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Noise-Sampling Cross Entropy Loss: Improving Disparity Regression Via Cost Volume Aware Regularizer

Authors :
Chen, Yang
Lu, Zongqing
Zhang, Xuechen
Chen, Lei
Liao, Qingmin
Publication Year :
2020

Abstract

Recent end-to-end deep neural networks for disparity regression have achieved the state-of-the-art performance. However, many well-acknowledged specific properties of disparity estimation are omitted in these deep learning algorithms. Especially, matching cost volume, one of the most important procedure, is treated as a normal intermediate feature for the following softargmin regression, lacking explicit constraints compared with those traditional algorithms. In this paper, inspired by previous canonical definition of cost volume, we propose the noise-sampling cross entropy loss function to regularize the cost volume produced by deep neural networks to be unimodal and coherent. Extensive experiments validate that the proposed noise-sampling cross entropy loss can not only help neural networks learn more informative cost volume, but also lead to better stereo matching performance compared with several representative algorithms.<br />Comment: Accepted by IEEE ICIP 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2005.08806
Document Type :
Working Paper