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PatchmatchNet: Learned Multi-View Patchmatch Stereo

About

We present PatchmatchNet, a novel and learnable cascade formulation of Patchmatch for high-resolution multi-view stereo. With high computation speed and low memory requirement, PatchmatchNet can process higher resolution imagery and is more suited to run on resource limited devices than competitors that employ 3D cost volume regularization. For the first time we introduce an iterative multi-scale Patchmatch in an end-to-end trainable architecture and improve the Patchmatch core algorithm with a novel and learned adaptive propagation and evaluation scheme for each iteration. Extensive experiments show a very competitive performance and generalization for our method on DTU, Tanks & Temples and ETH3D, but at a significantly higher efficiency than all existing top-performing models: at least two and a half times faster than state-of-the-art methods with twice less memory usage.

Fangjinhua Wang, Silvano Galliani, Christoph Vogel, Pablo Speciale, Marc Pollefeys• 2020

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationDDAD (test)
RMSE10.56
122
Multi-view StereoTanks and Temples Intermediate set
Mean F1 Score53.15
110
Multi-view StereoTanks & Temples Advanced
Mean F-score32.31
71
Multi-view StereoDTU (test)
Accuracy42.7
61
Multi-view StereoDTU 1 (evaluation)
Accuracy Error (mm)0.427
51
3D ReconstructionDTU--
47
Multi-view StereoTanks&Temples
Family66.99
46
Multi-view StereoTanks & Temples Intermediate
F-score53.15
43
Multi-view Stereo ReconstructionETH3D (test)
Accuracy91.98
41
Multi-view Stereo ReconstructionETH3D (train)
Accuracy89.98
41
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