AI RESEARCH
Scalable and Generalizable Correspondence Pruning via Geometry-Consistent Pre-training
arXiv CS.CV
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ArXi:2406.05773v2 Announce Type: replace Two-view correspondence pruning aims to identify reliable correspondences for camera pose estimation, serving as a fundamental step in many 3D vision tasks. Existing methods rely on geometric consistency to seek true correspondences (inliers) from numerous false correspondences (outliers). In this learning paradigm, outliers severely affect the representation learning of inliers, resulting in models that are neither robust nor generalizable. To address this issue, we propose a geometry-consistent pre.