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arxiv 2403.00486 v1 pith:ZA2KC6G4 submitted 2024-03-01 cs.CV

Selective-Stereo: Adaptive Frequency Information Selection for Stereo Matching

classification cs.CV
keywords informationmatchingstereoiterativemethodsselective-stereodisparityhidden
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Stereo matching methods based on iterative optimization, like RAFT-Stereo and IGEV-Stereo, have evolved into a cornerstone in the field of stereo matching. However, these methods struggle to simultaneously capture high-frequency information in edges and low-frequency information in smooth regions due to the fixed receptive field. As a result, they tend to lose details, blur edges, and produce false matches in textureless areas. In this paper, we propose Selective Recurrent Unit (SRU), a novel iterative update operator for stereo matching. The SRU module can adaptively fuse hidden disparity information at multiple frequencies for edge and smooth regions. To perform adaptive fusion, we introduce a new Contextual Spatial Attention (CSA) module to generate attention maps as fusion weights. The SRU empowers the network to aggregate hidden disparity information across multiple frequencies, mitigating the risk of vital hidden disparity information loss during iterative processes. To verify SRU's universality, we apply it to representative iterative stereo matching methods, collectively referred to as Selective-Stereo. Our Selective-Stereo ranks $1^{st}$ on KITTI 2012, KITTI 2015, ETH3D, and Middlebury leaderboards among all published methods. Code is available at https://github.com/Windsrain/Selective-Stereo.

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  1. SMFormer: Empowering Self-supervised Stereo Matching via Foundation Models and Data Augmentation

    cs.CV 2026-04 unverdicted novelty 5.0

    SMFormer achieves state-of-the-art self-supervised stereo matching by using vision foundation models for disturbance-resistant features and data augmentation to enforce output consistency, rivaling or exceeding some s...