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Hauptverfasser: Ma, Wenping, Xue, Boyou, Ma, Mengru, Chen, Chuang, Zhang, Hekai, Zhu, Hao
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2504.16665
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author Ma, Wenping
Xue, Boyou
Ma, Mengru
Chen, Chuang
Zhang, Hekai
Zhu, Hao
author_facet Ma, Wenping
Xue, Boyou
Ma, Mengru
Chen, Chuang
Zhang, Hekai
Zhu, Hao
contents Multispectral (MS) and panchromatic (PAN) images describe the same land surface, so these images not only have their own advantages, but also have a lot of similar information. In order to separate these similar information and their respective advantages, reduce the feature redundancy in the fusion stage. This paper introduces a diff-attention aware state space fusion model (DAS2F-Model) for multimodal remote sensing image classification. Based on the selective state space model, a cross-modal diff-attention module (CMDA-Module) is designed to extract and separate the common features and their respective dominant features of MS and PAN images. Among this, space preserving visual mamba (SPVM) retains image spatial features and captures local features by optimizing visual mamba's input reasonably. Considering that features in the fusion stage will have large semantic differences after feature separation and simple fusion operations struggle to effectively integrate these significantly different features, an attention-aware linear fusion module (AALF-Module) is proposed. It performs pixel-wise linear fusion by calculating influence coefficients. This mechanism can fuse features with large semantic differences while keeping the feature size unchanged. Empirical evaluations indicate that the presented method achieves better results than alternative approaches. The relevant code can be found at:https://github.com/AVKSKVL/DAS-F-Model
format Preprint
id arxiv_https___arxiv_org_abs_2504_16665
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Diff-Attention Aware State Space Fusion Model for Remote Sensing Classification
Ma, Wenping
Xue, Boyou
Ma, Mengru
Chen, Chuang
Zhang, Hekai
Zhu, Hao
Computer Vision and Pattern Recognition
Multispectral (MS) and panchromatic (PAN) images describe the same land surface, so these images not only have their own advantages, but also have a lot of similar information. In order to separate these similar information and their respective advantages, reduce the feature redundancy in the fusion stage. This paper introduces a diff-attention aware state space fusion model (DAS2F-Model) for multimodal remote sensing image classification. Based on the selective state space model, a cross-modal diff-attention module (CMDA-Module) is designed to extract and separate the common features and their respective dominant features of MS and PAN images. Among this, space preserving visual mamba (SPVM) retains image spatial features and captures local features by optimizing visual mamba's input reasonably. Considering that features in the fusion stage will have large semantic differences after feature separation and simple fusion operations struggle to effectively integrate these significantly different features, an attention-aware linear fusion module (AALF-Module) is proposed. It performs pixel-wise linear fusion by calculating influence coefficients. This mechanism can fuse features with large semantic differences while keeping the feature size unchanged. Empirical evaluations indicate that the presented method achieves better results than alternative approaches. The relevant code can be found at:https://github.com/AVKSKVL/DAS-F-Model
title A Diff-Attention Aware State Space Fusion Model for Remote Sensing Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.16665