AnyMatch: Supercharging Universal Multi-Modal Image Matching with Large-Scale Single-View Images
arXiv:2606.31077v1 Announce Type: new Abstract: Multi-modal image matching is essential for visual localization and multi-sensor fusion, but it is hindered by the scarcity of large-scale training data with precise geometric annotations. Existing real-world datasets suffer from prohibitive costs, limited scene diversity, and errors in SfM-MVS pipelines, while synthetic methods struggle to maintain 3D geometric consistency or achieve photorealistic appearance. To address this, we propose AnyMatch,...
arXiv cs.CV
·Meng Yang, Zizhuo Li, Linfeng Tang, Fan Fan, Jiayi Ma
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