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Learning Stereo Matchability in Disparity Regression Networks

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Learning-based stereo matching has recently achieved promising results, yet still suffers difficulties in establishing reliable matches in weakly matchable regions that are textureless, non-Lambertian, or occluded. In this paper, we address this challenge by proposing a stereo matching network that considers pixel-wise matchability. Specifically, the network jointly regresses disparity and matchability maps from 3D probability volume through expectation and entropy operations. Next, a learned attenuation is applied as the robust loss function to alleviate the influence of weakly matchable pixels in the training. Finally, a matchability-aware disparity refinement is introduced to improve the depth inference in weakly matchable regions. The proposed deep stereo matchability (DSM) framework can improve the matching result or accelerate the computation while still guaranteeing the quality. Moreover, the DSM framework is portable to many recent stereo networks. Extensive experiments are conducted on Scene Flow and KITTI stereo datasets to demonstrate the effectiveness of the proposed framework over the state-of-the-art learning-based stereo methods.

Jingyang Zhang, Yao Yao, Zixin Luo, Shiwei Li, Tianwei Shen, Tian Fang, Long Quan• 2020

Related benchmarks

TaskDatasetResultRank
Stereo MatchingKITTI 2015
D1 Error (All)2.28
118
Stereo MatchingKITTI Noc 2015
D1 Error (Background)1.66
32
Stereo MatchingKITTI 2012 (Noc)
Error Rate (>2px)2.25
26
Stereo MatchingKITTI 2012 (All split)
Error Rate (>2px)2.83
26
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