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CA-I2P: Channel-Adaptive Registration Network with Global Optimal Selection

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Detection-free methods typically follow a coarse-to-fine pipeline, extracting image and point cloud features for patch-level matching and refining dense pixel-to-point correspondences. However, differences in feature channel attention between images and point clouds may lead to degraded matching results, ultimately impairing registration accuracy. Furthermore, similar structures in the scene could lead to redundant correspondences in cross-modal matching. To address these issues, we propose Channel Adaptive Adjustment Module (CAA) and Global Optimal Selection Module (GOS). CAA enhances intra-modal features and suppresses cross-modal sensitivity, while GOS replaces local selection with global optimization. Experiments on RGB-D Scenes V2 and 7-Scenes demonstrate the superiority of our method, achieving state-of-the-art performance in image-to-point cloud registration.

Zhixin Cheng, Jiacheng Deng, Xinjun Li, Xiaotian Yin, Bohao Liao, Baoqun Yin, Wenfei Yang, Tianzhu Zhang• 2025

Related benchmarks

TaskDatasetResultRank
2D/3D RegistrationRGB-D Scenes v2
Inlier Ratio40.6
45
2D/3D Registration7 Scenes
Inlier Ratio (Chs)73.6
8
3D Point Cloud RegistrationRGB-D Scenes v2
Mean Rotation Error (RRE) (°)2.559
4
3D Point Cloud Registration7 Scenes
Mean Rotation Error (RRE)3.2
4
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