STAR-Net: An Interpretable Model-Aided Network for Remote Sensing Image Denoising
STAR-Net: An Interpretable Model-Aided Network for Remote Sensing Image Denoising
Remote sensing image (RSI) denoising is an important topic in the field of remote sensing. Despite the impressive denoising performance of RSI denoising methods, most current deep learning-based approaches function as black boxes and lack integration with physical information models, leading to limited interpretability. Additionally, many methods may struggle with insufficient attention to non-local self-similarity in RSI and require tedious tuning of regularization parameters to achieve optimal performance, particularly in conventional iterative optimization approaches. In this paper, we first propose a novel RSI denoising method named sparse tensor-aided representation network (STAR-Net), which leverages a low-rank prior to effectively capture the non-local self-similarity within RSI. Furthermore, we extend STAR-Net to a sparse variant called STAR-Net-S to deal with the interference caused by non-Gaussian noise in original RSI for the purpose of improving robustness. Different from conventional iterative optimization, we develop an alternating direction method of multipliers (ADMM)-guided deep unrolling network, in which all regularization parameters can be automatically learned, thus inheriting the advantages of both model-based and deep learning-based approaches and successfully addressing the above-mentioned shortcomings. Comprehensive experiments on synthetic and real-world datasets demonstrate that STAR-Net and STAR-Net-S outperform state-of-the-art RSI denoising methods.
Jingjing Liu、Jiashun Jin、Xianchao Xiu、Jianhua Zhang、Wanquan Liu
测绘学电子技术应用
Jingjing Liu,Jiashun Jin,Xianchao Xiu,Jianhua Zhang,Wanquan Liu.STAR-Net: An Interpretable Model-Aided Network for Remote Sensing Image Denoising[EB/OL].(2025-05-30)[2025-06-27].https://arxiv.org/abs/2505.24327.点此复制
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