| SED-MVS | | | 79.21 1 | 84.74 2 | 72.75 1 | 78.66 2 | 81.96 2 | 82.94 4 | 58.16 4 | 86.82 2 | 67.66 1 | 88.29 4 | 86.15 3 | 66.42 2 | 80.41 4 | 78.65 6 | 82.65 16 | 90.92 2 |
|
| DVP-MVS++ | | | 78.76 3 | 84.44 3 | 72.14 2 | 76.63 7 | 81.93 3 | 82.92 5 | 58.10 5 | 85.86 4 | 66.53 3 | 87.86 5 | 86.16 2 | 66.45 1 | 80.46 3 | 78.53 9 | 82.19 28 | 90.29 4 |
|
| SF-MVS | | | 77.13 8 | 81.70 8 | 71.79 3 | 79.32 1 | 80.76 5 | 82.96 2 | 57.49 11 | 82.82 9 | 64.79 5 | 83.69 10 | 84.46 5 | 62.83 13 | 77.13 26 | 75.21 32 | 83.35 7 | 87.85 16 |
|
| DVP-MVS |  | | 78.77 2 | 84.89 1 | 71.62 4 | 78.04 3 | 82.05 1 | 81.64 10 | 57.96 7 | 87.53 1 | 66.64 2 | 88.77 1 | 86.31 1 | 63.16 10 | 79.99 7 | 78.56 7 | 82.31 23 | 91.03 1 |
| 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 |
| DPE-MVS |  | | 78.11 4 | 83.84 4 | 71.42 5 | 77.82 5 | 81.32 4 | 82.92 5 | 57.81 9 | 84.04 8 | 63.19 12 | 88.63 2 | 86.00 4 | 64.52 5 | 78.71 11 | 77.63 15 | 82.26 24 | 90.57 3 |
| Kehua Chen, Zhenlong Yuan, Tianlu Mao, Zhaoqi Wang: Dual-Level Precision Edges Guided Multi-View Stereo with Accurate Planarization. AAAI2025 |
| APDe-MVS |  | | 77.58 6 | 82.93 6 | 71.35 6 | 77.86 4 | 80.55 6 | 83.38 1 | 57.61 10 | 85.57 5 | 61.11 22 | 86.10 7 | 82.98 8 | 64.76 4 | 78.29 15 | 76.78 22 | 83.40 6 | 90.20 5 |
| Zhaojie Zeng, Yuesong Wang, Tao Guan: Matching Ambiguity-Resilient Multi-View Stereo via Adaptive Patch Deformation. Pattern Recognition |
| SMA-MVS |  | | 77.32 7 | 82.51 7 | 71.26 7 | 75.43 15 | 80.19 8 | 82.22 7 | 58.26 3 | 84.83 7 | 64.36 7 | 78.19 15 | 83.46 6 | 63.61 8 | 81.00 1 | 80.28 1 | 83.66 4 | 89.62 6 |
| 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 |
| MSP-MVS | | | 77.82 5 | 83.46 5 | 71.24 8 | 75.26 17 | 80.22 7 | 82.95 3 | 57.85 8 | 85.90 3 | 64.79 5 | 88.54 3 | 83.43 7 | 66.24 3 | 78.21 17 | 78.56 7 | 80.34 46 | 89.39 7 |
| 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 |
| HPM-MVS++ |  | | 76.01 10 | 80.47 12 | 70.81 9 | 76.60 8 | 74.96 36 | 80.18 17 | 58.36 2 | 81.96 10 | 63.50 11 | 78.80 14 | 82.53 11 | 64.40 6 | 78.74 10 | 78.84 5 | 81.81 34 | 87.46 18 |
|
| CNVR-MVS | | | 75.62 12 | 79.91 14 | 70.61 10 | 75.76 10 | 78.82 14 | 81.66 9 | 57.12 13 | 79.77 16 | 63.04 13 | 70.69 25 | 81.15 16 | 62.99 11 | 80.23 5 | 79.54 3 | 83.11 8 | 89.16 8 |
|
| ACMMP_NAP | | | 76.15 9 | 81.17 9 | 70.30 11 | 74.09 21 | 79.47 10 | 81.59 12 | 57.09 14 | 81.38 11 | 63.89 10 | 79.02 13 | 80.48 19 | 62.24 17 | 80.05 6 | 79.12 4 | 82.94 11 | 88.64 9 |
|
| HFP-MVS | | | 74.87 15 | 78.86 20 | 70.21 12 | 73.99 22 | 77.91 18 | 80.36 16 | 56.63 16 | 78.41 19 | 64.27 8 | 74.54 20 | 77.75 29 | 62.96 12 | 78.70 12 | 77.82 13 | 83.02 9 | 86.91 21 |
|
| NCCC | | | 74.27 19 | 77.83 24 | 70.13 13 | 75.70 11 | 77.41 23 | 80.51 15 | 57.09 14 | 78.25 20 | 62.28 18 | 65.54 37 | 78.26 25 | 62.18 18 | 79.13 8 | 78.51 10 | 83.01 10 | 87.68 17 |
|
| SteuartSystems-ACMMP | | | 75.23 13 | 79.60 15 | 70.13 13 | 76.81 6 | 78.92 12 | 81.74 8 | 57.99 6 | 75.30 29 | 59.83 27 | 75.69 18 | 78.45 24 | 60.48 29 | 80.58 2 | 79.77 2 | 83.94 3 | 88.52 10 |
| Skip Steuart: Steuart Systems R&D Blog. |
| APD-MVS |  | | 75.80 11 | 80.90 11 | 69.86 15 | 75.42 16 | 78.48 16 | 81.43 13 | 57.44 12 | 80.45 14 | 59.32 28 | 85.28 8 | 80.82 18 | 63.96 7 | 76.89 28 | 76.08 28 | 81.58 39 | 88.30 12 |
| Yuesong Wang, Zhaojie Zeng and etc.: Adaptive Patch Deformation for Textureless-Resilient Multi-View Stereo. CVPR2023 |
| TSAR-MVS + MP. | | | 75.22 14 | 80.06 13 | 69.56 16 | 74.61 19 | 72.74 49 | 80.59 14 | 55.70 23 | 80.80 13 | 62.65 15 | 86.25 6 | 82.92 9 | 62.07 19 | 76.89 28 | 75.66 31 | 81.77 36 | 85.19 33 |
| Zhenlong Yuan, Jiakai Cao, Zhaoqi Wang, Zhaoxin Li: TSAR-MVS: Textureless-aware Segmentation and Correlative Refinement Guided Multi-View Stereo. Pattern Recognition |
| CSCG | | | 74.68 16 | 79.22 16 | 69.40 17 | 75.69 12 | 80.01 9 | 79.12 24 | 52.83 41 | 79.34 17 | 63.99 9 | 70.49 26 | 82.02 12 | 60.35 32 | 77.48 24 | 77.22 19 | 84.38 1 | 87.97 15 |
|
| MCST-MVS | | | 73.67 24 | 77.39 26 | 69.33 18 | 76.26 9 | 78.19 17 | 78.77 26 | 54.54 30 | 75.33 27 | 59.99 26 | 67.96 32 | 79.23 22 | 62.43 16 | 78.00 18 | 75.71 30 | 84.02 2 | 87.30 19 |
|
| SD-MVS | | | 74.43 17 | 78.87 18 | 69.26 19 | 74.39 20 | 73.70 45 | 79.06 25 | 55.24 25 | 81.04 12 | 62.71 14 | 80.18 12 | 82.61 10 | 61.70 21 | 75.43 40 | 73.92 43 | 82.44 22 | 85.22 32 |
| 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 |
| DPM-MVS | | | 72.80 26 | 75.90 30 | 69.19 20 | 75.51 13 | 77.68 21 | 81.62 11 | 54.83 26 | 75.96 25 | 62.06 19 | 63.96 49 | 76.58 31 | 58.55 40 | 76.66 33 | 76.77 23 | 82.60 19 | 83.68 40 |
|
| MP-MVS |  | | 74.31 18 | 78.87 18 | 68.99 21 | 73.49 24 | 78.56 15 | 79.25 23 | 56.51 17 | 75.33 27 | 60.69 24 | 75.30 19 | 79.12 23 | 61.81 20 | 77.78 21 | 77.93 12 | 82.18 30 | 88.06 14 |
| Rongxuan Tan, Qing Wang, et al.: MP-MVS: Multi-Scale Windows PatchMatch and Planar Prior Multi-View Stereo. |
| DeepC-MVS | | 66.32 2 | 73.85 22 | 78.10 23 | 68.90 22 | 67.92 50 | 79.31 11 | 78.16 29 | 59.28 1 | 78.24 21 | 61.13 21 | 67.36 35 | 76.10 33 | 63.40 9 | 79.11 9 | 78.41 11 | 83.52 5 | 88.16 13 |
| Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020 |
| train_agg | | | 73.89 21 | 78.25 22 | 68.80 23 | 75.25 18 | 72.27 51 | 79.75 18 | 56.05 20 | 74.87 32 | 58.97 29 | 81.83 11 | 79.76 21 | 61.05 25 | 77.39 25 | 76.01 29 | 81.71 37 | 85.61 30 |
|
| ACMMPR | | | 73.79 23 | 78.41 21 | 68.40 24 | 72.35 28 | 77.79 20 | 79.32 20 | 56.38 18 | 77.67 23 | 58.30 33 | 74.16 21 | 76.66 30 | 61.40 22 | 78.32 14 | 77.80 14 | 82.68 15 | 86.51 22 |
|
| PGM-MVS | | | 72.89 25 | 77.13 27 | 67.94 25 | 72.47 27 | 77.25 24 | 79.27 22 | 54.63 29 | 73.71 36 | 57.95 35 | 72.38 23 | 75.33 35 | 60.75 27 | 78.25 16 | 77.36 18 | 82.57 20 | 85.62 29 |
|
| CP-MVS | | | 72.63 27 | 76.95 28 | 67.59 26 | 70.67 37 | 75.53 34 | 77.95 31 | 56.01 21 | 75.65 26 | 58.82 30 | 69.16 30 | 76.48 32 | 60.46 30 | 77.66 22 | 77.20 20 | 81.65 38 | 86.97 20 |
|
| OPM-MVS | | | 69.33 37 | 71.05 46 | 67.32 27 | 72.34 29 | 75.70 33 | 79.57 19 | 56.34 19 | 55.21 79 | 53.81 53 | 59.51 70 | 68.96 58 | 59.67 34 | 77.61 23 | 76.44 26 | 82.19 28 | 83.88 39 |
| Ray L. Khuboni, Hongjun Xu: Octagram Propagation Matching for Multi-Scale View Stereopsis (OPM-MVS). |
| DeepC-MVS_fast | | 65.08 3 | 72.00 30 | 76.11 29 | 67.21 28 | 68.93 46 | 77.46 22 | 76.54 36 | 54.35 31 | 74.92 31 | 58.64 32 | 65.18 39 | 74.04 43 | 62.62 14 | 77.92 19 | 77.02 21 | 82.16 31 | 86.21 23 |
| Andreas Kuhn, Christian Sormann, Mattia Rossi, Oliver Erdler, Friedrich Fraundorfer: DeepC-MVS: Deep Confidence Prediction for Multi-View Stereo Reconstruction. 3DV 2020 |
| AdaColmap |  | | 67.89 45 | 68.85 60 | 66.77 29 | 73.73 23 | 74.30 43 | 75.28 41 | 53.58 36 | 70.24 47 | 57.59 36 | 51.19 110 | 59.19 99 | 60.74 28 | 75.33 42 | 73.72 45 | 79.69 54 | 77.96 74 |
|
| MVS_0304 | | | 72.45 29 | 77.44 25 | 66.61 30 | 71.08 35 | 77.81 19 | 76.74 34 | 49.30 61 | 73.12 38 | 61.17 20 | 73.70 22 | 78.08 26 | 58.78 37 | 76.75 32 | 76.52 25 | 82.61 18 | 86.14 25 |
|
| ACMMP |  | | 71.57 31 | 75.84 31 | 66.59 31 | 70.30 41 | 76.85 29 | 78.46 28 | 53.95 34 | 73.52 37 | 55.56 40 | 70.13 27 | 71.36 50 | 58.55 40 | 77.00 27 | 76.23 27 | 82.71 14 | 85.81 28 |
| 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 |
| CDPH-MVS | | | 71.47 32 | 75.82 32 | 66.41 32 | 72.97 26 | 77.15 25 | 78.14 30 | 54.71 27 | 69.88 49 | 53.07 56 | 70.98 24 | 74.83 37 | 56.95 52 | 76.22 34 | 76.57 24 | 82.62 17 | 85.09 34 |
|
| DeepPCF-MVS | | 66.49 1 | 74.25 20 | 80.97 10 | 66.41 32 | 67.75 51 | 78.87 13 | 75.61 40 | 54.16 33 | 84.86 6 | 58.22 34 | 77.94 16 | 81.01 17 | 62.52 15 | 78.34 13 | 77.38 16 | 80.16 49 | 88.40 11 |
|
| ACMM | | 60.30 7 | 67.58 47 | 68.82 61 | 66.13 34 | 70.59 38 | 72.01 53 | 76.54 36 | 54.26 32 | 65.64 55 | 54.78 48 | 50.35 113 | 61.72 88 | 58.74 38 | 75.79 38 | 75.03 34 | 81.88 32 | 81.17 52 |
| Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019 |
| HQP-MVS | | | 70.88 34 | 75.02 34 | 66.05 35 | 71.69 31 | 74.47 41 | 77.51 32 | 53.17 38 | 72.89 39 | 54.88 46 | 70.03 28 | 70.48 52 | 57.26 48 | 76.02 36 | 75.01 35 | 81.78 35 | 86.21 23 |
|
| X-MVS | | | 71.18 33 | 75.66 33 | 65.96 36 | 71.71 30 | 76.96 26 | 77.26 33 | 55.88 22 | 72.75 40 | 54.48 49 | 64.39 44 | 74.47 38 | 54.19 68 | 77.84 20 | 77.37 17 | 82.21 27 | 85.85 27 |
|
| 3Dnovator+ | | 62.63 4 | 69.51 36 | 72.62 39 | 65.88 37 | 68.21 49 | 76.47 31 | 73.50 49 | 52.74 42 | 70.85 45 | 58.65 31 | 55.97 84 | 69.95 53 | 61.11 24 | 76.80 30 | 75.09 33 | 81.09 42 | 83.23 44 |
|
| ACMP | | 61.42 5 | 68.72 42 | 71.37 44 | 65.64 38 | 69.06 45 | 74.45 42 | 75.88 39 | 53.30 37 | 68.10 51 | 55.74 39 | 61.53 63 | 62.29 83 | 56.97 51 | 74.70 46 | 74.23 41 | 82.88 12 | 84.31 35 |
| Qingshan Xu and Wenbing Tao: Planar Prior Assisted PatchMatch Multi-View Stereo. AAAI 2020 |
| MSLP-MVS++ | | | 68.17 43 | 70.72 49 | 65.19 39 | 69.41 43 | 70.64 56 | 74.99 42 | 45.76 77 | 70.20 48 | 60.17 25 | 56.42 82 | 73.01 44 | 61.14 23 | 72.80 54 | 70.54 59 | 79.70 52 | 81.42 51 |
|
| LGP-MVS_train | | | 68.87 39 | 72.03 42 | 65.18 40 | 69.33 44 | 74.03 44 | 76.67 35 | 53.88 35 | 68.46 50 | 52.05 62 | 63.21 52 | 63.89 76 | 56.31 56 | 75.99 37 | 74.43 39 | 82.83 13 | 84.18 36 |
|
| TSAR-MVS + ACMM | | | 72.56 28 | 79.07 17 | 64.96 41 | 73.24 25 | 73.16 48 | 78.50 27 | 48.80 67 | 79.34 17 | 55.32 42 | 85.04 9 | 81.49 15 | 58.57 39 | 75.06 43 | 73.75 44 | 75.35 110 | 85.61 30 |
|
| MAR-MVS | | | 68.04 44 | 70.74 48 | 64.90 42 | 71.68 32 | 76.33 32 | 74.63 44 | 50.48 55 | 63.81 57 | 55.52 41 | 54.88 90 | 69.90 54 | 57.39 47 | 75.42 41 | 74.79 37 | 79.71 51 | 80.03 57 |
| 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 |
| TSAR-MVS + GP. | | | 69.71 35 | 73.92 36 | 64.80 43 | 68.27 48 | 70.56 57 | 71.90 50 | 50.75 51 | 71.38 44 | 57.46 37 | 68.68 31 | 75.42 34 | 60.10 33 | 73.47 51 | 73.99 42 | 80.32 47 | 83.97 38 |
|
| MVS_111021_HR | | | 67.62 46 | 70.39 50 | 64.39 44 | 69.77 42 | 70.45 59 | 71.44 53 | 51.72 47 | 60.77 65 | 55.06 44 | 62.14 60 | 66.40 72 | 58.13 43 | 76.13 35 | 74.79 37 | 80.19 48 | 82.04 49 |
|
| CANet | | | 68.77 40 | 73.01 37 | 63.83 45 | 68.30 47 | 75.19 35 | 73.73 48 | 47.90 68 | 63.86 56 | 54.84 47 | 67.51 34 | 74.36 41 | 57.62 44 | 74.22 48 | 73.57 47 | 80.56 44 | 82.36 46 |
|
| CPTT-MVS | | | 68.76 41 | 73.01 37 | 63.81 46 | 65.42 61 | 73.66 46 | 76.39 38 | 52.08 43 | 72.61 41 | 50.33 67 | 60.73 64 | 72.65 46 | 59.43 35 | 73.32 52 | 72.12 49 | 79.19 60 | 85.99 26 |
|
| EC-MVSNet | | | 67.01 50 | 70.27 53 | 63.21 47 | 67.21 52 | 70.47 58 | 69.01 58 | 46.96 71 | 59.16 70 | 53.23 55 | 64.01 48 | 69.71 56 | 60.37 31 | 74.92 44 | 71.24 55 | 82.50 21 | 82.41 45 |
|
| 3Dnovator | | 60.86 6 | 66.99 51 | 70.32 51 | 63.11 48 | 66.63 55 | 74.52 39 | 71.56 52 | 45.76 77 | 67.37 53 | 55.00 45 | 54.31 95 | 68.19 63 | 58.49 42 | 73.97 49 | 73.63 46 | 81.22 41 | 80.23 56 |
|
| PCF-MVS | | 59.98 8 | 67.32 48 | 71.04 47 | 62.97 49 | 64.77 63 | 74.49 40 | 74.78 43 | 49.54 57 | 67.44 52 | 54.39 52 | 58.35 76 | 72.81 45 | 55.79 62 | 71.54 62 | 69.24 70 | 78.57 62 | 83.41 42 |
| Andreas Kuhn, Shan Lin, Oliver Erdler: Plane Completion and Filtering for Multi-View Stereo Reconstruction. GCPR 2019 |
| PHI-MVS | | | 69.27 38 | 74.84 35 | 62.76 50 | 66.83 54 | 74.83 37 | 73.88 47 | 49.32 60 | 70.61 46 | 50.93 65 | 69.62 29 | 74.84 36 | 57.25 49 | 75.53 39 | 74.32 40 | 78.35 68 | 84.17 37 |
|
| CLD-MVS | | | 67.02 49 | 71.57 43 | 61.71 51 | 71.01 36 | 74.81 38 | 71.62 51 | 38.91 167 | 71.86 43 | 60.70 23 | 64.97 41 | 67.88 67 | 51.88 94 | 76.77 31 | 74.98 36 | 76.11 98 | 69.75 130 |
| Zhaoxin Li, Wangmeng Zuo, Zhaoqi Wang, Lei Zhang: Confidence-based Large-scale Dense Multi-view Stereo. IEEE Transaction on Image Processing, 2020 |
| CS-MVS | | | 65.88 52 | 69.71 56 | 61.41 52 | 61.76 82 | 68.14 69 | 67.65 64 | 44.00 105 | 59.14 71 | 52.69 57 | 65.19 38 | 68.13 64 | 60.90 26 | 74.74 45 | 71.58 51 | 81.46 40 | 81.04 53 |
|
| SPE-MVS-test | | | 65.18 58 | 68.70 62 | 61.07 53 | 61.92 79 | 68.06 71 | 67.09 73 | 45.18 85 | 58.47 72 | 52.02 63 | 65.76 36 | 66.44 71 | 59.24 36 | 72.71 55 | 70.05 64 | 80.98 43 | 79.40 60 |
|
| DELS-MVS | | | 65.87 53 | 70.30 52 | 60.71 54 | 64.05 71 | 72.68 50 | 70.90 54 | 45.43 81 | 57.49 74 | 49.05 72 | 64.43 43 | 68.66 59 | 55.11 64 | 74.31 47 | 73.02 48 | 79.70 52 | 81.51 50 |
| 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 |
| QAPM | | | 65.27 56 | 69.49 58 | 60.35 55 | 65.43 60 | 72.20 52 | 65.69 89 | 47.23 69 | 63.46 58 | 49.14 70 | 53.56 96 | 71.04 51 | 57.01 50 | 72.60 56 | 71.41 53 | 77.62 72 | 82.14 48 |
|
| casdiffmvs_mvg |  | | 65.26 57 | 69.48 59 | 60.33 56 | 62.99 77 | 69.34 62 | 69.80 57 | 45.27 83 | 63.38 59 | 51.11 64 | 65.12 40 | 69.75 55 | 53.51 76 | 71.74 60 | 68.86 76 | 79.33 56 | 78.19 72 |
| Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025 |
| Effi-MVS+ | | | 63.28 65 | 65.96 74 | 60.17 57 | 64.26 67 | 68.06 71 | 68.78 61 | 45.71 79 | 54.08 83 | 46.64 80 | 55.92 85 | 63.13 80 | 55.94 60 | 70.38 77 | 71.43 52 | 79.68 55 | 78.70 65 |
|
| EPNet | | | 65.14 60 | 69.54 57 | 60.00 58 | 66.61 56 | 67.67 77 | 67.53 66 | 55.32 24 | 62.67 61 | 46.22 85 | 67.74 33 | 65.93 73 | 48.07 116 | 72.17 57 | 72.12 49 | 76.28 94 | 78.47 68 |
| Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023 |
| ETV-MVS | | | 63.23 66 | 66.08 73 | 59.91 59 | 63.13 76 | 68.13 70 | 67.62 65 | 44.62 92 | 53.39 88 | 46.23 84 | 58.74 73 | 58.19 102 | 57.45 46 | 73.60 50 | 71.38 54 | 80.39 45 | 79.13 61 |
|
| PVSNet_Blended_VisFu | | | 63.65 63 | 66.92 66 | 59.83 60 | 60.03 97 | 73.44 47 | 66.33 79 | 48.95 63 | 52.20 100 | 50.81 66 | 56.07 83 | 60.25 95 | 53.56 74 | 73.23 53 | 70.01 65 | 79.30 57 | 83.24 43 |
|
| GeoE | | | 62.43 71 | 64.79 82 | 59.68 61 | 64.15 70 | 67.17 86 | 68.80 60 | 44.42 96 | 55.65 78 | 47.38 74 | 51.54 107 | 62.51 81 | 54.04 71 | 69.99 81 | 68.07 84 | 79.28 58 | 78.57 66 |
|
| OpenMVS |  | 57.13 9 | 62.81 68 | 65.75 75 | 59.39 62 | 66.47 57 | 69.52 61 | 64.26 103 | 43.07 130 | 61.34 64 | 50.19 68 | 47.29 131 | 64.41 75 | 54.60 65 | 70.18 80 | 68.62 80 | 77.73 70 | 78.89 64 |
|
| casdiffmvs |  | | 64.09 61 | 68.13 63 | 59.37 63 | 61.81 80 | 68.32 68 | 68.48 62 | 44.45 95 | 61.95 62 | 49.12 71 | 63.04 53 | 69.67 57 | 53.83 72 | 70.46 74 | 66.06 119 | 78.55 63 | 77.43 77 |
| Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025 |
| viewmacassd2359aftdt | | | 63.43 64 | 66.95 65 | 59.32 64 | 61.27 88 | 67.48 81 | 70.15 55 | 40.54 153 | 57.82 73 | 52.27 61 | 60.49 65 | 66.81 70 | 54.58 66 | 70.67 72 | 67.39 97 | 77.08 83 | 78.02 73 |
|
| viewmanbaseed2359cas | | | 63.67 62 | 67.42 64 | 59.30 65 | 61.34 85 | 67.42 83 | 70.01 56 | 40.50 156 | 59.53 67 | 52.60 58 | 62.56 58 | 67.34 69 | 54.44 67 | 70.33 78 | 66.93 103 | 76.91 84 | 77.82 76 |
|
| MVS_111021_LR | | | 63.05 67 | 66.43 70 | 59.10 66 | 61.33 86 | 63.77 120 | 65.87 86 | 43.58 115 | 60.20 66 | 53.70 54 | 62.09 61 | 62.38 82 | 55.84 61 | 70.24 79 | 68.08 83 | 74.30 119 | 78.28 71 |
|
| EIA-MVS | | | 61.53 78 | 63.79 88 | 58.89 67 | 63.82 74 | 67.61 78 | 65.35 92 | 42.15 138 | 49.98 108 | 45.66 88 | 57.47 80 | 56.62 109 | 56.59 55 | 70.91 70 | 69.15 71 | 79.78 50 | 74.80 104 |
|
| CNLPA | | | 62.78 69 | 66.31 71 | 58.65 68 | 58.47 107 | 68.41 67 | 65.98 84 | 41.22 147 | 78.02 22 | 56.04 38 | 46.65 134 | 59.50 98 | 57.50 45 | 69.67 83 | 65.27 132 | 72.70 146 | 76.67 85 |
|
| LS3D | | | 60.20 84 | 61.70 95 | 58.45 69 | 64.18 68 | 67.77 74 | 67.19 69 | 48.84 66 | 61.67 63 | 41.27 112 | 45.89 146 | 51.81 130 | 54.18 69 | 68.78 91 | 66.50 114 | 75.03 114 | 69.48 136 |
|
| sasdasda | | | 65.62 54 | 72.06 40 | 58.11 70 | 63.94 72 | 71.05 54 | 64.49 100 | 43.18 126 | 74.08 33 | 47.35 75 | 64.17 46 | 71.97 47 | 51.17 98 | 71.87 58 | 70.74 56 | 78.51 65 | 80.56 54 |
|
| canonicalmvs | | | 65.62 54 | 72.06 40 | 58.11 70 | 63.94 72 | 71.05 54 | 64.49 100 | 43.18 126 | 74.08 33 | 47.35 75 | 64.17 46 | 71.97 47 | 51.17 98 | 71.87 58 | 70.74 56 | 78.51 65 | 80.56 54 |
|
| DI_MVS_pp | | | 61.88 73 | 65.17 79 | 58.06 72 | 60.05 96 | 65.26 104 | 66.03 82 | 44.22 97 | 55.75 77 | 46.73 78 | 54.64 93 | 68.12 65 | 54.13 70 | 69.13 88 | 66.66 108 | 77.18 79 | 76.61 86 |
|
| ACMH+ | | 53.71 12 | 59.26 89 | 60.28 108 | 58.06 72 | 64.17 69 | 68.46 66 | 67.51 67 | 50.93 50 | 52.46 98 | 35.83 138 | 40.83 183 | 45.12 176 | 52.32 89 | 69.88 82 | 69.00 75 | 77.59 74 | 76.21 94 |
|
| Effi-MVS+-dtu | | | 60.34 83 | 62.32 94 | 58.03 74 | 64.31 65 | 67.44 82 | 65.99 83 | 42.26 135 | 49.55 111 | 42.00 108 | 48.92 121 | 59.79 97 | 56.27 57 | 68.07 108 | 67.03 99 | 77.35 77 | 75.45 100 |
|
| MVS_Test | | | 62.40 72 | 66.23 72 | 57.94 75 | 59.77 101 | 64.77 110 | 66.50 78 | 41.76 139 | 57.26 75 | 49.33 69 | 62.68 56 | 67.47 68 | 53.50 78 | 68.57 96 | 66.25 116 | 76.77 86 | 76.58 87 |
|
| OMC-MVS | | | 65.16 59 | 71.35 45 | 57.94 75 | 52.95 157 | 68.82 64 | 69.00 59 | 38.28 175 | 79.89 15 | 55.20 43 | 62.76 55 | 68.31 61 | 56.14 59 | 71.30 64 | 68.70 78 | 76.06 102 | 79.67 58 |
|
| PVSNet_BlendedMVS | | | 61.63 76 | 64.82 80 | 57.91 77 | 57.21 127 | 67.55 79 | 63.47 107 | 46.08 75 | 54.72 81 | 52.46 59 | 58.59 74 | 60.73 91 | 51.82 95 | 70.46 74 | 65.20 134 | 76.44 91 | 76.50 91 |
|
| PVSNet_Blended | | | 61.63 76 | 64.82 80 | 57.91 77 | 57.21 127 | 67.55 79 | 63.47 107 | 46.08 75 | 54.72 81 | 52.46 59 | 58.59 74 | 60.73 91 | 51.82 95 | 70.46 74 | 65.20 134 | 76.44 91 | 76.50 91 |
|
| MSDG | | | 58.46 99 | 58.97 130 | 57.85 79 | 66.27 59 | 66.23 96 | 67.72 63 | 42.33 134 | 53.43 87 | 43.68 97 | 43.39 169 | 45.35 172 | 49.75 105 | 68.66 94 | 67.77 89 | 77.38 76 | 67.96 145 |
|
| v10 | | | 59.17 91 | 60.60 104 | 57.50 80 | 57.95 110 | 66.73 90 | 67.09 73 | 44.11 98 | 46.85 139 | 45.42 89 | 48.18 127 | 51.07 132 | 53.63 73 | 67.84 112 | 66.59 112 | 76.79 85 | 76.92 82 |
|
| v1144 | | | 58.88 92 | 60.16 112 | 57.39 81 | 58.03 109 | 67.26 84 | 67.14 71 | 44.46 94 | 45.17 151 | 44.33 95 | 47.81 128 | 49.92 141 | 53.20 84 | 67.77 114 | 66.62 111 | 77.15 80 | 76.58 87 |
|
| v1192 | | | 58.51 96 | 59.66 119 | 57.17 82 | 57.82 111 | 67.72 75 | 66.21 81 | 44.83 89 | 44.15 159 | 43.49 98 | 46.68 133 | 47.94 145 | 53.55 75 | 67.39 121 | 66.51 113 | 77.13 81 | 77.20 80 |
|
| v2v482 | | | 58.69 95 | 60.12 115 | 57.03 83 | 57.16 130 | 66.05 98 | 67.17 70 | 43.52 117 | 46.33 143 | 45.19 91 | 49.46 117 | 51.02 133 | 52.51 87 | 67.30 123 | 66.03 121 | 76.61 88 | 74.62 105 |
|
| v8 | | | 58.88 92 | 60.57 106 | 56.92 84 | 57.35 121 | 65.69 101 | 66.69 77 | 42.64 132 | 47.89 134 | 45.77 86 | 49.04 118 | 52.98 125 | 52.77 85 | 67.51 119 | 65.57 127 | 76.26 95 | 75.30 102 |
|
| Fast-Effi-MVS+ | | | 60.36 82 | 63.35 90 | 56.87 85 | 58.70 104 | 65.86 99 | 65.08 95 | 37.11 181 | 53.00 93 | 45.36 90 | 52.12 104 | 56.07 115 | 56.27 57 | 71.28 65 | 69.42 69 | 78.71 61 | 75.69 98 |
|
| v144192 | | | 58.23 105 | 59.40 126 | 56.87 85 | 57.56 113 | 66.89 88 | 65.70 87 | 45.01 87 | 44.06 160 | 42.88 100 | 46.61 135 | 48.09 144 | 53.49 79 | 66.94 131 | 65.90 124 | 76.61 88 | 77.29 78 |
|
| ACMH | | 52.42 13 | 58.24 104 | 59.56 124 | 56.70 87 | 66.34 58 | 69.59 60 | 66.71 76 | 49.12 62 | 46.08 146 | 28.90 167 | 42.67 178 | 41.20 195 | 52.60 86 | 71.39 63 | 70.28 61 | 76.51 90 | 75.72 97 |
| Qingshan Xu and Wenbing Tao: Multi-Scale Geometric Consistency Guided Multi-View Stereo. CVPR 2019 |
| v1921920 | | | 57.89 108 | 59.02 129 | 56.58 88 | 57.55 114 | 66.66 94 | 64.72 98 | 44.70 91 | 43.55 164 | 42.73 101 | 46.17 143 | 46.93 158 | 53.51 76 | 66.78 132 | 65.75 126 | 76.29 93 | 77.28 79 |
|
| FA-MVS(training) | | | 60.00 85 | 63.14 92 | 56.33 89 | 59.50 102 | 64.30 115 | 65.15 94 | 38.75 172 | 56.20 76 | 45.77 86 | 53.08 97 | 56.45 110 | 52.10 92 | 69.04 90 | 67.67 92 | 76.69 87 | 75.27 103 |
|
| v1240 | | | 57.55 110 | 58.63 133 | 56.29 90 | 57.30 124 | 66.48 95 | 63.77 105 | 44.56 93 | 42.77 174 | 42.48 103 | 45.64 149 | 46.28 165 | 53.46 80 | 66.32 139 | 65.80 125 | 76.16 97 | 77.13 81 |
|
| viewmambaseed2359dif | | | 60.40 81 | 64.15 86 | 56.03 91 | 57.79 112 | 63.53 122 | 65.91 85 | 41.64 140 | 54.98 80 | 46.47 81 | 60.16 67 | 64.71 74 | 50.76 100 | 66.25 141 | 62.83 159 | 73.61 131 | 76.57 89 |
|
| diffmvs_AUTHOR | | | 61.79 74 | 66.80 67 | 55.95 92 | 56.69 132 | 63.92 118 | 67.27 68 | 41.28 145 | 59.32 69 | 46.43 82 | 63.31 51 | 68.30 62 | 50.56 101 | 68.30 99 | 66.06 119 | 73.48 132 | 78.36 69 |
|
| diffmvs |  | | 61.64 75 | 66.55 69 | 55.90 93 | 56.63 133 | 63.71 121 | 67.13 72 | 41.27 146 | 59.49 68 | 46.70 79 | 63.93 50 | 68.01 66 | 50.46 102 | 67.30 123 | 65.51 128 | 73.24 139 | 77.87 75 |
| Fangjinhua Wang, Qingshan Xu, Yew-Soon Ong, Marc Pollefeys: Lightweight and Accurate Multi-View Stereo With Confidence-Aware Diffusion Model. IEEE T-PAMI 2025 |
| MS-PatchMatch | | | 58.19 106 | 60.20 111 | 55.85 94 | 65.17 62 | 64.16 116 | 64.82 96 | 41.48 143 | 50.95 103 | 42.17 106 | 45.38 152 | 56.42 111 | 48.08 115 | 68.30 99 | 66.70 107 | 73.39 133 | 69.46 138 |
|
| IB-MVS | | 54.11 11 | 58.36 102 | 60.70 103 | 55.62 95 | 58.67 105 | 68.02 73 | 61.56 110 | 43.15 128 | 46.09 145 | 44.06 96 | 44.24 161 | 50.99 135 | 48.71 110 | 66.70 133 | 70.33 60 | 77.60 73 | 78.50 67 |
| 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 |
| EG-PatchMatch MVS | | | 56.98 113 | 58.24 137 | 55.50 96 | 64.66 64 | 68.62 65 | 61.48 112 | 43.63 114 | 38.44 199 | 41.44 109 | 38.05 190 | 46.18 167 | 43.95 134 | 71.71 61 | 70.61 58 | 77.87 69 | 74.08 110 |
|
| PLC |  | 52.09 14 | 59.21 90 | 62.47 93 | 55.41 97 | 53.24 155 | 64.84 109 | 64.47 102 | 40.41 159 | 65.92 54 | 44.53 94 | 46.19 142 | 55.69 116 | 55.33 63 | 68.24 103 | 65.30 131 | 74.50 117 | 71.09 121 |
| Jie Liao, Yanping Fu, Qingan Yan, Chunxia xiao: Pyramid Multi-View Stereo with Local Consistency. Pacific Graphics 2019 |
| HyFIR lowres test | | | 56.87 116 | 58.60 134 | 54.84 98 | 56.62 134 | 69.27 63 | 64.77 97 | 42.21 136 | 45.66 149 | 37.50 133 | 33.08 202 | 57.47 107 | 53.33 81 | 65.46 152 | 67.94 85 | 74.60 116 | 71.35 120 |
|
| IterMVS-LS | | | 58.30 103 | 61.39 97 | 54.71 99 | 59.92 99 | 58.40 162 | 59.42 123 | 43.64 113 | 48.71 125 | 40.25 119 | 57.53 79 | 58.55 101 | 52.15 91 | 65.42 153 | 65.34 130 | 72.85 140 | 75.77 96 |
| Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo. |
| ET-MVSNet_ETH3D | | | 58.38 101 | 61.57 96 | 54.67 100 | 42.15 207 | 65.26 104 | 65.70 87 | 43.82 107 | 48.84 121 | 42.34 104 | 59.76 69 | 47.76 148 | 56.68 54 | 67.02 130 | 68.60 81 | 77.33 78 | 73.73 113 |
|
| viewmsd2359difaftdt | | | 59.45 87 | 63.57 89 | 54.65 101 | 57.17 129 | 62.71 128 | 64.67 99 | 38.99 166 | 52.96 94 | 42.12 107 | 58.97 72 | 62.22 84 | 51.18 97 | 67.35 122 | 63.98 147 | 73.75 125 | 76.80 84 |
|
| DCV-MVSNet | | | 59.49 86 | 64.00 87 | 54.23 102 | 61.81 80 | 64.33 114 | 61.42 113 | 43.77 108 | 52.85 95 | 38.94 126 | 55.62 87 | 62.15 86 | 43.24 141 | 69.39 85 | 67.66 93 | 76.22 96 | 75.97 95 |
|
| TSAR-MVS + COLMAP | | | 62.65 70 | 69.90 54 | 54.19 103 | 46.31 194 | 66.73 90 | 65.49 91 | 41.36 144 | 76.57 24 | 46.31 83 | 76.80 17 | 56.68 108 | 53.27 83 | 69.50 84 | 66.65 109 | 72.40 151 | 76.36 93 |
|
| Anonymous20231211 | | | 57.71 109 | 60.79 101 | 54.13 104 | 61.68 83 | 65.81 100 | 60.81 118 | 43.70 112 | 51.97 101 | 39.67 121 | 34.82 198 | 63.59 77 | 43.31 139 | 68.55 97 | 66.63 110 | 75.59 105 | 74.13 109 |
|
| TAPA-MVS | | 54.74 10 | 60.85 80 | 66.61 68 | 54.12 105 | 47.38 190 | 65.33 102 | 65.35 92 | 36.51 184 | 75.16 30 | 48.82 73 | 54.70 92 | 63.51 78 | 53.31 82 | 68.36 98 | 64.97 138 | 73.37 134 | 74.27 107 |
| Andrea Romanoni, Matteo Matteucci: TAPA-MVS: Textureless-Aware PAtchMatch Multi-View Stereo. ICCV 2019 |
| baseline2 | | | 55.89 122 | 57.82 140 | 53.64 106 | 57.36 120 | 61.09 139 | 59.75 122 | 40.45 157 | 47.38 137 | 41.26 113 | 51.23 109 | 46.90 159 | 48.11 114 | 65.63 150 | 64.38 143 | 74.90 115 | 68.16 144 |
|
| CostFormer | | | 56.57 118 | 59.13 128 | 53.60 107 | 57.52 116 | 61.12 138 | 66.94 75 | 35.95 186 | 53.44 86 | 44.68 93 | 55.87 86 | 54.44 119 | 48.21 113 | 60.37 174 | 58.33 181 | 68.27 173 | 70.33 128 |
|
| v7n | | | 55.67 126 | 57.46 145 | 53.59 108 | 56.06 135 | 65.29 103 | 61.06 116 | 43.26 125 | 40.17 190 | 37.99 130 | 40.79 184 | 45.27 175 | 47.09 120 | 67.67 116 | 66.21 117 | 76.08 99 | 76.82 83 |
|
| CHOSEN 1792x2688 | | | 55.85 124 | 58.01 138 | 53.33 109 | 57.26 126 | 62.82 126 | 63.29 109 | 41.55 142 | 46.65 141 | 38.34 127 | 34.55 199 | 53.50 121 | 52.43 88 | 67.10 128 | 67.56 95 | 67.13 177 | 73.92 112 |
|
| V42 | | | 56.97 114 | 60.14 113 | 53.28 110 | 48.16 186 | 62.78 127 | 66.30 80 | 37.93 177 | 47.44 136 | 42.68 102 | 48.19 126 | 52.59 127 | 51.90 93 | 67.46 120 | 65.94 123 | 72.72 144 | 76.55 90 |
|
| v148 | | | 55.58 128 | 57.61 144 | 53.20 111 | 54.59 147 | 61.86 130 | 61.18 114 | 38.70 173 | 44.30 158 | 42.25 105 | 47.53 129 | 50.24 139 | 48.73 109 | 65.15 154 | 62.61 163 | 73.79 124 | 71.61 119 |
|
| thisisatest0530 | | | 56.68 117 | 59.68 118 | 53.19 112 | 52.97 156 | 60.96 141 | 59.41 124 | 40.51 154 | 48.26 131 | 41.06 114 | 52.67 100 | 46.30 164 | 49.78 103 | 67.66 117 | 67.83 87 | 75.39 108 | 74.07 111 |
|
| tpm cat1 | | | 53.30 144 | 53.41 167 | 53.17 113 | 58.16 108 | 59.15 156 | 63.73 106 | 38.27 176 | 50.73 105 | 46.98 77 | 45.57 150 | 44.00 188 | 49.20 107 | 55.90 201 | 54.02 200 | 62.65 192 | 64.50 174 |
|
| pmmvs4 | | | 54.66 138 | 56.07 149 | 53.00 114 | 54.63 144 | 57.08 173 | 60.43 120 | 44.10 99 | 51.69 102 | 40.55 116 | 46.55 138 | 44.79 181 | 45.95 126 | 62.54 163 | 63.66 150 | 72.36 152 | 66.20 160 |
|
| tttt0517 | | | 56.53 119 | 59.59 120 | 52.95 115 | 52.66 159 | 60.99 140 | 59.21 126 | 40.51 154 | 47.89 134 | 40.40 117 | 52.50 103 | 46.04 168 | 49.78 103 | 67.75 115 | 67.83 87 | 75.15 111 | 74.17 108 |
|
| FC-MVSNet-train | | | 58.40 100 | 63.15 91 | 52.85 116 | 64.29 66 | 61.84 131 | 55.98 152 | 46.47 73 | 53.06 91 | 34.96 142 | 61.95 62 | 56.37 113 | 39.49 155 | 68.67 93 | 68.36 82 | 75.92 104 | 71.81 118 |
|
| Fast-Effi-MVS+-dtu | | | 56.30 121 | 59.29 127 | 52.82 117 | 58.64 106 | 64.89 108 | 65.56 90 | 32.89 204 | 45.80 148 | 35.04 141 | 45.89 146 | 54.14 120 | 49.41 106 | 67.16 126 | 66.45 115 | 75.37 109 | 70.69 125 |
|
| MVSTER | | | 57.19 111 | 61.11 99 | 52.62 118 | 50.82 177 | 58.79 158 | 61.55 111 | 37.86 178 | 48.81 123 | 41.31 111 | 57.43 81 | 52.10 128 | 48.60 111 | 68.19 105 | 66.75 106 | 75.56 106 | 75.68 99 |
|
| GA-MVS | | | 55.67 126 | 58.33 135 | 52.58 119 | 55.23 142 | 63.09 123 | 61.08 115 | 40.15 162 | 42.95 169 | 37.02 136 | 52.61 101 | 47.68 149 | 47.51 118 | 65.92 146 | 65.35 129 | 74.49 118 | 70.68 126 |
|
| EPP-MVSNet | | | 59.39 88 | 65.45 77 | 52.32 120 | 60.96 90 | 67.70 76 | 58.42 131 | 44.75 90 | 49.71 110 | 27.23 175 | 59.03 71 | 62.20 85 | 43.34 138 | 70.71 71 | 69.13 72 | 79.25 59 | 79.63 59 |
|
| CANet_DTU | | | 58.88 92 | 64.68 83 | 52.12 121 | 55.77 137 | 66.75 89 | 63.92 104 | 37.04 182 | 53.32 89 | 37.45 134 | 59.81 68 | 61.81 87 | 44.43 133 | 68.25 101 | 67.47 96 | 74.12 121 | 75.33 101 |
|
| UniMVSNet_NR-MVSNet | | | 56.94 115 | 61.14 98 | 52.05 122 | 60.02 98 | 65.21 107 | 57.44 136 | 52.93 40 | 49.37 114 | 24.31 188 | 54.62 94 | 50.54 136 | 39.04 157 | 68.69 92 | 68.84 77 | 78.53 64 | 70.72 123 |
|
| MGCFI-Net | | | 61.46 79 | 69.72 55 | 51.83 123 | 61.00 89 | 66.16 97 | 56.50 145 | 40.73 151 | 73.98 35 | 35.18 139 | 64.23 45 | 71.42 49 | 42.45 144 | 69.22 86 | 64.01 146 | 75.09 113 | 79.03 63 |
|
| test2506 | | | 55.82 125 | 59.57 123 | 51.46 124 | 60.39 94 | 64.55 112 | 58.69 129 | 48.87 64 | 53.91 84 | 26.99 176 | 48.97 119 | 41.72 194 | 37.71 165 | 70.96 68 | 69.49 67 | 76.08 99 | 67.37 150 |
|
| ECVR-MVS |  | | 56.44 120 | 60.74 102 | 51.42 125 | 60.39 94 | 64.55 112 | 58.69 129 | 48.87 64 | 53.91 84 | 26.76 178 | 45.55 151 | 53.43 123 | 37.71 165 | 70.96 68 | 69.49 67 | 76.08 99 | 67.32 152 |
|
| UA-Net | | | 58.50 97 | 64.68 83 | 51.30 126 | 66.97 53 | 67.13 87 | 53.68 168 | 45.65 80 | 49.51 113 | 31.58 154 | 62.91 54 | 68.47 60 | 35.85 178 | 68.20 104 | 67.28 98 | 74.03 122 | 69.24 140 |
|
| TranMVSNet+NR-MVSNet | | | 55.87 123 | 60.14 113 | 50.88 127 | 59.46 103 | 63.82 119 | 57.93 133 | 52.98 39 | 48.94 120 | 20.52 196 | 52.87 99 | 47.33 154 | 36.81 173 | 69.12 89 | 69.03 74 | 77.56 75 | 69.89 129 |
|
| IS_MVSNet | | | 57.95 107 | 64.26 85 | 50.60 128 | 61.62 84 | 65.25 106 | 57.18 138 | 45.42 82 | 50.79 104 | 26.49 181 | 57.81 78 | 60.05 96 | 34.51 182 | 71.24 66 | 70.20 63 | 78.36 67 | 74.44 106 |
|
| NR-MVSNet | | | 55.35 130 | 59.46 125 | 50.56 129 | 61.33 86 | 62.97 124 | 57.91 134 | 51.80 45 | 48.62 128 | 20.59 195 | 51.99 105 | 44.73 182 | 34.10 185 | 68.58 95 | 68.64 79 | 77.66 71 | 70.67 127 |
|
| DU-MVS | | | 55.41 129 | 59.59 120 | 50.54 130 | 54.60 145 | 62.97 124 | 57.44 136 | 51.80 45 | 48.62 128 | 24.31 188 | 51.99 105 | 47.00 157 | 39.04 157 | 68.11 106 | 67.75 90 | 76.03 103 | 70.72 123 |
|
| thisisatest0515 | | | 53.85 141 | 56.84 148 | 50.37 131 | 50.25 180 | 58.17 166 | 55.99 151 | 39.90 163 | 41.88 179 | 38.16 129 | 45.91 145 | 45.30 173 | 44.58 132 | 66.15 144 | 66.89 104 | 73.36 135 | 73.57 114 |
|
| pmmvs-eth3d | | | 51.33 158 | 52.25 177 | 50.26 132 | 50.82 177 | 54.65 178 | 56.03 150 | 43.45 122 | 43.51 165 | 37.20 135 | 39.20 187 | 39.04 205 | 42.28 145 | 61.85 168 | 62.78 160 | 71.78 157 | 64.72 172 |
|
| Vis-MVSNet |  | | 58.48 98 | 65.70 76 | 50.06 133 | 53.40 154 | 67.20 85 | 60.24 121 | 43.32 123 | 48.83 122 | 30.23 160 | 62.38 59 | 61.61 89 | 40.35 153 | 71.03 67 | 69.77 66 | 72.82 142 | 79.11 62 |
| Jingyang Zhang, Yao Yao, Shiwei Li, Zixin Luo, Tian Fang: Visibility-aware Multiview Stereo Network. BMVC 2020 |
| test1111 | | | 55.24 131 | 59.98 116 | 49.71 134 | 59.80 100 | 64.10 117 | 56.48 146 | 49.34 59 | 52.27 99 | 21.56 193 | 44.49 159 | 51.96 129 | 35.93 177 | 70.59 73 | 69.07 73 | 75.13 112 | 67.40 148 |
|
| baseline1 | | | 54.48 139 | 58.69 131 | 49.57 135 | 60.63 93 | 58.29 165 | 55.70 154 | 44.95 88 | 49.20 116 | 29.62 163 | 54.77 91 | 54.75 118 | 35.29 179 | 67.15 127 | 64.08 144 | 71.21 161 | 62.58 183 |
|
| dps | | | 50.42 163 | 51.20 184 | 49.51 136 | 55.88 136 | 56.07 175 | 53.73 166 | 38.89 168 | 43.66 161 | 40.36 118 | 45.66 148 | 37.63 210 | 45.23 129 | 59.05 177 | 56.18 185 | 62.94 191 | 60.16 191 |
|
| GBi-Net | | | 55.20 132 | 60.25 109 | 49.31 137 | 52.42 160 | 61.44 133 | 57.03 139 | 44.04 101 | 49.18 117 | 30.47 156 | 48.28 123 | 58.19 102 | 38.22 160 | 68.05 109 | 66.96 100 | 73.69 127 | 69.65 131 |
|
| test1 | | | 55.20 132 | 60.25 109 | 49.31 137 | 52.42 160 | 61.44 133 | 57.03 139 | 44.04 101 | 49.18 117 | 30.47 156 | 48.28 123 | 58.19 102 | 38.22 160 | 68.05 109 | 66.96 100 | 73.69 127 | 69.65 131 |
|
| FMVSNet2 | | | 55.04 136 | 59.95 117 | 49.31 137 | 52.42 160 | 61.44 133 | 57.03 139 | 44.08 100 | 49.55 111 | 30.40 159 | 46.89 132 | 58.84 100 | 38.22 160 | 67.07 129 | 66.21 117 | 73.69 127 | 69.65 131 |
|
| FMVSNet3 | | | 54.78 137 | 59.58 122 | 49.17 140 | 52.37 163 | 61.31 137 | 56.72 144 | 44.04 101 | 49.18 117 | 30.47 156 | 48.28 123 | 58.19 102 | 38.09 163 | 65.48 151 | 65.20 134 | 73.31 136 | 69.45 139 |
|
| IterMVS | | | 53.45 143 | 57.12 146 | 49.17 140 | 49.23 183 | 60.93 142 | 59.05 127 | 34.63 192 | 44.53 154 | 33.22 144 | 51.09 112 | 51.01 134 | 48.38 112 | 62.43 165 | 60.79 172 | 70.54 165 | 69.05 141 |
| Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Marc Pollefeys: IterMVS: Iterative Probability Estimation for Efficient Multi-View Stereo. |
| tfpn200view9 | | | 52.53 147 | 55.51 152 | 49.06 142 | 57.31 122 | 60.24 145 | 55.42 158 | 43.77 108 | 42.85 172 | 27.81 171 | 43.00 175 | 45.06 178 | 37.32 169 | 66.38 136 | 64.54 140 | 72.71 145 | 66.54 155 |
|
| UniMVSNet (Re) | | | 55.15 135 | 60.39 107 | 49.03 143 | 55.31 139 | 64.59 111 | 55.77 153 | 50.63 52 | 48.66 127 | 20.95 194 | 51.47 108 | 50.40 137 | 34.41 184 | 67.81 113 | 67.89 86 | 77.11 82 | 71.88 117 |
|
| thres200 | | | 52.39 149 | 55.37 155 | 48.90 144 | 57.39 119 | 60.18 146 | 55.60 155 | 43.73 110 | 42.93 170 | 27.41 173 | 43.35 170 | 45.09 177 | 36.61 174 | 66.36 137 | 63.92 149 | 72.66 147 | 65.78 165 |
|
| thres100view900 | | | 52.04 154 | 54.81 160 | 48.80 145 | 57.31 122 | 59.33 153 | 55.30 159 | 42.92 131 | 42.85 172 | 27.81 171 | 43.00 175 | 45.06 178 | 36.99 171 | 64.74 156 | 63.51 151 | 72.47 150 | 65.21 169 |
|
| thres400 | | | 52.38 150 | 55.51 152 | 48.74 146 | 57.49 117 | 60.10 148 | 55.45 157 | 43.54 116 | 42.90 171 | 26.72 179 | 43.34 171 | 45.03 180 | 36.61 174 | 66.20 143 | 64.53 141 | 72.66 147 | 66.43 156 |
|
| FMVSNet1 | | | 54.08 140 | 58.68 132 | 48.71 147 | 50.90 176 | 61.35 136 | 56.73 143 | 43.94 106 | 45.91 147 | 29.32 166 | 42.72 177 | 56.26 114 | 37.70 167 | 68.05 109 | 66.96 100 | 73.69 127 | 69.50 135 |
|
| UniMVSNet_ETH3D | | | 52.62 146 | 55.98 150 | 48.70 148 | 51.04 174 | 60.71 143 | 56.87 142 | 46.74 72 | 42.52 176 | 26.96 177 | 42.50 179 | 45.95 169 | 37.87 164 | 66.22 142 | 65.15 137 | 72.74 143 | 68.78 143 |
|
| COLMAP_ROB |  | 46.52 15 | 51.99 155 | 54.86 159 | 48.63 149 | 49.13 184 | 61.73 132 | 60.53 119 | 36.57 183 | 53.14 90 | 32.95 147 | 37.10 191 | 38.68 206 | 40.49 152 | 65.72 148 | 63.08 155 | 72.11 155 | 64.60 173 |
| Johannes L. Schönberger, Enliang Zheng, Marc Pollefeys, Jan-Michael Frahm: Pixelwise View Selection for Unstructured Multi-View Stereo. ECCV 2016 |
| baseline | | | 55.19 134 | 60.88 100 | 48.55 150 | 49.87 181 | 58.10 167 | 58.70 128 | 34.75 190 | 52.82 96 | 39.48 125 | 60.18 66 | 60.86 90 | 45.41 128 | 61.05 170 | 60.74 173 | 63.10 190 | 72.41 116 |
|
| dmvs_re | | | 52.07 152 | 55.11 157 | 48.54 151 | 57.27 125 | 51.93 188 | 57.73 135 | 43.13 129 | 43.65 162 | 26.57 180 | 44.52 158 | 50.00 140 | 36.53 176 | 66.58 135 | 62.15 165 | 69.97 167 | 66.91 153 |
|
| PatchMatch-RL | | | 50.11 167 | 51.56 181 | 48.43 152 | 46.23 195 | 51.94 187 | 50.21 178 | 38.62 174 | 46.62 142 | 37.51 132 | 42.43 180 | 39.38 203 | 52.24 90 | 60.98 171 | 59.56 177 | 65.76 181 | 60.01 193 |
|
| SCA | | | 50.99 161 | 53.22 171 | 48.40 153 | 51.07 173 | 56.78 174 | 50.25 177 | 39.05 165 | 48.31 130 | 41.38 110 | 49.54 115 | 46.70 162 | 46.00 125 | 58.31 184 | 56.28 184 | 62.65 192 | 56.60 200 |
|
| Baseline_NR-MVSNet | | | 53.50 142 | 57.89 139 | 48.37 154 | 54.60 145 | 59.25 155 | 56.10 148 | 51.84 44 | 49.32 115 | 17.92 203 | 45.38 152 | 47.68 149 | 36.93 172 | 68.11 106 | 65.95 122 | 72.84 141 | 69.57 134 |
|
| PatchmatchNet |  | | 49.92 168 | 51.29 182 | 48.32 155 | 51.83 167 | 51.86 189 | 53.38 171 | 37.63 180 | 47.90 133 | 40.83 115 | 48.54 122 | 45.30 173 | 45.19 130 | 56.86 191 | 53.99 202 | 61.08 197 | 54.57 203 |
| Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys: PatchmatchNet: Learned Multi-View Patchmatch Stereo. |
| thres600view7 | | | 51.91 157 | 55.14 156 | 48.14 156 | 57.43 118 | 60.18 146 | 54.60 163 | 43.73 110 | 42.61 175 | 25.20 184 | 43.10 174 | 44.47 185 | 35.19 180 | 66.36 137 | 63.28 154 | 72.66 147 | 66.01 163 |
|
| test-LLR | | | 49.28 170 | 50.29 188 | 48.10 157 | 55.26 140 | 47.16 203 | 49.52 179 | 43.48 120 | 39.22 194 | 31.98 150 | 43.65 167 | 47.93 146 | 41.29 150 | 56.80 192 | 55.36 191 | 67.08 178 | 61.94 184 |
|
| USDC | | | 51.11 159 | 53.71 164 | 48.08 158 | 44.76 199 | 55.99 176 | 53.01 172 | 40.90 148 | 52.49 97 | 36.14 137 | 44.67 157 | 33.66 216 | 43.27 140 | 63.23 159 | 61.10 170 | 70.39 166 | 64.82 171 |
|
| CR-MVSNet | | | 50.47 162 | 52.61 173 | 47.98 159 | 49.03 185 | 52.94 183 | 48.27 184 | 38.86 169 | 44.41 155 | 39.59 122 | 44.34 160 | 44.65 184 | 46.63 122 | 58.97 179 | 60.31 174 | 65.48 182 | 62.66 180 |
|
| TransMVSNet (Re) | | | 51.92 156 | 55.38 154 | 47.88 160 | 60.95 91 | 59.90 149 | 53.95 165 | 45.14 86 | 39.47 193 | 24.85 185 | 43.87 164 | 46.51 163 | 29.15 194 | 67.55 118 | 65.23 133 | 73.26 138 | 65.16 170 |
|
| MDTV_nov1_ep13 | | | 50.32 165 | 52.43 176 | 47.86 161 | 49.87 181 | 54.70 177 | 58.10 132 | 34.29 194 | 45.59 150 | 37.71 131 | 47.44 130 | 47.42 153 | 41.86 147 | 58.07 187 | 55.21 193 | 65.34 184 | 58.56 196 |
|
| tfpnnormal | | | 50.16 166 | 52.19 178 | 47.78 162 | 56.86 131 | 58.37 163 | 54.15 164 | 44.01 104 | 38.35 201 | 25.94 182 | 36.10 194 | 37.89 208 | 34.50 183 | 65.93 145 | 63.42 152 | 71.26 160 | 65.28 168 |
|
| UGNet | | | 57.03 112 | 65.25 78 | 47.44 163 | 46.54 193 | 66.73 90 | 56.30 147 | 43.28 124 | 50.06 107 | 32.99 146 | 62.57 57 | 63.26 79 | 33.31 187 | 68.25 101 | 67.58 94 | 72.20 154 | 78.29 70 |
| 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 |
| anonymousdsp | | | 52.84 145 | 57.78 141 | 47.06 164 | 40.24 211 | 58.95 157 | 53.70 167 | 33.54 200 | 36.51 206 | 32.69 149 | 43.88 163 | 45.40 171 | 47.97 117 | 67.17 125 | 70.28 61 | 74.22 120 | 82.29 47 |
|
| CDS-MVSNet | | | 52.42 148 | 57.06 147 | 47.02 165 | 53.92 152 | 58.30 164 | 55.50 156 | 46.47 73 | 42.52 176 | 29.38 165 | 49.50 116 | 52.85 126 | 28.49 197 | 66.70 133 | 66.89 104 | 68.34 172 | 62.63 182 |
| Khang Truong Giang, Soohwan Song, Sungho Jo: Curvature-guided dynamic scale networks for Multi-view Stereo. ICLR 2022 |
| TinyColmap | | | 47.08 186 | 47.56 200 | 46.52 166 | 42.35 206 | 53.44 182 | 51.77 174 | 40.70 152 | 43.44 166 | 31.92 152 | 29.78 210 | 23.72 226 | 45.04 131 | 61.99 167 | 59.54 178 | 67.35 176 | 61.03 187 |
|
| tpmrst | | | 48.08 180 | 49.88 192 | 45.98 167 | 52.71 158 | 48.11 200 | 53.62 169 | 33.70 199 | 48.70 126 | 39.74 120 | 48.96 120 | 46.23 166 | 40.29 154 | 50.14 215 | 49.28 211 | 55.80 206 | 57.71 198 |
|
| tpm | | | 48.82 175 | 51.27 183 | 45.96 168 | 54.10 150 | 47.35 202 | 56.05 149 | 30.23 208 | 46.70 140 | 43.21 99 | 52.54 102 | 47.55 152 | 37.28 170 | 54.11 206 | 50.50 209 | 54.90 209 | 60.12 192 |
|
| pm-mvs1 | | | 51.02 160 | 55.55 151 | 45.73 169 | 54.16 149 | 58.52 160 | 50.92 175 | 42.56 133 | 40.32 188 | 25.67 183 | 43.66 166 | 50.34 138 | 30.06 192 | 65.85 147 | 63.97 148 | 70.99 163 | 66.21 159 |
|
| IterMVS-SCA-FT | | | 52.18 151 | 57.75 142 | 45.68 170 | 51.01 175 | 62.06 129 | 55.10 161 | 34.75 190 | 44.85 152 | 32.86 148 | 51.13 111 | 51.22 131 | 48.74 108 | 62.47 164 | 61.51 168 | 51.61 216 | 71.02 122 |
|
| TDRefinement | | | 49.31 169 | 52.44 175 | 45.67 171 | 30.44 221 | 59.42 152 | 59.24 125 | 39.78 164 | 48.76 124 | 31.20 155 | 35.73 195 | 29.90 220 | 42.81 143 | 64.24 158 | 62.59 164 | 70.55 164 | 66.43 156 |
|
| CMPMVS |  | 37.70 17 | 49.24 171 | 52.71 172 | 45.19 172 | 45.97 196 | 51.23 191 | 47.44 190 | 29.31 209 | 43.04 168 | 44.69 92 | 34.45 200 | 48.35 143 | 43.64 135 | 62.59 162 | 59.82 176 | 60.08 198 | 69.48 136 |
| M. Jancosek, T. Pajdla: Multi-View Reconstruction Preserving Weakly-Supported Surfaces. CVPR 2011 |
| MDTV_nov1_ep13_2view | | | 47.62 184 | 49.72 193 | 45.18 173 | 48.05 187 | 53.70 181 | 54.90 162 | 33.80 198 | 39.90 192 | 29.79 162 | 38.85 188 | 41.89 192 | 39.17 156 | 58.99 178 | 55.55 190 | 65.34 184 | 59.17 194 |
|
| gg-mvs-nofinetune | | | 49.07 174 | 52.56 174 | 45.00 174 | 61.99 78 | 59.78 150 | 53.55 170 | 41.63 141 | 31.62 215 | 12.08 211 | 29.56 211 | 53.28 124 | 29.57 193 | 66.27 140 | 64.49 142 | 71.19 162 | 62.92 179 |
|
| EPNet_dtu | | | 52.05 153 | 58.26 136 | 44.81 175 | 54.10 150 | 50.09 195 | 52.01 173 | 40.82 150 | 53.03 92 | 27.41 173 | 54.90 89 | 57.96 106 | 26.72 199 | 62.97 160 | 62.70 162 | 67.78 175 | 66.19 161 |
| Wanjuan Su, Wenbing Tao: Efficient Edge-Preserving Multi-View Stereo Network for Depth Estimation. AAAI 2023 |
| PatchT | | | 48.08 180 | 51.03 185 | 44.64 176 | 42.96 204 | 50.12 194 | 40.36 213 | 35.09 188 | 43.17 167 | 39.59 122 | 42.00 181 | 39.96 202 | 46.63 122 | 58.97 179 | 60.31 174 | 63.21 189 | 62.66 180 |
|
| pmmvs6 | | | 48.35 178 | 51.64 180 | 44.51 177 | 51.92 166 | 57.94 169 | 49.44 181 | 42.17 137 | 34.45 208 | 24.62 187 | 28.87 213 | 46.90 159 | 29.07 196 | 64.60 157 | 63.08 155 | 69.83 168 | 65.68 166 |
|
| SixPastTwentyTwo | | | 47.55 185 | 50.25 190 | 44.41 178 | 47.30 191 | 54.31 180 | 47.81 187 | 40.36 160 | 33.76 209 | 19.93 198 | 43.75 165 | 32.77 218 | 42.07 146 | 59.82 175 | 60.94 171 | 68.98 169 | 66.37 158 |
|
| RPMNet | | | 46.41 189 | 48.72 195 | 43.72 179 | 47.77 189 | 52.94 183 | 46.02 197 | 33.92 196 | 44.41 155 | 31.82 153 | 36.89 192 | 37.42 211 | 37.41 168 | 53.88 207 | 54.02 200 | 65.37 183 | 61.47 186 |
|
| MVS-HIRNet | | | 42.24 201 | 41.15 214 | 43.51 180 | 44.06 203 | 40.74 215 | 35.77 219 | 35.35 187 | 35.38 207 | 38.34 127 | 25.63 217 | 38.55 207 | 43.48 137 | 50.77 212 | 47.03 215 | 64.07 186 | 49.98 211 |
|
| LTVRE_ROB | | 44.17 16 | 47.06 188 | 50.15 191 | 43.44 181 | 51.39 169 | 58.42 161 | 42.90 208 | 43.51 118 | 22.27 224 | 14.85 207 | 41.94 182 | 34.57 214 | 45.43 127 | 62.28 166 | 62.77 161 | 62.56 194 | 68.83 142 |
| 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 |
| gm-plane-assit | | | 44.74 194 | 45.95 202 | 43.33 182 | 60.88 92 | 46.79 208 | 36.97 217 | 32.24 207 | 24.15 222 | 11.79 212 | 29.26 212 | 32.97 217 | 46.64 121 | 65.09 155 | 62.95 157 | 71.45 159 | 60.42 190 |
|
| PMMVS | | | 49.20 173 | 54.28 163 | 43.28 183 | 34.13 216 | 45.70 210 | 48.98 182 | 26.09 217 | 46.31 144 | 34.92 143 | 55.22 88 | 53.47 122 | 47.48 119 | 59.43 176 | 59.04 179 | 68.05 174 | 60.77 188 |
|
| PEN-MVS | | | 49.21 172 | 54.32 162 | 43.24 184 | 54.33 148 | 59.26 154 | 47.04 192 | 51.37 49 | 41.67 180 | 9.97 217 | 46.22 141 | 41.80 193 | 22.97 207 | 60.52 172 | 64.03 145 | 73.73 126 | 66.75 154 |
|
| pmmvs5 | | | 47.07 187 | 51.02 186 | 42.46 185 | 45.18 198 | 51.47 190 | 48.23 186 | 33.09 203 | 38.17 202 | 28.62 169 | 46.60 136 | 43.48 189 | 30.74 190 | 58.28 185 | 58.63 180 | 68.92 170 | 60.48 189 |
|
| CP-MVSNet | | | 48.37 177 | 53.53 166 | 42.34 186 | 51.35 170 | 58.01 168 | 46.56 193 | 50.54 53 | 41.62 181 | 10.61 213 | 46.53 139 | 40.68 199 | 23.18 205 | 58.71 182 | 61.83 166 | 71.81 156 | 67.36 151 |
|
| PS-CasMVS | | | 48.18 179 | 53.25 170 | 42.27 187 | 51.26 171 | 57.94 169 | 46.51 194 | 50.52 54 | 41.30 182 | 10.56 214 | 45.35 154 | 40.34 201 | 23.04 206 | 58.66 183 | 61.79 167 | 71.74 158 | 67.38 149 |
|
| DTE-MVSNet | | | 48.03 182 | 53.28 169 | 41.91 188 | 54.64 143 | 57.50 171 | 44.63 205 | 51.66 48 | 41.02 184 | 7.97 223 | 46.26 140 | 40.90 196 | 20.24 209 | 60.45 173 | 62.89 158 | 72.33 153 | 63.97 175 |
|
| Vis-MVSNet (Re-imp) | | | 50.37 164 | 57.73 143 | 41.80 189 | 57.53 115 | 54.35 179 | 45.70 198 | 45.24 84 | 49.80 109 | 13.43 209 | 58.23 77 | 56.42 111 | 20.11 210 | 62.96 161 | 63.36 153 | 68.76 171 | 58.96 195 |
|
| WR-MVS | | | 48.78 176 | 55.06 158 | 41.45 190 | 55.50 138 | 60.40 144 | 43.77 206 | 49.99 56 | 41.92 178 | 8.10 222 | 45.24 155 | 45.56 170 | 17.47 211 | 61.57 169 | 64.60 139 | 73.85 123 | 66.14 162 |
|
| TESTMET0.1,1 | | | 46.09 192 | 50.29 188 | 41.18 191 | 36.91 214 | 47.16 203 | 49.52 179 | 20.32 222 | 39.22 194 | 31.98 150 | 43.65 167 | 47.93 146 | 41.29 150 | 56.80 192 | 55.36 191 | 67.08 178 | 61.94 184 |
|
| EPMVS | | | 44.66 195 | 47.86 199 | 40.92 192 | 47.97 188 | 44.70 212 | 47.58 189 | 33.27 201 | 48.11 132 | 29.58 164 | 49.65 114 | 44.38 186 | 34.65 181 | 51.71 210 | 47.90 213 | 52.49 214 | 48.57 215 |
|
| WR-MVS_H | | | 47.65 183 | 53.67 165 | 40.63 193 | 51.45 168 | 59.74 151 | 44.71 204 | 49.37 58 | 40.69 186 | 7.61 224 | 46.04 144 | 44.34 187 | 17.32 212 | 57.79 188 | 61.18 169 | 73.30 137 | 65.86 164 |
|
| PM-MVS | | | 44.55 196 | 48.13 198 | 40.37 194 | 32.85 220 | 46.82 207 | 46.11 196 | 29.28 210 | 40.48 187 | 29.99 161 | 39.98 186 | 34.39 215 | 41.80 148 | 56.08 199 | 53.88 204 | 62.19 195 | 65.31 167 |
|
| CVMVSNet | | | 46.38 191 | 52.01 179 | 39.81 195 | 42.40 205 | 50.26 193 | 46.15 195 | 37.68 179 | 40.03 191 | 15.09 206 | 46.56 137 | 47.56 151 | 33.72 186 | 56.50 196 | 55.65 189 | 63.80 188 | 67.53 146 |
|
| test-mter | | | 45.30 193 | 50.37 187 | 39.38 196 | 33.65 218 | 46.99 205 | 47.59 188 | 18.59 223 | 38.75 197 | 28.00 170 | 43.28 172 | 46.82 161 | 41.50 149 | 57.28 190 | 55.78 188 | 66.93 180 | 63.70 177 |
|
| MDA-MVSNet-bldmvs | | | 41.36 202 | 43.15 212 | 39.27 197 | 28.74 223 | 52.68 185 | 44.95 203 | 40.84 149 | 32.89 211 | 18.13 202 | 31.61 205 | 22.09 227 | 38.97 159 | 50.45 214 | 56.11 186 | 64.01 187 | 56.23 201 |
|
| test0.0.03 1 | | | 43.15 199 | 46.95 201 | 38.72 198 | 55.26 140 | 50.56 192 | 42.48 209 | 43.48 120 | 38.16 203 | 15.11 205 | 35.07 197 | 44.69 183 | 16.47 213 | 55.95 200 | 54.34 199 | 59.54 199 | 49.87 213 |
|
| MIMVSNet | | | 43.79 198 | 48.53 196 | 38.27 199 | 41.46 208 | 48.97 198 | 50.81 176 | 32.88 205 | 44.55 153 | 22.07 191 | 32.05 203 | 47.15 155 | 24.76 202 | 58.73 181 | 56.09 187 | 57.63 205 | 52.14 204 |
|
| Anonymous20231206 | | | 42.28 200 | 45.89 203 | 38.07 200 | 51.96 165 | 48.98 197 | 43.66 207 | 38.81 171 | 38.74 198 | 14.32 208 | 26.74 215 | 40.90 196 | 20.94 208 | 56.64 195 | 54.67 197 | 58.71 200 | 54.59 202 |
|
| TAMVS | | | 44.02 197 | 49.18 194 | 37.99 201 | 47.03 192 | 45.97 209 | 45.04 201 | 28.47 212 | 39.11 196 | 20.23 197 | 43.22 173 | 48.52 142 | 28.49 197 | 58.15 186 | 57.95 183 | 58.71 200 | 51.36 206 |
|
| ADS-MVSNet | | | 40.67 205 | 43.38 211 | 37.50 202 | 44.36 201 | 39.79 219 | 42.09 211 | 32.67 206 | 44.34 157 | 28.87 168 | 40.76 185 | 40.37 200 | 30.22 191 | 48.34 220 | 45.87 218 | 46.81 220 | 44.21 219 |
|
| RPSCF | | | 46.41 189 | 54.42 161 | 37.06 203 | 25.70 228 | 45.14 211 | 45.39 200 | 20.81 221 | 62.79 60 | 35.10 140 | 44.92 156 | 55.60 117 | 43.56 136 | 56.12 198 | 52.45 206 | 51.80 215 | 63.91 176 |
|
| pmnet_mix02 | | | 40.48 207 | 43.80 209 | 36.61 204 | 45.79 197 | 40.45 217 | 42.12 210 | 33.18 202 | 40.30 189 | 24.11 190 | 38.76 189 | 37.11 212 | 24.30 203 | 52.97 208 | 46.66 217 | 50.17 217 | 50.33 210 |
|
| FPMVS | | | 38.36 211 | 40.41 215 | 35.97 205 | 38.92 213 | 39.85 218 | 45.50 199 | 25.79 218 | 41.13 183 | 18.70 200 | 30.10 208 | 24.56 224 | 31.86 189 | 49.42 217 | 46.80 216 | 55.04 207 | 51.03 207 |
|
| test20.03 | | | 40.38 208 | 44.20 208 | 35.92 206 | 53.73 153 | 49.05 196 | 38.54 215 | 43.49 119 | 32.55 212 | 9.54 218 | 27.88 214 | 39.12 204 | 12.24 218 | 56.28 197 | 54.69 196 | 57.96 204 | 49.83 214 |
|
| CHOSEN 280x420 | | | 40.80 204 | 45.05 207 | 35.84 207 | 32.95 219 | 29.57 224 | 44.98 202 | 23.71 220 | 37.54 204 | 18.42 201 | 31.36 206 | 47.07 156 | 46.41 124 | 56.71 194 | 54.65 198 | 48.55 219 | 58.47 197 |
|
| FMVSNet5 | | | 40.96 203 | 45.81 204 | 35.29 208 | 34.30 215 | 44.55 213 | 47.28 191 | 28.84 211 | 40.76 185 | 21.62 192 | 29.85 209 | 42.44 190 | 24.77 201 | 57.53 189 | 55.00 194 | 54.93 208 | 50.56 209 |
|
| EU-MVSNet | | | 40.63 206 | 45.65 205 | 34.78 209 | 39.11 212 | 46.94 206 | 40.02 214 | 34.03 195 | 33.50 210 | 10.37 215 | 35.57 196 | 37.80 209 | 23.65 204 | 51.90 209 | 50.21 210 | 61.49 196 | 63.62 178 |
|
| testgi | | | 38.71 210 | 43.64 210 | 32.95 210 | 52.30 164 | 48.63 199 | 35.59 220 | 35.05 189 | 31.58 216 | 9.03 221 | 30.29 207 | 40.75 198 | 11.19 224 | 55.30 202 | 53.47 205 | 54.53 211 | 45.48 217 |
|
| PMVS |  | 27.84 18 | 33.81 215 | 35.28 220 | 32.09 211 | 34.13 216 | 24.81 226 | 32.51 222 | 26.48 216 | 26.41 219 | 19.37 199 | 23.76 218 | 24.02 225 | 25.18 200 | 50.78 211 | 47.24 214 | 54.89 210 | 49.95 212 |
| Y. Furukawa, J. Ponce: Accurate, dense, and robust multiview stereopsis. PAMI (2010) |
| pmmvs3 | | | 35.10 214 | 38.47 216 | 31.17 212 | 26.37 227 | 40.47 216 | 34.51 221 | 18.09 224 | 24.75 221 | 16.88 204 | 23.05 219 | 26.69 222 | 32.69 188 | 50.73 213 | 51.60 207 | 58.46 203 | 51.98 205 |
|
| FC-MVSNet-test | | | 39.65 209 | 48.35 197 | 29.49 213 | 44.43 200 | 39.28 221 | 30.23 223 | 40.44 158 | 43.59 163 | 3.12 230 | 53.00 98 | 42.03 191 | 10.02 226 | 55.09 203 | 54.77 195 | 48.66 218 | 50.71 208 |
|
| MIMVSNet1 | | | 35.51 213 | 41.41 213 | 28.63 214 | 27.53 225 | 43.36 214 | 38.09 216 | 33.82 197 | 32.01 213 | 6.77 225 | 21.63 221 | 35.43 213 | 11.97 220 | 55.05 204 | 53.99 202 | 53.59 213 | 48.36 216 |
|
| new-patchmatchnet | | | 33.24 216 | 37.20 217 | 28.62 215 | 44.32 202 | 38.26 222 | 29.68 224 | 36.05 185 | 31.97 214 | 6.33 226 | 26.59 216 | 27.33 221 | 11.12 225 | 50.08 216 | 41.05 221 | 44.23 221 | 45.15 218 |
|
| N_pmnet | | | 32.67 217 | 36.85 218 | 27.79 216 | 40.55 210 | 32.13 223 | 35.80 218 | 26.79 215 | 37.24 205 | 9.10 219 | 32.02 204 | 30.94 219 | 16.30 214 | 47.22 221 | 41.21 220 | 38.21 223 | 37.21 220 |
|
| Gipuma |  | | 25.87 219 | 26.91 222 | 24.66 217 | 28.98 222 | 20.17 227 | 20.46 225 | 34.62 193 | 29.55 217 | 9.10 219 | 4.91 230 | 5.31 234 | 15.76 215 | 49.37 218 | 49.10 212 | 39.03 222 | 29.95 223 |
| S. Galliani, K. Lasinger, K. Schindler: Massively Parallel Multiview Stereopsis by Surface Normal Diffusion. ICCV 2015 |
| WB-MVS | | | 29.70 218 | 35.40 219 | 23.05 218 | 40.96 209 | 39.59 220 | 18.79 227 | 40.20 161 | 25.26 220 | 1.88 233 | 33.33 201 | 21.97 228 | 3.36 227 | 48.69 219 | 44.60 219 | 33.11 225 | 34.39 221 |
|
| new_pmnet | | | 23.19 220 | 28.17 221 | 17.37 219 | 17.03 229 | 24.92 225 | 19.66 226 | 16.16 226 | 27.05 218 | 4.42 227 | 20.77 222 | 19.20 229 | 12.19 219 | 37.71 222 | 36.38 222 | 34.77 224 | 31.17 222 |
|
| E-PMN | | | 15.09 222 | 13.19 226 | 17.30 220 | 27.80 224 | 12.62 230 | 7.81 231 | 27.54 213 | 14.62 228 | 3.19 228 | 6.89 227 | 2.52 237 | 15.09 216 | 15.93 226 | 20.22 225 | 22.38 226 | 19.53 226 |
|
| GG-mvs-BLEND | | | 36.62 212 | 53.39 168 | 17.06 221 | 0.01 234 | 58.61 159 | 48.63 183 | 0.01 230 | 47.13 138 | 0.02 235 | 43.98 162 | 60.64 93 | 0.03 230 | 54.92 205 | 51.47 208 | 53.64 212 | 56.99 199 |
|
| EMVS | | | 14.49 223 | 12.45 227 | 16.87 222 | 27.02 226 | 12.56 231 | 8.13 230 | 27.19 214 | 15.05 227 | 3.14 229 | 6.69 228 | 2.67 236 | 15.08 217 | 14.60 228 | 18.05 226 | 20.67 227 | 17.56 228 |
|
| PMMVS2 | | | 15.84 221 | 19.68 223 | 11.35 223 | 15.74 230 | 16.95 228 | 13.31 228 | 17.64 225 | 16.08 226 | 0.36 234 | 13.12 224 | 11.47 231 | 1.69 229 | 28.82 223 | 27.24 224 | 19.38 229 | 24.09 225 |
|
| MVE |  | 12.28 19 | 13.53 224 | 15.72 224 | 10.96 224 | 7.39 231 | 15.71 229 | 6.05 232 | 23.73 219 | 10.29 230 | 3.01 231 | 5.77 229 | 3.41 235 | 11.91 221 | 20.11 224 | 29.79 223 | 13.67 230 | 24.98 224 |
| Simon Fuhrmann, Fabian Langguth, Michael Goesele: MVE - A Multi-View Reconstruction Environment. EUROGRAPHICS Workshops on Graphics and Cultural Heritage (2014) |
| test_method | | | 12.44 225 | 14.66 225 | 9.85 225 | 1.30 233 | 3.32 233 | 13.00 229 | 3.21 227 | 22.42 223 | 10.22 216 | 14.13 223 | 25.64 223 | 11.43 223 | 19.75 225 | 11.61 228 | 19.96 228 | 5.79 229 |
|
| tmp_tt | | | | | 5.40 226 | 3.97 232 | 2.35 234 | 3.26 234 | 0.44 229 | 17.56 225 | 12.09 210 | 11.48 226 | 7.14 232 | 1.98 228 | 15.68 227 | 15.49 227 | 10.69 231 | |
|
| uanet_test | | | 0.00 228 | 0.00 230 | 0.00 227 | 0.00 235 | 0.00 235 | 0.00 237 | 0.00 231 | 0.00 233 | 0.00 236 | 0.00 233 | 0.00 238 | 0.00 233 | 0.00 231 | 0.00 231 | 0.00 233 | 0.00 232 |
|
| sosnet-low-res | | | 0.00 228 | 0.00 230 | 0.00 227 | 0.00 235 | 0.00 235 | 0.00 237 | 0.00 231 | 0.00 233 | 0.00 236 | 0.00 233 | 0.00 238 | 0.00 233 | 0.00 231 | 0.00 231 | 0.00 233 | 0.00 232 |
|
| sosnet | | | 0.00 228 | 0.00 230 | 0.00 227 | 0.00 235 | 0.00 235 | 0.00 237 | 0.00 231 | 0.00 233 | 0.00 236 | 0.00 233 | 0.00 238 | 0.00 233 | 0.00 231 | 0.00 231 | 0.00 233 | 0.00 232 |
|
| testmvs | | | 0.01 226 | 0.02 228 | 0.00 227 | 0.00 235 | 0.00 235 | 0.01 236 | 0.00 231 | 0.01 231 | 0.00 236 | 0.03 232 | 0.00 238 | 0.01 231 | 0.01 230 | 0.01 229 | 0.00 233 | 0.06 231 |
|
| test123 | | | 0.01 226 | 0.02 228 | 0.00 227 | 0.00 235 | 0.00 235 | 0.00 237 | 0.00 231 | 0.01 231 | 0.00 236 | 0.04 231 | 0.00 238 | 0.01 231 | 0.00 231 | 0.01 229 | 0.00 233 | 0.07 230 |
|
| TPM-MVS | | | | | | 75.48 14 | 76.70 30 | 79.31 21 | | | 62.34 17 | 64.71 42 | 77.88 28 | 56.94 53 | | | 81.88 32 | 83.68 40 |
| Ray Leroy Khuboni and Hongjun Xu: Textureless Resilient Propagation Matching in Multiple View Stereosis (TPM-MVS). SATNAC 2025 |
| RE-MVS-def | | | | | | | | | | | 33.01 145 | | | | | | | |
|
| 9.14 | | | | | | | | | | | | | 81.81 13 | | | | | |
|
| SR-MVS | | | | | | 71.46 34 | | | 54.67 28 | | | | 81.54 14 | | | | | |
|
| Anonymous202405211 | | | | 60.60 104 | | 63.44 75 | 66.71 93 | 61.00 117 | 47.23 69 | 50.62 106 | | 36.85 193 | 60.63 94 | 43.03 142 | 69.17 87 | 67.72 91 | 75.41 107 | 72.54 115 |
|
| our_test_3 | | | | | | 51.15 172 | 57.31 172 | 55.12 160 | | | | | | | | | | |
|
| ambc | | | | 45.54 206 | | 50.66 179 | 52.63 186 | 40.99 212 | | 38.36 200 | 24.67 186 | 22.62 220 | 13.94 230 | 29.14 195 | 65.71 149 | 58.06 182 | 58.60 202 | 67.43 147 |
|
| MTAPA | | | | | | | | | | | 65.14 4 | | 80.20 20 | | | | | |
|
| MTMP | | | | | | | | | | | 62.63 16 | | 78.04 27 | | | | | |
|
| Patchmatch-RL test | | | | | | | | 1.04 235 | | | | | | | | | | |
|
| XVS | | | | | | 70.49 39 | 76.96 26 | 74.36 45 | | | 54.48 49 | | 74.47 38 | | | | 82.24 25 | |
|
| X-MVStestdata | | | | | | 70.49 39 | 76.96 26 | 74.36 45 | | | 54.48 49 | | 74.47 38 | | | | 82.24 25 | |
|
| mPP-MVS | | | | | | 71.67 33 | | | | | | | 74.36 41 | | | | | |
|
| NP-MVS | | | | | | | | | | 72.00 42 | | | | | | | | |
|
| Patchmtry | | | | | | | 47.61 201 | 48.27 184 | 38.86 169 | | 39.59 122 | | | | | | | |
|
| DeepMVS_CX |  | | | | | | 6.95 232 | 5.98 233 | 2.25 228 | 11.73 229 | 2.07 232 | 11.85 225 | 5.43 233 | 11.75 222 | 11.40 229 | | 8.10 232 | 18.38 227 |
|