Diving into the Fusion of Monocular Priors for Generalized Stereo Matching
Chengtang Yao, Lidong Yu, Zhidan Liu, Jiaxi Zeng, Yuwei Wu, Yunde Jia

TL;DR
This paper introduces a novel fusion method for monocular priors in stereo matching, addressing misalignment and local optima issues, leading to improved generalization across datasets without sacrificing efficiency.
Contribution
It proposes a binary local ordering map and a registration-based fusion approach to effectively integrate monocular priors into stereo matching.
Findings
Significant performance improvements on Middlebury and Booster datasets.
Enhanced generalization from SceneFlow to real-world datasets.
Maintained computational efficiency during fusion.
Abstract
The matching formulation makes it naturally hard for the stereo matching to handle ill-posed regions like occlusions and non-Lambertian surfaces. Fusing monocular priors has been proven helpful for ill-posed matching, but the biased monocular prior learned from small stereo datasets constrains the generalization. Recently, stereo matching has progressed by leveraging the unbiased monocular prior from the vision foundation model (VFM) to improve the generalization in ill-posed regions. We dive into the fusion process and observe three main problems limiting the fusion of the VFM monocular prior. The first problem is the misalignment between affine-invariant relative monocular depth and absolute depth of disparity. Besides, when we use the monocular feature in an iterative update structure, the over-confidence in the disparity update leads to local optima results. A direct fusion of a…
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Taxonomy
TopicsSatellite Image Processing and Photogrammetry · Medical Image Segmentation Techniques · Advanced Image and Video Retrieval Techniques
MethodsLinear Regression · ALIGN
