SGMatch: Semantic-Guided Non-Rigid Shape Matching with Flow Regularization
arXiv cs.CV / 3/16/2026
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Key Points
- SGMatch is a learning-based framework for semantic-guided non-rigid shape matching that addresses challenges from non-isometric deformations and topological noise.
- It introduces a Semantic-Guided Local Cross-Attention module that fuses semantic features from vision foundation models with geometric descriptors while preserving local structural continuity.
- A conditional flow matching-based regularization objective is proposed to supervise a time-varying velocity field, promoting spatial smoothness in the recovered correspondences.
- Experimental results show competitive performance in near-isometric settings and robust improvements under non-isometric deformations and topological noise across multiple benchmarks.
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