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Main Authors: Dai, Yimian, Zou, Minrui, Li, Yuxuan, Li, Xiang, Ni, Kang, Yang, Jian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.02833
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author Dai, Yimian
Zou, Minrui
Li, Yuxuan
Li, Xiang
Ni, Kang
Yang, Jian
author_facet Dai, Yimian
Zou, Minrui
Li, Yuxuan
Li, Xiang
Ni, Kang
Yang, Jian
contents Synthetic Aperture Radar (SAR) target detection has long been impeded by inherent speckle noise and the prevalence of diminutive, ambiguous targets. While deep neural networks have advanced SAR target detection, their intrinsic low-frequency bias and static post-training weights falter with coherent noise and preserving subtle details across heterogeneous terrains. Motivated by traditional SAR image denoising, we propose DenoDet, a network aided by explicit frequency domain transform to calibrate convolutional biases and pay more attention to high-frequencies, forming a natural multi-scale subspace representation to detect targets from the perspective of multi-subspace denoising. We design TransDeno, a dynamic frequency domain attention module that performs as a transform domain soft thresholding operation, dynamically denoising across subspaces by preserving salient target signals and attenuating noise. To adaptively adjust the granularity of subspace processing, we also propose a deformable group fully-connected layer (DeGroFC) that dynamically varies the group conditioned on the input features. Without bells and whistles, our plug-and-play TransDeno sets state-of-the-art scores on multiple SAR target detection datasets. The code is available at https://github.com/GrokCV/GrokSAR.
format Preprint
id arxiv_https___arxiv_org_abs_2406_02833
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DenoDet: Attention as Deformable Multi-Subspace Feature Denoising for Target Detection in SAR Images
Dai, Yimian
Zou, Minrui
Li, Yuxuan
Li, Xiang
Ni, Kang
Yang, Jian
Computer Vision and Pattern Recognition
Synthetic Aperture Radar (SAR) target detection has long been impeded by inherent speckle noise and the prevalence of diminutive, ambiguous targets. While deep neural networks have advanced SAR target detection, their intrinsic low-frequency bias and static post-training weights falter with coherent noise and preserving subtle details across heterogeneous terrains. Motivated by traditional SAR image denoising, we propose DenoDet, a network aided by explicit frequency domain transform to calibrate convolutional biases and pay more attention to high-frequencies, forming a natural multi-scale subspace representation to detect targets from the perspective of multi-subspace denoising. We design TransDeno, a dynamic frequency domain attention module that performs as a transform domain soft thresholding operation, dynamically denoising across subspaces by preserving salient target signals and attenuating noise. To adaptively adjust the granularity of subspace processing, we also propose a deformable group fully-connected layer (DeGroFC) that dynamically varies the group conditioned on the input features. Without bells and whistles, our plug-and-play TransDeno sets state-of-the-art scores on multiple SAR target detection datasets. The code is available at https://github.com/GrokCV/GrokSAR.
title DenoDet: Attention as Deformable Multi-Subspace Feature Denoising for Target Detection in SAR Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.02833