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WaveletStereo: Learning Wavelet Coefficients of Disparity Map in Stereo Matching

Menglong Yang, Fangrui Wu, Wei Li

202039 citationsDOI

Abstract

Some stereo matching algorithms based on deep learning have been proposed and achieved state-of-the-art performances since some public large-scale datasets were put online. However, the disparity in smooth regions and detailed regions is still difficult to accurately estimate simultaneously. This paper proposes a novel stereo matching method called WaveletStereo, which learns the wavelet coefficients of the disparity rather than the disparity itself. The WaveletStereo consists of several sub-modules, where the low-frequency sub-module generates the low-frequency wavelet coefficients, which aims at learning global context information and well handling the low-frequency regions such as textureless surfaces, and the others focus on the details. In addition, a densely connected atrous spatial pyramid block is introduced for better learning the multi-scale image features. Experimental results show the effectiveness of the proposed method, which achieves state-of-the-art performance on the large-scale test dataset Scene Flow.

Topics & Concepts

Artificial intelligencePyramid (geometry)WaveletComputer scienceMatching (statistics)Wavelet transformComputer visionScale (ratio)Context (archaeology)Pattern recognition (psychology)Focus (optics)Block (permutation group theory)MathematicsGeographyStatisticsArchaeologyOpticsCartographyGeometryPhysicsAdvanced Vision and ImagingImage Enhancement TechniquesAdvanced Image and Video Retrieval Techniques
WaveletStereo: Learning Wavelet Coefficients of Disparity Map in Stereo Matching | Litcius