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Stereo Risk: A Continuous Modeling Approach to Stereo Matching

Authors :
Liu, Ce
Kumar, Suryansh
Gu, Shuhang
Timofte, Radu
Yao, Yao
Van Gool, Luc
Publication Year :
2024

Abstract

We introduce Stereo Risk, a new deep-learning approach to solve the classical stereo-matching problem in computer vision. As it is well-known that stereo matching boils down to a per-pixel disparity estimation problem, the popular state-of-the-art stereo-matching approaches widely rely on regressing the scene disparity values, yet via discretization of scene disparity values. Such discretization often fails to capture the nuanced, continuous nature of scene depth. Stereo Risk departs from the conventional discretization approach by formulating the scene disparity as an optimal solution to a continuous risk minimization problem, hence the name "stereo risk". We demonstrate that $L^1$ minimization of the proposed continuous risk function enhances stereo-matching performance for deep networks, particularly for disparities with multi-modal probability distributions. Furthermore, to enable the end-to-end network training of the non-differentiable $L^1$ risk optimization, we exploited the implicit function theorem, ensuring a fully differentiable network. A comprehensive analysis demonstrates our method's theoretical soundness and superior performance over the state-of-the-art methods across various benchmark datasets, including KITTI 2012, KITTI 2015, ETH3D, SceneFlow, and Middlebury 2014.<br />Comment: Accepted as an Oral Paper at ICML 2024. Draft info: 18 pages, 6 Figure, 16 Tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.03152
Document Type :
Working Paper