 3499.74 95
PS-MVSNAJss98.92 13298.92 11598.90 21698.78 34698.53 21299.78 3299.54 8798.07 15899.00 25099.76 13999.01 1899.37 29499.13 8197.23 29798.81 267
RRT-MVS98.91 13398.75 13999.39 14399.46 19998.61 20699.76 3799.50 13998.06 16299.81 4399.88 3993.91 26699.94 7299.11 8399.27 16999.61 149
Test_1112_low_res98.89 13498.66 15099.57 9999.69 10898.95 16899.03 32999.47 18296.98 27899.15 22199.23 32496.77 14699.89 13898.83 12898.78 20999.86 32
test_fmvs198.88 13598.79 13699.16 17999.69 10897.61 27199.55 14499.49 14999.32 1499.98 699.91 2091.41 32999.96 3299.82 1699.92 2799.90 16
AllTest98.87 13698.72 14199.31 15499.86 2098.48 22299.56 13099.61 4897.85 18399.36 17399.85 5795.95 17699.85 15796.66 32099.83 9299.59 156
UGNet98.87 13698.69 14599.40 13999.22 26898.72 19599.44 20499.68 2099.24 1799.18 21899.42 27592.74 29199.96 3299.34 6099.94 2399.53 174
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
Vis-MVSNet (Re-imp)98.87 13698.72 14199.31 15499.71 9998.88 17799.80 2599.44 21097.91 17599.36 17399.78 12795.49 19599.43 28697.91 22599.11 18199.62 147
test_yl98.86 13998.63 15299.54 10499.49 18999.18 13199.50 17399.07 32398.22 13399.61 11499.51 24995.37 19899.84 16498.60 16098.33 23199.59 156
DCV-MVSNet98.86 13998.63 15299.54 10499.49 18999.18 13199.50 17399.07 32398.22 13399.61 11499.51 24995.37 19899.84 16498.60 16098.33 23199.59 156
EPNet98.86 13998.71 14399.30 15997.20 39998.18 23699.62 9598.91 34799.28 1698.63 30799.81 9595.96 17599.99 499.24 7299.72 12599.73 100
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
PVSNet_BlendedMVS98.86 13998.80 13399.03 19399.76 6698.79 19099.28 26899.91 397.42 23899.67 8799.37 29297.53 11899.88 14398.98 9897.29 29598.42 355
ab-mvs98.86 13998.63 15299.54 10499.64 13299.19 12999.44 20499.54 8797.77 19499.30 18599.81 9594.20 25399.93 9099.17 7998.82 20699.49 187
MAR-MVS98.86 13998.63 15299.54 10499.37 22799.66 5699.45 19899.54 8796.61 30599.01 24699.40 28397.09 13399.86 15197.68 25399.53 14999.10 238
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
COLMAP_ROBcopyleft97.56 698.86 13998.75 13999.17 17899.88 1198.53 21299.34 25099.59 5897.55 21998.70 29599.89 3295.83 18399.90 12698.10 20899.90 4399.08 243
Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016
GeoE98.85 14698.62 15799.53 11299.61 14599.08 14799.80 2599.51 11997.10 26899.31 18299.78 12795.23 20699.77 20698.21 20099.03 19099.75 91
HY-MVS97.30 798.85 14698.64 15199.47 12999.42 20999.08 14799.62 9599.36 24797.39 24199.28 18999.68 17996.44 16199.92 10298.37 18798.22 23999.40 211
PVSNet96.02 1798.85 14698.84 13098.89 21999.73 9097.28 28098.32 39999.60 5497.86 18099.50 13799.57 22796.75 14799.86 15198.56 16999.70 12999.54 168
PatchMatch-RL98.84 14998.62 15799.52 11899.71 9999.28 12099.06 32299.77 997.74 19899.50 13799.53 24295.41 19699.84 16497.17 29499.64 13899.44 204
Effi-MVS+98.81 15098.59 16399.48 12699.46 19999.12 14298.08 40699.50 13997.50 22799.38 16899.41 27996.37 16399.81 18999.11 8398.54 22299.51 182
alignmvs98.81 15098.56 16699.58 9799.43 20799.42 10199.51 16698.96 33798.61 9099.35 17698.92 36094.78 22399.77 20699.35 5598.11 24999.54 168
DeepPCF-MVS98.18 398.81 15099.37 3697.12 35899.60 15091.75 39898.61 38399.44 21099.35 1299.83 4199.85 5798.70 6699.81 18999.02 9599.91 3499.81 64
PMMVS98.80 15398.62 15799.34 14799.27 25498.70 19698.76 37099.31 28097.34 24499.21 20899.07 34097.20 13099.82 18498.56 16998.87 20199.52 175
Effi-MVS+-dtu98.78 15498.89 12198.47 27599.33 23696.91 30999.57 12499.30 28498.47 10299.41 15998.99 35096.78 14599.74 21598.73 13999.38 15898.74 280
FIs98.78 15498.63 15299.23 17399.18 27799.54 8399.83 1599.59 5898.28 12398.79 28299.81 9596.75 14799.37 29499.08 8896.38 31398.78 269
Fast-Effi-MVS+-dtu98.77 15698.83 13298.60 25499.41 21496.99 30399.52 15799.49 14998.11 15099.24 20099.34 30296.96 14199.79 19997.95 22399.45 15499.02 253
sd_testset98.75 15798.57 16499.29 16299.81 4698.26 23399.56 13099.62 4198.78 7799.64 10499.88 3992.02 31399.88 14399.54 3598.26 23799.72 106
FA-MVS(test-final)98.75 15798.53 16899.41 13899.55 16499.05 15299.80 2599.01 33196.59 31099.58 12199.59 21895.39 19799.90 12697.78 23899.49 15299.28 226
FC-MVSNet-test98.75 15798.62 15799.15 18399.08 30499.45 9899.86 1199.60 5498.23 13298.70 29599.82 8196.80 14499.22 32399.07 8996.38 31398.79 268
XVG-OURS98.73 16098.68 14698.88 22199.70 10497.73 26298.92 35499.55 7898.52 9899.45 14599.84 6795.27 20299.91 11498.08 21398.84 20499.00 254
Fast-Effi-MVS+98.70 16198.43 17299.51 12099.51 17699.28 12099.52 15799.47 18296.11 34499.01 24699.34 30296.20 16899.84 16497.88 22798.82 20699.39 212
XVG-OURS-SEG-HR98.69 16298.62 15798.89 21999.71 9997.74 26199.12 30999.54 8798.44 10799.42 15599.71 15894.20 25399.92 10298.54 17398.90 20099.00 254
131498.68 16398.54 16799.11 18598.89 33198.65 20099.27 27399.49 14996.89 28697.99 34699.56 23097.72 11699.83 17797.74 24599.27 16998.84 266
EI-MVSNet98.67 16498.67 14798.68 25099.35 23197.97 24899.50 17399.38 23896.93 28599.20 21199.83 7297.87 11099.36 29898.38 18597.56 27498.71 284
test_djsdf98.67 16498.57 16498.98 19998.70 36098.91 17599.88 499.46 19197.55 21999.22 20599.88 3995.73 18799.28 31199.03 9397.62 26998.75 277
QAPM98.67 16498.30 18299.80 4999.20 27199.67 5499.77 3499.72 1194.74 37198.73 28799.90 2795.78 18599.98 1396.96 30499.88 5799.76 90
nrg03098.64 16798.42 17399.28 16699.05 31099.69 5099.81 2099.46 19198.04 16599.01 24699.82 8196.69 14999.38 29199.34 6094.59 35798.78 269
test_vis1_n_192098.63 16898.40 17599.31 15499.86 2097.94 25499.67 6999.62 4199.43 799.99 299.91 2087.29 378100.00 199.92 1199.92 2799.98 2
PAPR98.63 16898.34 17899.51 12099.40 21999.03 15398.80 36699.36 24796.33 32599.00 25099.12 33898.46 8499.84 16495.23 35499.37 16599.66 129
CVMVSNet98.57 17098.67 14798.30 29599.35 23195.59 35099.50 17399.55 7898.60 9199.39 16699.83 7294.48 24499.45 27798.75 13698.56 22099.85 36
MVSTER98.49 17198.32 18099.00 19799.35 23199.02 15499.54 14899.38 23897.41 23999.20 21199.73 15393.86 26899.36 29898.87 11597.56 27498.62 326
FE-MVS98.48 17298.17 18799.40 13999.54 16798.96 16599.68 6698.81 36195.54 35599.62 11199.70 16293.82 26999.93 9097.35 28199.46 15399.32 223
OpenMVScopyleft96.50 1698.47 17398.12 19499.52 11899.04 31199.53 8699.82 1699.72 1194.56 37498.08 34199.88 3994.73 22999.98 1397.47 27299.76 11799.06 249
IterMVS-LS98.46 17498.42 17398.58 25899.59 15298.00 24699.37 23799.43 21696.94 28499.07 23599.59 21897.87 11099.03 35198.32 19495.62 33598.71 284
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
anonymousdsp98.44 17598.28 18398.94 20698.50 37698.96 16599.77 3499.50 13997.07 27098.87 27099.77 13594.76 22799.28 31198.66 14997.60 27098.57 341
jajsoiax98.43 17698.28 18398.88 22198.60 37098.43 22699.82 1699.53 10098.19 13798.63 30799.80 10893.22 28099.44 28299.22 7397.50 28198.77 273
tttt051798.42 17798.14 19199.28 16699.66 12498.38 22999.74 4696.85 40697.68 20599.79 4999.74 14791.39 33099.89 13898.83 12899.56 14699.57 163
BH-untuned98.42 17798.36 17698.59 25599.49 18996.70 31799.27 27399.13 31597.24 25498.80 28099.38 28995.75 18699.74 21597.07 29899.16 17599.33 222
test_fmvs1_n98.41 17998.14 19199.21 17499.82 4297.71 26799.74 4699.49 14999.32 1499.99 299.95 385.32 38999.97 2199.82 1699.84 8399.96 7
D2MVS98.41 17998.50 16998.15 30999.26 25696.62 32399.40 22699.61 4897.71 20098.98 25299.36 29596.04 17299.67 24598.70 14297.41 29198.15 373
BH-RMVSNet98.41 17998.08 20099.40 13999.41 21498.83 18699.30 25898.77 36597.70 20398.94 25999.65 19292.91 28799.74 21596.52 32499.55 14899.64 140
mvs_tets98.40 18298.23 18598.91 21498.67 36398.51 21899.66 7599.53 10098.19 13798.65 30499.81 9592.75 28999.44 28299.31 6397.48 28598.77 273
MonoMVSNet98.38 18398.47 17198.12 31198.59 37296.19 34099.72 5298.79 36497.89 17799.44 15099.52 24596.13 16998.90 37298.64 15197.54 27699.28 226
XXY-MVS98.38 18398.09 19999.24 17199.26 25699.32 11199.56 13099.55 7897.45 23298.71 28999.83 7293.23 27899.63 26298.88 11296.32 31598.76 275
ACMM97.58 598.37 18598.34 17898.48 27099.41 21497.10 29099.56 13099.45 20298.53 9799.04 24399.85 5793.00 28399.71 23198.74 13797.45 28698.64 317
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
thisisatest053098.35 18698.03 20699.31 15499.63 13598.56 20999.54 14896.75 40897.53 22399.73 7099.65 19291.25 33399.89 13898.62 15499.56 14699.48 188
tpmrst98.33 18798.48 17097.90 32799.16 28794.78 37099.31 25699.11 31697.27 25099.45 14599.59 21895.33 20099.84 16498.48 17698.61 21499.09 242
baseline198.31 18897.95 21599.38 14499.50 18798.74 19399.59 10998.93 33998.41 10999.14 22299.60 21694.59 23799.79 19998.48 17693.29 37699.61 149
PatchmatchNetpermissive98.31 18898.36 17698.19 30499.16 28795.32 36099.27 27398.92 34297.37 24299.37 17099.58 22294.90 21699.70 23797.43 27699.21 17299.54 168
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo.
Anonymous20240521198.30 19097.98 21199.26 16899.57 15698.16 23799.41 21898.55 38396.03 34999.19 21499.74 14791.87 31699.92 10299.16 8098.29 23699.70 117
VPA-MVSNet98.29 19197.95 21599.30 15999.16 28799.54 8399.50 17399.58 6298.27 12599.35 17699.37 29292.53 30199.65 25399.35 5594.46 35898.72 282
UniMVSNet (Re)98.29 19198.00 20999.13 18499.00 31599.36 10899.49 18499.51 11997.95 17198.97 25499.13 33596.30 16599.38 29198.36 18993.34 37598.66 313
HQP_MVS98.27 19398.22 18698.44 28199.29 24996.97 30599.39 23099.47 18298.97 5599.11 22799.61 21392.71 29499.69 24297.78 23897.63 26798.67 305
UniMVSNet_NR-MVSNet98.22 19497.97 21298.96 20298.92 32898.98 15899.48 18899.53 10097.76 19598.71 28999.46 26896.43 16299.22 32398.57 16692.87 38298.69 293
LPG-MVS_test98.22 19498.13 19398.49 26899.33 23697.05 29699.58 11799.55 7897.46 22999.24 20099.83 7292.58 29999.72 22598.09 20997.51 27998.68 298
RPSCF98.22 19498.62 15796.99 36099.82 4291.58 39999.72 5299.44 21096.61 30599.66 9299.89 3295.92 17999.82 18497.46 27399.10 18499.57 163
ADS-MVSNet98.20 19798.08 20098.56 26299.33 23696.48 32899.23 28899.15 31296.24 33299.10 23099.67 18594.11 25799.71 23196.81 31299.05 18899.48 188
OPM-MVS98.19 19898.10 19698.45 27898.88 33297.07 29499.28 26899.38 23898.57 9399.22 20599.81 9592.12 31199.66 24898.08 21397.54 27698.61 335
Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS).
SCA98.19 19898.16 18898.27 30199.30 24595.55 35199.07 31998.97 33597.57 21699.43 15299.57 22792.72 29299.74 21597.58 25899.20 17399.52 175
miper_ehance_all_eth98.18 20098.10 19698.41 28499.23 26497.72 26498.72 37499.31 28096.60 30898.88 26799.29 31497.29 12899.13 33797.60 25695.99 32498.38 360
CR-MVSNet98.17 20197.93 21898.87 22599.18 27798.49 22099.22 29299.33 26696.96 28099.56 12599.38 28994.33 24999.00 35694.83 36198.58 21799.14 235
miper_enhance_ethall98.16 20298.08 20098.41 28498.96 32497.72 26498.45 39299.32 27696.95 28298.97 25499.17 33097.06 13699.22 32397.86 23095.99 32498.29 364
CLD-MVS98.16 20298.10 19698.33 29199.29 24996.82 31498.75 37199.44 21097.83 18699.13 22399.55 23392.92 28599.67 24598.32 19497.69 26598.48 347
Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020
thisisatest051598.14 20497.79 23099.19 17699.50 18798.50 21998.61 38396.82 40796.95 28299.54 13099.43 27391.66 32599.86 15198.08 21399.51 15099.22 232
pmmvs498.13 20597.90 22098.81 23798.61 36998.87 17898.99 34099.21 30596.44 32099.06 24099.58 22295.90 18199.11 34297.18 29396.11 32098.46 352
WR-MVS_H98.13 20597.87 22598.90 21699.02 31398.84 18399.70 5699.59 5897.27 25098.40 32399.19 32995.53 19399.23 31998.34 19193.78 37298.61 335
c3_l98.12 20798.04 20598.38 28899.30 24597.69 26898.81 36599.33 26696.67 29898.83 27699.34 30297.11 13298.99 35797.58 25895.34 34298.48 347
ACMH97.28 898.10 20897.99 21098.44 28199.41 21496.96 30799.60 10299.56 7098.09 15398.15 33999.91 2090.87 33799.70 23798.88 11297.45 28698.67 305
Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019
Anonymous2024052998.09 20997.68 24699.34 14799.66 12498.44 22599.40 22699.43 21693.67 38199.22 20599.89 3290.23 34599.93 9099.26 7198.33 23199.66 129
CP-MVSNet98.09 20997.78 23399.01 19598.97 32399.24 12699.67 6999.46 19197.25 25298.48 32099.64 19893.79 27099.06 34798.63 15394.10 36698.74 280
dmvs_re98.08 21198.16 18897.85 33099.55 16494.67 37399.70 5698.92 34298.15 14299.06 24099.35 29893.67 27499.25 31697.77 24197.25 29699.64 140
DU-MVS98.08 21197.79 23098.96 20298.87 33598.98 15899.41 21899.45 20297.87 17998.71 28999.50 25294.82 21999.22 32398.57 16692.87 38298.68 298
v2v48298.06 21397.77 23598.92 21098.90 33098.82 18799.57 12499.36 24796.65 30099.19 21499.35 29894.20 25399.25 31697.72 24894.97 35098.69 293
V4298.06 21397.79 23098.86 22898.98 32198.84 18399.69 6099.34 25996.53 31299.30 18599.37 29294.67 23499.32 30697.57 26294.66 35598.42 355
test-LLR98.06 21397.90 22098.55 26498.79 34397.10 29098.67 37797.75 39897.34 24498.61 31098.85 36294.45 24699.45 27797.25 28599.38 15899.10 238
WR-MVS98.06 21397.73 24299.06 18998.86 33899.25 12599.19 29699.35 25497.30 24898.66 29899.43 27393.94 26399.21 32898.58 16394.28 36298.71 284
ACMP97.20 1198.06 21397.94 21798.45 27899.37 22797.01 30199.44 20499.49 14997.54 22298.45 32199.79 12091.95 31599.72 22597.91 22597.49 28498.62 326
Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020
eth_miper_zixun_eth98.05 21897.96 21398.33 29199.26 25697.38 27798.56 38899.31 28096.65 30098.88 26799.52 24596.58 15399.12 34197.39 27895.53 33998.47 349
test111198.04 21998.11 19597.83 33399.74 8393.82 38299.58 11795.40 41599.12 2999.65 9999.93 990.73 33899.84 16499.43 5199.38 15899.82 57
ECVR-MVScopyleft98.04 21998.05 20498.00 31999.74 8394.37 37799.59 10994.98 41699.13 2499.66 9299.93 990.67 33999.84 16499.40 5299.38 15899.80 73
EPNet_dtu98.03 22197.96 21398.23 30298.27 38195.54 35399.23 28898.75 36699.02 4297.82 35399.71 15896.11 17099.48 27393.04 38199.65 13799.69 119
Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023
FMVSNet398.03 22197.76 23998.84 23299.39 22298.98 15899.40 22699.38 23896.67 29899.07 23599.28 31692.93 28498.98 35897.10 29596.65 30698.56 342
ADS-MVSNet298.02 22398.07 20397.87 32999.33 23695.19 36399.23 28899.08 32096.24 33299.10 23099.67 18594.11 25798.93 36996.81 31299.05 18899.48 188
HQP-MVS98.02 22397.90 22098.37 28999.19 27496.83 31298.98 34399.39 23098.24 12998.66 29899.40 28392.47 30399.64 25697.19 29197.58 27298.64 317
LTVRE_ROB97.16 1298.02 22397.90 22098.40 28699.23 26496.80 31599.70 5699.60 5497.12 26498.18 33899.70 16291.73 32199.72 22598.39 18497.45 28698.68 298
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
cl____98.01 22697.84 22898.55 26499.25 26097.97 24898.71 37599.34 25996.47 31998.59 31399.54 23895.65 19099.21 32897.21 28795.77 33098.46 352
DIV-MVS_self_test98.01 22697.85 22798.48 27099.24 26297.95 25298.71 37599.35 25496.50 31398.60 31299.54 23895.72 18899.03 35197.21 28795.77 33098.46 352
miper_lstm_enhance98.00 22897.91 21998.28 30099.34 23597.43 27598.88 35899.36 24796.48 31798.80 28099.55 23395.98 17498.91 37097.27 28495.50 34098.51 345
BH-w/o98.00 22897.89 22498.32 29399.35 23196.20 33999.01 33798.90 34996.42 32298.38 32499.00 34995.26 20499.72 22596.06 33298.61 21499.03 251
v114497.98 23097.69 24598.85 23198.87 33598.66 19999.54 14899.35 25496.27 33099.23 20499.35 29894.67 23499.23 31996.73 31595.16 34698.68 298
EU-MVSNet97.98 23098.03 20697.81 33698.72 35796.65 32299.66 7599.66 2898.09 15398.35 32699.82 8195.25 20598.01 39397.41 27795.30 34398.78 269
tpmvs97.98 23098.02 20897.84 33299.04 31194.73 37199.31 25699.20 30696.10 34898.76 28599.42 27594.94 21299.81 18996.97 30398.45 22698.97 258
tt080597.97 23397.77 23598.57 25999.59 15296.61 32499.45 19899.08 32098.21 13598.88 26799.80 10888.66 36399.70 23798.58 16397.72 26499.39 212
NR-MVSNet97.97 23397.61 25599.02 19498.87 33599.26 12399.47 19499.42 21897.63 21097.08 37199.50 25295.07 21099.13 33797.86 23093.59 37398.68 298
v897.95 23597.63 25398.93 20898.95 32598.81 18999.80 2599.41 22196.03 34999.10 23099.42 27594.92 21599.30 30996.94 30694.08 36798.66 313
Patchmatch-test97.93 23697.65 24998.77 24299.18 27797.07 29499.03 32999.14 31496.16 33998.74 28699.57 22794.56 23999.72 22593.36 37799.11 18199.52 175
PS-CasMVS97.93 23697.59 25798.95 20498.99 31899.06 15099.68 6699.52 10597.13 26298.31 32899.68 17992.44 30799.05 34898.51 17494.08 36798.75 277
TranMVSNet+NR-MVSNet97.93 23697.66 24898.76 24398.78 34698.62 20499.65 8199.49 14997.76 19598.49 31999.60 21694.23 25298.97 36598.00 22092.90 38098.70 289
test_vis1_n97.92 23997.44 27899.34 14799.53 16898.08 24299.74 4699.49 14999.15 21100.00 199.94 679.51 40899.98 1399.88 1399.76 11799.97 4
v14419297.92 23997.60 25698.87 22598.83 34198.65 20099.55 14499.34 25996.20 33599.32 18199.40 28394.36 24899.26 31596.37 32995.03 34998.70 289
ACMH+97.24 1097.92 23997.78 23398.32 29399.46 19996.68 32199.56 13099.54 8798.41 10997.79 35599.87 4890.18 34699.66 24898.05 21797.18 30098.62 326
LFMVS97.90 24297.35 29099.54 10499.52 17399.01 15699.39 23098.24 39097.10 26899.65 9999.79 12084.79 39299.91 11499.28 6798.38 22899.69 119
reproduce_monomvs97.89 24397.87 22597.96 32399.51 17695.45 35699.60 10299.25 29699.17 1998.85 27599.49 25589.29 35599.64 25699.35 5596.31 31698.78 269
Anonymous2023121197.88 24497.54 26198.90 21699.71 9998.53 21299.48 18899.57 6594.16 37798.81 27899.68 17993.23 27899.42 28798.84 12594.42 36098.76 275
OurMVSNet-221017-097.88 24497.77 23598.19 30498.71 35996.53 32699.88 499.00 33297.79 19198.78 28399.94 691.68 32299.35 30197.21 28796.99 30498.69 293
v7n97.87 24697.52 26298.92 21098.76 35398.58 20899.84 1299.46 19196.20 33598.91 26299.70 16294.89 21799.44 28296.03 33393.89 37098.75 277
baseline297.87 24697.55 25898.82 23499.18 27798.02 24599.41 21896.58 41296.97 27996.51 37899.17 33093.43 27599.57 26797.71 24999.03 19098.86 264
thres600view797.86 24897.51 26498.92 21099.72 9497.95 25299.59 10998.74 36997.94 17299.27 19498.62 37391.75 31999.86 15193.73 37398.19 24398.96 260
UBG97.85 24997.48 26798.95 20499.25 26097.64 26999.24 28698.74 36997.90 17698.64 30598.20 38988.65 36499.81 18998.27 19798.40 22799.42 206
cl2297.85 24997.64 25298.48 27099.09 30197.87 25698.60 38599.33 26697.11 26798.87 27099.22 32592.38 30899.17 33298.21 20095.99 32498.42 355
v1097.85 24997.52 26298.86 22898.99 31898.67 19899.75 4299.41 22195.70 35398.98 25299.41 27994.75 22899.23 31996.01 33594.63 35698.67 305
GA-MVS97.85 24997.47 27099.00 19799.38 22497.99 24798.57 38699.15 31297.04 27598.90 26499.30 31289.83 34999.38 29196.70 31798.33 23199.62 147
tfpnnormal97.84 25397.47 27098.98 19999.20 27199.22 12899.64 8499.61 4896.32 32698.27 33299.70 16293.35 27799.44 28295.69 34295.40 34198.27 365
VPNet97.84 25397.44 27899.01 19599.21 26998.94 17199.48 18899.57 6598.38 11199.28 18999.73 15388.89 35899.39 28999.19 7593.27 37798.71 284
LCM-MVSNet-Re97.83 25598.15 19096.87 36699.30 24592.25 39699.59 10998.26 38897.43 23696.20 38299.13 33596.27 16698.73 37998.17 20598.99 19399.64 140
XVG-ACMP-BASELINE97.83 25597.71 24498.20 30399.11 29596.33 33399.41 21899.52 10598.06 16299.05 24299.50 25289.64 35299.73 22197.73 24697.38 29398.53 343
IterMVS97.83 25597.77 23598.02 31699.58 15496.27 33699.02 33299.48 16197.22 25698.71 28999.70 16292.75 28999.13 33797.46 27396.00 32398.67 305
Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo.
IterMVS-SCA-FT97.82 25897.75 24098.06 31399.57 15696.36 33299.02 33299.49 14997.18 25898.71 28999.72 15792.72 29299.14 33497.44 27595.86 32998.67 305
EPMVS97.82 25897.65 24998.35 29098.88 33295.98 34399.49 18494.71 41897.57 21699.26 19899.48 26192.46 30699.71 23197.87 22999.08 18699.35 218
MVP-Stereo97.81 26097.75 24097.99 32097.53 39296.60 32598.96 34798.85 35697.22 25697.23 36699.36 29595.28 20199.46 27695.51 34699.78 11197.92 390
Qingsong Yan: MVP-Stereo: A Parallel Multi-View Patchmatch Stereo Method with Dilation Matching for Photogrammetric Application.
v119297.81 26097.44 27898.91 21498.88 33298.68 19799.51 16699.34 25996.18 33799.20 21199.34 30294.03 26099.36 29895.32 35295.18 34598.69 293
ttmdpeth97.80 26297.63 25398.29 29698.77 35197.38 27799.64 8499.36 24798.78 7796.30 38199.58 22292.34 31099.39 28998.36 18995.58 33698.10 375
v192192097.80 26297.45 27398.84 23298.80 34298.53 21299.52 15799.34 25996.15 34199.24 20099.47 26493.98 26299.29 31095.40 35095.13 34798.69 293
v14897.79 26497.55 25898.50 26798.74 35497.72 26499.54 14899.33 26696.26 33198.90 26499.51 24994.68 23399.14 33497.83 23493.15 37998.63 324
thres40097.77 26597.38 28698.92 21099.69 10897.96 25099.50 17398.73 37597.83 18699.17 21998.45 37991.67 32399.83 17793.22 37898.18 24498.96 260
thres100view90097.76 26697.45 27398.69 24999.72 9497.86 25899.59 10998.74 36997.93 17399.26 19898.62 37391.75 31999.83 17793.22 37898.18 24498.37 361
PEN-MVS97.76 26697.44 27898.72 24598.77 35198.54 21199.78 3299.51 11997.06 27298.29 33199.64 19892.63 29898.89 37398.09 20993.16 37898.72 282
Baseline_NR-MVSNet97.76 26697.45 27398.68 25099.09 30198.29 23199.41 21898.85 35695.65 35498.63 30799.67 18594.82 21999.10 34498.07 21692.89 38198.64 317
TR-MVS97.76 26697.41 28498.82 23499.06 30797.87 25698.87 36098.56 38296.63 30498.68 29799.22 32592.49 30299.65 25395.40 35097.79 26298.95 262
Patchmtry97.75 27097.40 28598.81 23799.10 29898.87 17899.11 31599.33 26694.83 36998.81 27899.38 28994.33 24999.02 35396.10 33195.57 33798.53 343
dp97.75 27097.80 22997.59 34699.10 29893.71 38599.32 25398.88 35296.48 31799.08 23499.55 23392.67 29799.82 18496.52 32498.58 21799.24 231
WBMVS97.74 27297.50 26598.46 27699.24 26297.43 27599.21 29499.42 21897.45 23298.96 25699.41 27988.83 35999.23 31998.94 10396.02 32198.71 284
TAPA-MVS97.07 1597.74 27297.34 29398.94 20699.70 10497.53 27299.25 28499.51 11991.90 39599.30 18599.63 20498.78 5199.64 25688.09 40499.87 6099.65 133
Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019
VDD-MVS97.73 27497.35 29098.88 22199.47 19797.12 28999.34 25098.85 35698.19 13799.67 8799.85 5782.98 39999.92 10299.49 4598.32 23599.60 152
MIMVSNet97.73 27497.45 27398.57 25999.45 20597.50 27399.02 33298.98 33496.11 34499.41 15999.14 33490.28 34198.74 37895.74 34098.93 19699.47 194
tfpn200view997.72 27697.38 28698.72 24599.69 10897.96 25099.50 17398.73 37597.83 18699.17 21998.45 37991.67 32399.83 17793.22 37898.18 24498.37 361
CostFormer97.72 27697.73 24297.71 34099.15 29194.02 38199.54 14899.02 33094.67 37299.04 24399.35 29892.35 30999.77 20698.50 17597.94 25499.34 221
FMVSNet297.72 27697.36 28898.80 23999.51 17698.84 18399.45 19899.42 21896.49 31498.86 27499.29 31490.26 34298.98 35896.44 32696.56 30998.58 340
test0.0.03 197.71 27997.42 28398.56 26298.41 38097.82 25998.78 36898.63 38097.34 24498.05 34598.98 35294.45 24698.98 35895.04 35797.15 30198.89 263
h-mvs3397.70 28097.28 30198.97 20199.70 10497.27 28199.36 24299.45 20298.94 5899.66 9299.64 19894.93 21399.99 499.48 4684.36 40799.65 133
v124097.69 28197.32 29698.79 24098.85 33998.43 22699.48 18899.36 24796.11 34499.27 19499.36 29593.76 27299.24 31894.46 36495.23 34498.70 289
cascas97.69 28197.43 28298.48 27098.60 37097.30 27998.18 40499.39 23092.96 38998.41 32298.78 36993.77 27199.27 31498.16 20698.61 21498.86 264
pm-mvs197.68 28397.28 30198.88 22199.06 30798.62 20499.50 17399.45 20296.32 32697.87 35199.79 12092.47 30399.35 30197.54 26593.54 37498.67 305
GBi-Net97.68 28397.48 26798.29 29699.51 17697.26 28399.43 20899.48 16196.49 31499.07 23599.32 30990.26 34298.98 35897.10 29596.65 30698.62 326
test197.68 28397.48 26798.29 29699.51 17697.26 28399.43 20899.48 16196.49 31499.07 23599.32 30990.26 34298.98 35897.10 29596.65 30698.62 326
tpm97.67 28697.55 25898.03 31499.02 31395.01 36699.43 20898.54 38496.44 32099.12 22599.34 30291.83 31899.60 26597.75 24496.46 31199.48 188
PCF-MVS97.08 1497.66 28797.06 31299.47 12999.61 14599.09 14498.04 40799.25 29691.24 39898.51 31799.70 16294.55 24199.91 11492.76 38699.85 7599.42 206
Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019
WB-MVSnew97.65 28897.65 24997.63 34398.78 34697.62 27099.13 30698.33 38797.36 24399.07 23598.94 35695.64 19199.15 33392.95 38298.68 21396.12 409
our_test_397.65 28897.68 24697.55 34798.62 36794.97 36798.84 36299.30 28496.83 29198.19 33799.34 30297.01 13999.02 35395.00 35896.01 32298.64 317
testgi97.65 28897.50 26598.13 31099.36 23096.45 32999.42 21599.48 16197.76 19597.87 35199.45 27091.09 33498.81 37594.53 36398.52 22399.13 237
thres20097.61 29197.28 30198.62 25399.64 13298.03 24499.26 28298.74 36997.68 20599.09 23398.32 38591.66 32599.81 18992.88 38398.22 23998.03 380
PAPM97.59 29297.09 31199.07 18799.06 30798.26 23398.30 40099.10 31794.88 36798.08 34199.34 30296.27 16699.64 25689.87 39798.92 19899.31 224
UWE-MVS97.58 29397.29 30098.48 27099.09 30196.25 33799.01 33796.61 41197.86 18099.19 21499.01 34888.72 36099.90 12697.38 27998.69 21299.28 226
VDDNet97.55 29497.02 31399.16 17999.49 18998.12 24199.38 23599.30 28495.35 35799.68 8399.90 2782.62 40199.93 9099.31 6398.13 24899.42 206
TESTMET0.1,197.55 29497.27 30498.40 28698.93 32696.53 32698.67 37797.61 40196.96 28098.64 30599.28 31688.63 36699.45 27797.30 28399.38 15899.21 233
pmmvs597.52 29697.30 29898.16 30698.57 37396.73 31699.27 27398.90 34996.14 34298.37 32599.53 24291.54 32899.14 33497.51 26795.87 32898.63 324
LF4IMVS97.52 29697.46 27297.70 34198.98 32195.55 35199.29 26398.82 35998.07 15898.66 29899.64 19889.97 34799.61 26497.01 29996.68 30597.94 388
DTE-MVSNet97.51 29897.19 30698.46 27698.63 36698.13 24099.84 1299.48 16196.68 29797.97 34899.67 18592.92 28598.56 38296.88 31192.60 38698.70 289
testing1197.50 29997.10 31098.71 24799.20 27196.91 30999.29 26398.82 35997.89 17798.21 33698.40 38185.63 38699.83 17798.45 18198.04 25199.37 216
ETVMVS97.50 29996.90 31799.29 16299.23 26498.78 19299.32 25398.90 34997.52 22598.56 31498.09 39584.72 39399.69 24297.86 23097.88 25799.39 212
hse-mvs297.50 29997.14 30798.59 25599.49 18997.05 29699.28 26899.22 30298.94 5899.66 9299.42 27594.93 21399.65 25399.48 4683.80 40999.08 243
SixPastTwentyTwo97.50 29997.33 29598.03 31498.65 36496.23 33899.77 3498.68 37897.14 26197.90 34999.93 990.45 34099.18 33197.00 30096.43 31298.67 305
JIA-IIPM97.50 29997.02 31398.93 20898.73 35597.80 26099.30 25898.97 33591.73 39698.91 26294.86 41195.10 20999.71 23197.58 25897.98 25299.28 226
ppachtmachnet_test97.49 30497.45 27397.61 34598.62 36795.24 36198.80 36699.46 19196.11 34498.22 33599.62 20996.45 16098.97 36593.77 37295.97 32798.61 335
test-mter97.49 30497.13 30998.55 26498.79 34397.10 29098.67 37797.75 39896.65 30098.61 31098.85 36288.23 37099.45 27797.25 28599.38 15899.10 238
testing9197.44 30697.02 31398.71 24799.18 27796.89 31199.19 29699.04 32797.78 19398.31 32898.29 38685.41 38899.85 15798.01 21997.95 25399.39 212
tpm297.44 30697.34 29397.74 33999.15 29194.36 37899.45 19898.94 33893.45 38698.90 26499.44 27191.35 33199.59 26697.31 28298.07 25099.29 225
tpm cat197.39 30897.36 28897.50 34999.17 28593.73 38499.43 20899.31 28091.27 39798.71 28999.08 33994.31 25199.77 20696.41 32898.50 22499.00 254
testing9997.36 30996.94 31698.63 25299.18 27796.70 31799.30 25898.93 33997.71 20098.23 33398.26 38784.92 39199.84 16498.04 21897.85 26099.35 218
USDC97.34 31097.20 30597.75 33899.07 30595.20 36298.51 39099.04 32797.99 16998.31 32899.86 5289.02 35699.55 27095.67 34497.36 29498.49 346
UniMVSNet_ETH3D97.32 31196.81 31998.87 22599.40 21997.46 27499.51 16699.53 10095.86 35298.54 31699.77 13582.44 40299.66 24898.68 14797.52 27899.50 186
testing397.28 31296.76 32198.82 23499.37 22798.07 24399.45 19899.36 24797.56 21897.89 35098.95 35583.70 39798.82 37496.03 33398.56 22099.58 160
MVS97.28 31296.55 32599.48 12698.78 34698.95 16899.27 27399.39 23083.53 41198.08 34199.54 23896.97 14099.87 14894.23 36899.16 17599.63 145
test_fmvs297.25 31497.30 29897.09 35999.43 20793.31 39099.73 5098.87 35498.83 6899.28 18999.80 10884.45 39499.66 24897.88 22797.45 28698.30 363
DSMNet-mixed97.25 31497.35 29096.95 36397.84 38793.61 38899.57 12496.63 41096.13 34398.87 27098.61 37594.59 23797.70 40095.08 35698.86 20299.55 166
MS-PatchMatch97.24 31697.32 29696.99 36098.45 37893.51 38998.82 36499.32 27697.41 23998.13 34099.30 31288.99 35799.56 26895.68 34399.80 10397.90 391
testing22297.16 31796.50 32699.16 17999.16 28798.47 22499.27 27398.66 37997.71 20098.23 33398.15 39082.28 40499.84 16497.36 28097.66 26699.18 234
TransMVSNet (Re)97.15 31896.58 32498.86 22899.12 29398.85 18299.49 18498.91 34795.48 35697.16 36999.80 10893.38 27699.11 34294.16 37091.73 38898.62 326
TinyColmap97.12 31996.89 31897.83 33399.07 30595.52 35498.57 38698.74 36997.58 21597.81 35499.79 12088.16 37199.56 26895.10 35597.21 29898.39 359
K. test v397.10 32096.79 32098.01 31798.72 35796.33 33399.87 897.05 40497.59 21396.16 38399.80 10888.71 36199.04 34996.69 31896.55 31098.65 315
Syy-MVS97.09 32197.14 30796.95 36399.00 31592.73 39499.29 26399.39 23097.06 27297.41 36098.15 39093.92 26598.68 38091.71 39098.34 22999.45 202
PatchT97.03 32296.44 32898.79 24098.99 31898.34 23099.16 30099.07 32392.13 39499.52 13497.31 40494.54 24298.98 35888.54 40298.73 21199.03 251
mmtdpeth96.95 32396.71 32297.67 34299.33 23694.90 36999.89 299.28 29098.15 14299.72 7598.57 37686.56 38199.90 12699.82 1689.02 40098.20 370
myMVS_eth3d96.89 32496.37 32998.43 28399.00 31597.16 28799.29 26399.39 23097.06 27297.41 36098.15 39083.46 39898.68 38095.27 35398.34 22999.45 202
AUN-MVS96.88 32596.31 33198.59 25599.48 19697.04 29999.27 27399.22 30297.44 23598.51 31799.41 27991.97 31499.66 24897.71 24983.83 40899.07 248
FMVSNet196.84 32696.36 33098.29 29699.32 24397.26 28399.43 20899.48 16195.11 36198.55 31599.32 30983.95 39698.98 35895.81 33896.26 31798.62 326
test250696.81 32796.65 32397.29 35499.74 8392.21 39799.60 10285.06 42899.13 2499.77 5899.93 987.82 37699.85 15799.38 5399.38 15899.80 73
RPMNet96.72 32895.90 34199.19 17699.18 27798.49 22099.22 29299.52 10588.72 40799.56 12597.38 40194.08 25999.95 6286.87 40998.58 21799.14 235
mvs5depth96.66 32996.22 33397.97 32197.00 40396.28 33598.66 38099.03 32996.61 30596.93 37599.79 12087.20 37999.47 27496.65 32294.13 36598.16 372
test_040296.64 33096.24 33297.85 33098.85 33996.43 33099.44 20499.26 29493.52 38396.98 37399.52 24588.52 36799.20 33092.58 38897.50 28197.93 389
X-MVStestdata96.55 33195.45 35099.87 1499.85 2699.83 1999.69 6099.68 2098.98 5299.37 17064.01 42498.81 4799.94 7298.79 13399.86 6899.84 42
pmmvs696.53 33296.09 33797.82 33598.69 36195.47 35599.37 23799.47 18293.46 38597.41 36099.78 12787.06 38099.33 30496.92 30992.70 38498.65 315
ET-MVSNet_ETH3D96.49 33395.64 34799.05 19199.53 16898.82 18798.84 36297.51 40297.63 21084.77 41199.21 32892.09 31298.91 37098.98 9892.21 38799.41 209
UnsupCasMVSNet_eth96.44 33496.12 33597.40 35198.65 36495.65 34899.36 24299.51 11997.13 26296.04 38598.99 35088.40 36898.17 38996.71 31690.27 39698.40 358
FMVSNet596.43 33596.19 33497.15 35599.11 29595.89 34599.32 25399.52 10594.47 37698.34 32799.07 34087.54 37797.07 40592.61 38795.72 33398.47 349
new_pmnet96.38 33696.03 33897.41 35098.13 38495.16 36599.05 32499.20 30693.94 37897.39 36398.79 36891.61 32799.04 34990.43 39595.77 33098.05 379
Anonymous2023120696.22 33796.03 33896.79 36897.31 39794.14 38099.63 9099.08 32096.17 33897.04 37299.06 34293.94 26397.76 39986.96 40895.06 34898.47 349
IB-MVS95.67 1896.22 33795.44 35198.57 25999.21 26996.70 31798.65 38197.74 40096.71 29597.27 36598.54 37786.03 38399.92 10298.47 17986.30 40599.10 238
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
Anonymous2024052196.20 33995.89 34297.13 35797.72 39194.96 36899.79 3199.29 28893.01 38897.20 36899.03 34589.69 35198.36 38691.16 39396.13 31998.07 377
gg-mvs-nofinetune96.17 34095.32 35298.73 24498.79 34398.14 23999.38 23594.09 41991.07 40098.07 34491.04 41789.62 35399.35 30196.75 31499.09 18598.68 298
test20.0396.12 34195.96 34096.63 36997.44 39395.45 35699.51 16699.38 23896.55 31196.16 38399.25 32293.76 27296.17 41087.35 40794.22 36398.27 365
PVSNet_094.43 1996.09 34295.47 34997.94 32499.31 24494.34 37997.81 40899.70 1597.12 26497.46 35998.75 37089.71 35099.79 19997.69 25281.69 41199.68 123
MVStest196.08 34395.48 34897.89 32898.93 32696.70 31799.56 13099.35 25492.69 39291.81 40699.46 26889.90 34898.96 36795.00 35892.61 38598.00 384
EG-PatchMatch MVS95.97 34495.69 34596.81 36797.78 38892.79 39399.16 30098.93 33996.16 33994.08 39699.22 32582.72 40099.47 27495.67 34497.50 28198.17 371
APD_test195.87 34596.49 32794.00 38099.53 16884.01 40999.54 14899.32 27695.91 35197.99 34699.85 5785.49 38799.88 14391.96 38998.84 20498.12 374
Patchmatch-RL test95.84 34695.81 34495.95 37595.61 40890.57 40198.24 40198.39 38695.10 36395.20 39098.67 37294.78 22397.77 39896.28 33090.02 39799.51 182
test_vis1_rt95.81 34795.65 34696.32 37399.67 11491.35 40099.49 18496.74 40998.25 12895.24 38898.10 39474.96 40999.90 12699.53 3798.85 20397.70 394
MVS-HIRNet95.75 34895.16 35397.51 34899.30 24593.69 38698.88 35895.78 41385.09 41098.78 28392.65 41391.29 33299.37 29494.85 36099.85 7599.46 199
MIMVSNet195.51 34995.04 35496.92 36597.38 39495.60 34999.52 15799.50 13993.65 38296.97 37499.17 33085.28 39096.56 40988.36 40395.55 33898.60 338
MDA-MVSNet_test_wron95.45 35094.60 35798.01 31798.16 38397.21 28699.11 31599.24 29993.49 38480.73 41798.98 35293.02 28298.18 38894.22 36994.45 35998.64 317
TDRefinement95.42 35194.57 35897.97 32189.83 42196.11 34299.48 18898.75 36696.74 29396.68 37799.88 3988.65 36499.71 23198.37 18782.74 41098.09 376
YYNet195.36 35294.51 35997.92 32597.89 38697.10 29099.10 31799.23 30093.26 38780.77 41699.04 34492.81 28898.02 39294.30 36594.18 36498.64 317
pmmvs-eth3d95.34 35394.73 35697.15 35595.53 41095.94 34499.35 24799.10 31795.13 35993.55 39897.54 39988.15 37297.91 39594.58 36289.69 39997.61 395
dmvs_testset95.02 35496.12 33591.72 38999.10 29880.43 41799.58 11797.87 39797.47 22895.22 38998.82 36493.99 26195.18 41488.09 40494.91 35399.56 165
KD-MVS_self_test95.00 35594.34 36096.96 36297.07 40295.39 35999.56 13099.44 21095.11 36197.13 37097.32 40391.86 31797.27 40490.35 39681.23 41298.23 369
MDA-MVSNet-bldmvs94.96 35693.98 36397.92 32598.24 38297.27 28199.15 30399.33 26693.80 38080.09 41899.03 34588.31 36997.86 39793.49 37694.36 36198.62 326
N_pmnet94.95 35795.83 34392.31 38798.47 37779.33 41999.12 30992.81 42593.87 37997.68 35699.13 33593.87 26799.01 35591.38 39296.19 31898.59 339
KD-MVS_2432*160094.62 35893.72 36697.31 35297.19 40095.82 34698.34 39699.20 30695.00 36597.57 35798.35 38387.95 37398.10 39092.87 38477.00 41598.01 381
miper_refine_blended94.62 35893.72 36697.31 35297.19 40095.82 34698.34 39699.20 30695.00 36597.57 35798.35 38387.95 37398.10 39092.87 38477.00 41598.01 381
CL-MVSNet_self_test94.49 36093.97 36496.08 37496.16 40593.67 38798.33 39899.38 23895.13 35997.33 36498.15 39092.69 29696.57 40888.67 40179.87 41397.99 385
new-patchmatchnet94.48 36194.08 36295.67 37695.08 41392.41 39599.18 29899.28 29094.55 37593.49 39997.37 40287.86 37597.01 40691.57 39188.36 40197.61 395
OpenMVS_ROBcopyleft92.34 2094.38 36293.70 36896.41 37297.38 39493.17 39199.06 32298.75 36686.58 40894.84 39498.26 38781.53 40599.32 30689.01 40097.87 25896.76 402
CMPMVSbinary69.68 2394.13 36394.90 35591.84 38897.24 39880.01 41898.52 38999.48 16189.01 40591.99 40599.67 18585.67 38599.13 33795.44 34897.03 30396.39 406
M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011
pmmvs394.09 36493.25 37096.60 37094.76 41594.49 37598.92 35498.18 39389.66 40196.48 37998.06 39686.28 38297.33 40389.68 39887.20 40497.97 387
mvsany_test393.77 36593.45 36994.74 37895.78 40788.01 40499.64 8498.25 38998.28 12394.31 39597.97 39768.89 41298.51 38497.50 26890.37 39597.71 392
UnsupCasMVSNet_bld93.53 36692.51 37296.58 37197.38 39493.82 38298.24 40199.48 16191.10 39993.10 40096.66 40674.89 41098.37 38594.03 37187.71 40397.56 397
dongtai93.26 36792.93 37194.25 37999.39 22285.68 40797.68 41093.27 42192.87 39096.85 37699.39 28782.33 40397.48 40276.78 41597.80 26199.58 160
WB-MVS93.10 36894.10 36190.12 39495.51 41281.88 41499.73 5099.27 29395.05 36493.09 40198.91 36194.70 23291.89 41876.62 41694.02 36996.58 404
PM-MVS92.96 36992.23 37395.14 37795.61 40889.98 40399.37 23798.21 39194.80 37095.04 39397.69 39865.06 41397.90 39694.30 36589.98 39897.54 398
SSC-MVS92.73 37093.73 36589.72 39595.02 41481.38 41599.76 3799.23 30094.87 36892.80 40298.93 35794.71 23191.37 41974.49 41893.80 37196.42 405
test_fmvs392.10 37191.77 37493.08 38596.19 40486.25 40599.82 1698.62 38196.65 30095.19 39196.90 40555.05 42095.93 41296.63 32390.92 39497.06 401
test_f91.90 37291.26 37693.84 38195.52 41185.92 40699.69 6098.53 38595.31 35893.87 39796.37 40855.33 41998.27 38795.70 34190.98 39397.32 400
test_method91.10 37391.36 37590.31 39395.85 40673.72 42694.89 41499.25 29668.39 41795.82 38699.02 34780.50 40798.95 36893.64 37494.89 35498.25 367
Gipumacopyleft90.99 37490.15 37993.51 38298.73 35590.12 40293.98 41599.45 20279.32 41392.28 40394.91 41069.61 41197.98 39487.42 40695.67 33492.45 413
S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015
kuosan90.92 37590.11 38093.34 38398.78 34685.59 40898.15 40593.16 42389.37 40492.07 40498.38 38281.48 40695.19 41362.54 42297.04 30299.25 230
testf190.42 37690.68 37789.65 39697.78 38873.97 42499.13 30698.81 36189.62 40291.80 40798.93 35762.23 41698.80 37686.61 41091.17 39096.19 407
APD_test290.42 37690.68 37789.65 39697.78 38873.97 42499.13 30698.81 36189.62 40291.80 40798.93 35762.23 41698.80 37686.61 41091.17 39096.19 407
test_vis3_rt87.04 37885.81 38190.73 39293.99 41681.96 41399.76 3790.23 42792.81 39181.35 41591.56 41540.06 42499.07 34694.27 36788.23 40291.15 415
PMMVS286.87 37985.37 38391.35 39190.21 42083.80 41098.89 35797.45 40383.13 41291.67 40995.03 40948.49 42294.70 41585.86 41277.62 41495.54 410
LCM-MVSNet86.80 38085.22 38491.53 39087.81 42280.96 41698.23 40398.99 33371.05 41590.13 41096.51 40748.45 42396.88 40790.51 39485.30 40696.76 402
FPMVS84.93 38185.65 38282.75 40286.77 42363.39 42898.35 39598.92 34274.11 41483.39 41398.98 35250.85 42192.40 41784.54 41394.97 35092.46 412
EGC-MVSNET82.80 38277.86 38897.62 34497.91 38596.12 34199.33 25299.28 2908.40 42525.05 42699.27 31984.11 39599.33 30489.20 39998.22 23997.42 399
tmp_tt82.80 38281.52 38586.66 39866.61 42868.44 42792.79 41797.92 39568.96 41680.04 41999.85 5785.77 38496.15 41197.86 23043.89 42195.39 411
E-PMN80.61 38479.88 38682.81 40190.75 41976.38 42297.69 40995.76 41466.44 41983.52 41292.25 41462.54 41587.16 42168.53 42061.40 41884.89 419
EMVS80.02 38579.22 38782.43 40391.19 41876.40 42197.55 41292.49 42666.36 42083.01 41491.27 41664.63 41485.79 42265.82 42160.65 41985.08 418
ANet_high77.30 38674.86 39084.62 40075.88 42677.61 42097.63 41193.15 42488.81 40664.27 42189.29 41836.51 42583.93 42375.89 41752.31 42092.33 414
MVEpermissive76.82 2176.91 38774.31 39184.70 39985.38 42576.05 42396.88 41393.17 42267.39 41871.28 42089.01 41921.66 43087.69 42071.74 41972.29 41790.35 416
Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014)
PMVScopyleft70.75 2275.98 38874.97 38979.01 40470.98 42755.18 42993.37 41698.21 39165.08 42161.78 42293.83 41221.74 42992.53 41678.59 41491.12 39289.34 417
Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010)
wuyk23d40.18 38941.29 39436.84 40586.18 42449.12 43079.73 41822.81 43027.64 42225.46 42528.45 42521.98 42848.89 42455.80 42323.56 42412.51 422
testmvs39.17 39043.78 39225.37 40736.04 43016.84 43298.36 39426.56 42920.06 42338.51 42467.32 42029.64 42715.30 42637.59 42439.90 42243.98 421
test12339.01 39142.50 39328.53 40639.17 42920.91 43198.75 37119.17 43119.83 42438.57 42366.67 42133.16 42615.42 42537.50 42529.66 42349.26 420
cdsmvs_eth3d_5k24.64 39232.85 3950.00 4080.00 4310.00 4330.00 41999.51 1190.00 4260.00 42799.56 23096.58 1530.00 4270.00 4260.00 4250.00 423
ab-mvs-re8.30 39311.06 3960.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 42799.58 2220.00 4310.00 4270.00 4260.00 4250.00 423
pcd_1.5k_mvsjas8.27 39411.03 3970.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 42799.01 180.00 4270.00 4260.00 4250.00 423
test_blank0.13 3950.17 3980.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4271.57 4260.00 4310.00 4270.00 4260.00 4250.00 423
mmdepth0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
monomultidepth0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
uanet_test0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
DCPMVS0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
sosnet-low-res0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
sosnet0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
uncertanet0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
Regformer0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
uanet0.02 3960.03 3990.00 4080.00 4310.00 4330.00 4190.00 4320.00 4260.00 4270.27 4270.00 4310.00 4270.00 4260.00 4250.00 423
WAC-MVS97.16 28795.47 347
FOURS199.91 199.93 199.87 899.56 7099.10 3199.81 43
MSC_two_6792asdad99.87 1499.51 17699.76 4099.33 26699.96 3298.87 11599.84 8399.89 19
PC_three_145298.18 14099.84 3599.70 16299.31 398.52 38398.30 19699.80 10399.81 64
No_MVS99.87 1499.51 17699.76 4099.33 26699.96 3298.87 11599.84 8399.89 19
test_one_060199.81 4699.88 899.49 14998.97 5599.65 9999.81 9599.09 14
eth-test20.00 431
eth-test0.00 431
ZD-MVS99.71 9999.79 3399.61 4896.84 28999.56 12599.54 23898.58 7599.96 3296.93 30799.75 119
RE-MVS-def99.34 4299.76 6699.82 2599.63 9099.52 10598.38 11199.76 6499.82 8198.75 5898.61 15799.81 9999.77 85
IU-MVS99.84 3299.88 899.32 27698.30 12299.84 3598.86 12099.85 7599.89 19
OPU-MVS99.64 8399.56 16099.72 4599.60 10299.70 16299.27 599.42 28798.24 19999.80 10399.79 77
test_241102_TWO99.48 16199.08 3799.88 2499.81 9598.94 3299.96 3298.91 10999.84 8399.88 25
test_241102_ONE99.84 3299.90 299.48 16199.07 3999.91 1799.74 14799.20 799.76 210
9.1499.10 8199.72 9499.40 22699.51 11997.53 22399.64 10499.78 12798.84 4499.91 11497.63 25499.82 96
save fliter99.76 6699.59 7399.14 30599.40 22799.00 47
test_0728_THIRD98.99 4999.81 4399.80 10899.09 1499.96 3298.85 12299.90 4399.88 25
test_0728_SECOND99.91 299.84 3299.89 499.57 12499.51 11999.96 3298.93 10699.86 6899.88 25
test072699.85 2699.89 499.62 9599.50 13999.10 3199.86 3399.82 8198.94 32
GSMVS99.52 175
test_part299.81 4699.83 1999.77 58
sam_mvs194.86 21899.52 175
sam_mvs94.72 230
ambc93.06 38692.68 41782.36 41198.47 39198.73 37595.09 39297.41 40055.55 41899.10 34496.42 32791.32 38997.71 392
MTGPAbinary99.47 182
test_post199.23 28865.14 42394.18 25699.71 23197.58 258
test_post65.99 42294.65 23699.73 221
patchmatchnet-post98.70 37194.79 22299.74 215
GG-mvs-BLEND98.45 27898.55 37498.16 23799.43 20893.68 42097.23 36698.46 37889.30 35499.22 32395.43 34998.22 23997.98 386
MTMP99.54 14898.88 352
gm-plane-assit98.54 37592.96 39294.65 37399.15 33399.64 25697.56 263
test9_res97.49 26999.72 12599.75 91
TEST999.67 11499.65 6099.05 32499.41 22196.22 33498.95 25799.49 25598.77 5499.91 114
test_899.67 11499.61 7099.03 32999.41 22196.28 32898.93 26099.48 26198.76 5599.91 114
agg_prior297.21 28799.73 12499.75 91
agg_prior99.67 11499.62 6899.40 22798.87 27099.91 114
TestCases99.31 15499.86 2098.48 22299.61 4897.85 18399.36 17399.85 5795.95 17699.85 15796.66 32099.83 9299.59 156
test_prior499.56 7998.99 340
test_prior298.96 34798.34 11799.01 24699.52 24598.68 6797.96 22299.74 122
test_prior99.68 7199.67 11499.48 9499.56 7099.83 17799.74 95
旧先验298.96 34796.70 29699.47 14299.94 7298.19 202
新几何299.01 337
新几何199.75 6199.75 7699.59 7399.54 8796.76 29299.29 18899.64 19898.43 8699.94 7296.92 30999.66 13599.72 106
旧先验199.74 8399.59 7399.54 8799.69 17298.47 8399.68 13399.73 100
无先验98.99 34099.51 11996.89 28699.93 9097.53 26699.72 106
原ACMM298.95 350
原ACMM199.65 7799.73 9099.33 11099.47 18297.46 22999.12 22599.66 19098.67 6999.91 11497.70 25199.69 13099.71 115
test22299.75 7699.49 9298.91 35699.49 14996.42 32299.34 17999.65 19298.28 9699.69 13099.72 106
testdata299.95 6296.67 319
segment_acmp98.96 25
testdata99.54 10499.75 7698.95 16899.51 11997.07 27099.43 15299.70 16298.87 4099.94 7297.76 24299.64 13899.72 106
testdata198.85 36198.32 120
test1299.75 6199.64 13299.61 7099.29 28899.21 20898.38 9199.89 13899.74 12299.74 95
plane_prior799.29 24997.03 300
plane_prior699.27 25496.98 30492.71 294
plane_prior599.47 18299.69 24297.78 23897.63 26798.67 305
plane_prior499.61 213
plane_prior397.00 30298.69 8499.11 227
plane_prior299.39 23098.97 55
plane_prior199.26 256
plane_prior96.97 30599.21 29498.45 10497.60 270
n20.00 432
nn0.00 432
door-mid98.05 394
lessismore_v097.79 33798.69 36195.44 35894.75 41795.71 38799.87 4888.69 36299.32 30695.89 33694.93 35298.62 326
LGP-MVS_train98.49 26899.33 23697.05 29699.55 7897.46 22999.24 20099.83 7292.58 29999.72 22598.09 20997.51 27998.68 298
test1199.35 254
door97.92 395
HQP5-MVS96.83 312
HQP-NCC99.19 27498.98 34398.24 12998.66 298
ACMP_Plane99.19 27498.98 34398.24 12998.66 298
BP-MVS97.19 291
HQP4-MVS98.66 29899.64 25698.64 317
HQP3-MVS99.39 23097.58 272
HQP2-MVS92.47 303
NP-MVS99.23 26496.92 30899.40 283
MDTV_nov1_ep13_2view95.18 36499.35 24796.84 28999.58 12195.19 20797.82 23599.46 199
MDTV_nov1_ep1398.32 18099.11 29594.44 37699.27 27398.74 36997.51 22699.40 16499.62 20994.78 22399.76 21097.59 25798.81 208
ACMMP++_ref97.19 299
ACMMP++97.43 290
Test By Simon98.75 58
ITE_SJBPF98.08 31299.29 24996.37 33198.92 34298.34 11798.83 27699.75 14291.09 33499.62 26395.82 33797.40 29298.25 367
DeepMVS_CXcopyleft93.34 38399.29 24982.27 41299.22 30285.15 40996.33 38099.05 34390.97 33699.73 22193.57 37597.77 26398.01 381