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Learning Inverse Depth Regression for Multi-View Stereo with Correlation Cost Volume

About

Deep learning has shown to be effective for depth inference in multi-view stereo (MVS). However, the scalability and accuracy still remain an open problem in this domain. This can be attributed to the memory-consuming cost volume representation and inappropriate depth inference. Inspired by the group-wise correlation in stereo matching, we propose an average group-wise correlation similarity measure to construct a lightweight cost volume. This can not only reduce the memory consumption but also reduce the computational burden in the cost volume filtering. Based on our effective cost volume representation, we propose a cascade 3D U-Net module to regularize the cost volume to further boost the performance. Unlike the previous methods that treat multi-view depth inference as a depth regression problem or an inverse depth classification problem, we recast multi-view depth inference as an inverse depth regression task. This allows our network to achieve sub-pixel estimation and be applicable to large-scale scenes. Through extensive experiments on DTU dataset and Tanks and Temples dataset, we show that our proposed network with Correlation cost volume and Inverse DEpth Regression (CIDER), achieves state-of-the-art results, demonstrating its superior performance on scalability and accuracy.

Qingshan Xu, Wenbing Tao• 2019

Related benchmarks

TaskDatasetResultRank
Multi-view StereoTanks and Temples Intermediate set
Mean F1 Score46.76
110
Multi-view StereoDTU 1 (evaluation)
Accuracy Error (mm)0.417
51
Multi-view StereoTanks & Temples Intermediate
F-score46.76
43
Multi-view StereoTanks & Temples Advanced
F-score23.12
36
Multi-view Stereo ReconstructionDTU (evaluation)
Mean Distance (mm) - Acc.0.417
35
Point Cloud ReconstructionDTU high-resolution (test)
Accuracy41.7
16
Point Cloud ReconstructionDTU (test)
Accuracy41.7
15
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