Finding reliable correspondences between two images is a fundamental problem in remote-sensing image registration. In the face of sparse and unordered correspondences, the previous learning-based works often focus on global… Click to show full abstract
Finding reliable correspondences between two images is a fundamental problem in remote-sensing image registration. In the face of sparse and unordered correspondences, the previous learning-based works often focus on global information and ignore valuable local information. To gather rich local information, we propose a simple and effective approach, the principle of which is to establish a local neighborhood structure for putative correspondences and then extract and aggregate neighborhood context. Specifically, we design a residual block with an innovative normalization operation and then we construct a sub-net, by introducing a competition mechanism in the local neighborhood to enhance the expression ability of features. Finally, we propose a learning-based network, to improve the performance of outlier rejection by extracting neighborhood context and global context. Extensive experiments on relative pose estimation demonstrate that the proposed network surpasses current state-of-the-art approaches on both challenging indoor and outdoor datasets.
               
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