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Main Authors: Sun, Siyuan, Zhang, Yongping, Zeng, Hongcheng, Wang, Yamin, Yang, Wei, Yang, Wanting, Chen, Jie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02344
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author Sun, Siyuan
Zhang, Yongping
Zeng, Hongcheng
Wang, Yamin
Yang, Wei
Yang, Wanting
Chen, Jie
author_facet Sun, Siyuan
Zhang, Yongping
Zeng, Hongcheng
Wang, Yamin
Yang, Wei
Yang, Wanting
Chen, Jie
contents In recent years, convolutional neural networks (CNNs) have achieved significant success in various synthetic aperture radar (SAR) tasks. However, the complexity and opacity of their internal mechanisms hinder the fulfillment of high-reliability requirements, thereby limiting their application in SAR. Improving the interpretability of CNNs is thus of great importance for their development and deployment in SAR. In this paper, a visual explanation method termed multi-weight self-matching class activation mapping (MS-CAM) is proposed. MS-CAM matches SAR images with the feature maps and corresponding gradients extracted by the CNN, and combines both channel-wise and element-wise weights to visualize the decision basis learned by the model in SAR images. Extensive experiments conducted on a self-constructed SAR target classification dataset demonstrate that MS-CAM more accurately highlights the network's regions of interest and captures detailed target feature information, thereby enhancing network interpretability. Furthermore, the feasibility of applying MS-CAM to weakly-supervised obiect localization is validated. Key factors affecting localization accuracy, such as pixel thresholds, are analyzed in depth to inform future work.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02344
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A multi-weight self-matching visual explanation for cnns on sar images
Sun, Siyuan
Zhang, Yongping
Zeng, Hongcheng
Wang, Yamin
Yang, Wei
Yang, Wanting
Chen, Jie
Computer Vision and Pattern Recognition
In recent years, convolutional neural networks (CNNs) have achieved significant success in various synthetic aperture radar (SAR) tasks. However, the complexity and opacity of their internal mechanisms hinder the fulfillment of high-reliability requirements, thereby limiting their application in SAR. Improving the interpretability of CNNs is thus of great importance for their development and deployment in SAR. In this paper, a visual explanation method termed multi-weight self-matching class activation mapping (MS-CAM) is proposed. MS-CAM matches SAR images with the feature maps and corresponding gradients extracted by the CNN, and combines both channel-wise and element-wise weights to visualize the decision basis learned by the model in SAR images. Extensive experiments conducted on a self-constructed SAR target classification dataset demonstrate that MS-CAM more accurately highlights the network's regions of interest and captures detailed target feature information, thereby enhancing network interpretability. Furthermore, the feasibility of applying MS-CAM to weakly-supervised obiect localization is validated. Key factors affecting localization accuracy, such as pixel thresholds, are analyzed in depth to inform future work.
title A multi-weight self-matching visual explanation for cnns on sar images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.02344