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Main Authors: Nie, Han, Luo, Bin, Liu, Jun, Fu, Zhitao, Liu, Weixing, Su, Xin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.11637
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author Nie, Han
Luo, Bin
Liu, Jun
Fu, Zhitao
Liu, Weixing
Su, Xin
author_facet Nie, Han
Luo, Bin
Liu, Jun
Fu, Zhitao
Liu, Weixing
Su, Xin
contents We present REMM, a rotation-equivariant framework for end-to-end multimodal image matching, which fully encodes rotational differences of descriptors in the whole matching pipeline. Previous learning-based methods mainly focus on extracting modal-invariant descriptors, while consistently ignoring the rotational invariance. In this paper, we demonstrate that our REMM is very useful for multimodal image matching, including multimodal feature learning module and cyclic shift module. We first learn modal-invariant features through the multimodal feature learning module. Then, we design the cyclic shift module to rotationally encode the descriptors, greatly improving the performance of rotation-equivariant matching, which makes them robust to any angle. To validate our method, we establish a comprehensive rotation and scale-matching benchmark for evaluating the anti-rotation performance of multimodal images, which contains a combination of multi-angle and multi-scale transformations from four publicly available datasets. Extensive experiments show that our method outperforms existing methods in benchmarking and generalizes well to independent datasets. Additionally, we conducted an in-depth analysis of the key components of the REMM to validate the improvements brought about by the cyclic shift module. Code and dataset at https://github.com/HanNieWHU/REMM.
format Preprint
id arxiv_https___arxiv_org_abs_2407_11637
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle REMM:Rotation-Equivariant Framework for End-to-End Multimodal Image Matching
Nie, Han
Luo, Bin
Liu, Jun
Fu, Zhitao
Liu, Weixing
Su, Xin
Computer Vision and Pattern Recognition
We present REMM, a rotation-equivariant framework for end-to-end multimodal image matching, which fully encodes rotational differences of descriptors in the whole matching pipeline. Previous learning-based methods mainly focus on extracting modal-invariant descriptors, while consistently ignoring the rotational invariance. In this paper, we demonstrate that our REMM is very useful for multimodal image matching, including multimodal feature learning module and cyclic shift module. We first learn modal-invariant features through the multimodal feature learning module. Then, we design the cyclic shift module to rotationally encode the descriptors, greatly improving the performance of rotation-equivariant matching, which makes them robust to any angle. To validate our method, we establish a comprehensive rotation and scale-matching benchmark for evaluating the anti-rotation performance of multimodal images, which contains a combination of multi-angle and multi-scale transformations from four publicly available datasets. Extensive experiments show that our method outperforms existing methods in benchmarking and generalizes well to independent datasets. Additionally, we conducted an in-depth analysis of the key components of the REMM to validate the improvements brought about by the cyclic shift module. Code and dataset at https://github.com/HanNieWHU/REMM.
title REMM:Rotation-Equivariant Framework for End-to-End Multimodal Image Matching
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.11637