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Main Authors: Fan, Ya, Lang, Rongling
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.01472
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author Fan, Ya
Lang, Rongling
author_facet Fan, Ya
Lang, Rongling
contents Detector-based and detector-free matchers are only applicable within their respective sparsity ranges. To improve adaptability of existing matchers, this paper introduces a novel probabilistic reweighting method. Our method is applicable to Transformer-based matching networks and adapts them to different sparsity levels without altering network parameters. The reweighting approach adjusts attention weights and matching scores using detection probabilities of features. And we prove that the reweighted matching network is the asymptotic limit of detector-based matching network. Furthermore, we propose a sparse training and pruning pipeline for detector-free networks based on reweighting. Reweighted versions of SuperGlue, LightGlue, and LoFTR are implemented and evaluated across different levels of sparsity. Experiments show that the reweighting method improves pose accuracy of detector-based matchers on dense features. And the performance of reweighted sparse LoFTR is comparable to detector-based matchers, demonstrating good flexibility in balancing accuracy and computational complexity.
format Preprint
id arxiv_https___arxiv_org_abs_2503_01472
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Transferring between sparse and dense matching via probabilistic reweighting
Fan, Ya
Lang, Rongling
Image and Video Processing
Detector-based and detector-free matchers are only applicable within their respective sparsity ranges. To improve adaptability of existing matchers, this paper introduces a novel probabilistic reweighting method. Our method is applicable to Transformer-based matching networks and adapts them to different sparsity levels without altering network parameters. The reweighting approach adjusts attention weights and matching scores using detection probabilities of features. And we prove that the reweighted matching network is the asymptotic limit of detector-based matching network. Furthermore, we propose a sparse training and pruning pipeline for detector-free networks based on reweighting. Reweighted versions of SuperGlue, LightGlue, and LoFTR are implemented and evaluated across different levels of sparsity. Experiments show that the reweighting method improves pose accuracy of detector-based matchers on dense features. And the performance of reweighted sparse LoFTR is comparable to detector-based matchers, demonstrating good flexibility in balancing accuracy and computational complexity.
title Transferring between sparse and dense matching via probabilistic reweighting
topic Image and Video Processing
url https://arxiv.org/abs/2503.01472