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ScopeFlow: Dynamic Scene Scoping for Optical Flow

About

We propose to modify the common training protocols of optical flow, leading to sizable accuracy improvements without adding to the computational complexity of the training process. The improvement is based on observing the bias in sampling challenging data that exists in the current training protocol, and improving the sampling process. In addition, we find that both regularization and augmentation should decrease during the training protocol. Using an existing low parameters architecture, the method is ranked first on the MPI Sintel benchmark among all other methods, improving the best two frames method accuracy by more than 10%. The method also surpasses all similar architecture variants by more than 12% and 19.7% on the KITTI benchmarks, achieving the lowest Average End-Point Error on KITTI2012 among two-frame methods, without using extra datasets.

Aviram Bar-Haim, Lior Wolf• 2020

Related benchmarks

TaskDatasetResultRank
Optical FlowSintel (test)
AEPE (Final)4.1
120
Optical Flow EstimationSintel clean (test)
EPE3.59
103
Optical Flow EstimationSintel Final (test)
EPE4.1
101
Optical Flow EstimationKITTI 2015 (test)
Fl-all6.82
91
Optical Flow EstimationMPI Sintel Final Pass
Overall AEE4.098
29
Optical Flow EstimationKITTI 2015
Fl-all6.82
28
Optical FlowKITTI (test)--
28
Optical Flow EstimationMPI Sintel Clean Pass
Average Endpoint Error (All)3.592
16
Optical Flow EstimationKITTI 2012
Out-All5.66
10
Occlusion estimationSintel (train)
F1 (Mean)72.5
8
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