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Autore principale: Wang, Qiang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.08430
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author Wang, Qiang
author_facet Wang, Qiang
contents We revisit the problem of training attention-based sparse image matching models for various local features. We first identify one critical design choice that has been previously overlooked, which significantly impacts the performance of the LightGlue model. We then investigate the role of detectors and descriptors within the transformer-based matching framework, finding that detectors, rather than descriptors, are often the primary cause for performance difference. Finally, we propose a novel approach to fine-tune existing image matching models using keypoints from a diverse set of detectors, resulting in a universal, detector-agnostic model. When deployed as a zero-shot matcher for novel detectors, the resulting model achieves or exceeds the accuracy of models specifically trained for those features. Our findings offer valuable insights for the deployment of transformer-based matching models and the future design of local features.
format Preprint
id arxiv_https___arxiv_org_abs_2602_08430
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Understanding and Optimizing Attention-Based Sparse Matching for Diverse Local Features
Wang, Qiang
Computer Vision and Pattern Recognition
We revisit the problem of training attention-based sparse image matching models for various local features. We first identify one critical design choice that has been previously overlooked, which significantly impacts the performance of the LightGlue model. We then investigate the role of detectors and descriptors within the transformer-based matching framework, finding that detectors, rather than descriptors, are often the primary cause for performance difference. Finally, we propose a novel approach to fine-tune existing image matching models using keypoints from a diverse set of detectors, resulting in a universal, detector-agnostic model. When deployed as a zero-shot matcher for novel detectors, the resulting model achieves or exceeds the accuracy of models specifically trained for those features. Our findings offer valuable insights for the deployment of transformer-based matching models and the future design of local features.
title Understanding and Optimizing Attention-Based Sparse Matching for Diverse Local Features
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.08430