周昊老师科研小组

Assistant Professor Zhou Hao's Research Group

汪亚伦同学在中科院一区Top期刊IEEE Transactions on Geoscience and Remote Sensing发表论文

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发表时间:2025-08-31 12:22

    祝贺本科研小组23级研究生汪亚伦同学在国际遥感领域顶刊、中科院一区Top期刊IEEE Transactions on Geoscience and Remote Sensing (TGRS)发表论文,这标志着本小组科研成果达到国际领先水平。


论文题目:

A Dual-Stage Residual Diffusion Model with Perceptual Decoding for Remote Sensing Image Dehazing


摘要:Atmospheric pollutants, such as haze, severely affect the quality of remote sensing images, leading to blurred details and impairing their effectiveness in applications like environmental monitoring and agricultural resource management. In recent years, diffusion models have attracted widespread attention due to their powerful generative capabilities. However, striking a balance between their expensive training costs and actual recovery effectiveness has become a major challenge. To address this key challenge, we propose a perceptual decoding dual-stage residual diffusion model (DS-RDMPD) for remote sensing image dehazing. The core innovation of our work lies in a dual-stage coarse-to-fine architecture that integrates the traditional U-Net with a diffusion model, enabling efficient adaptation of diffusion-based restoration to the dehazing task. This design not only achieves strong performance but also demonstrates remarkable generalization across various image restoration scenarios. In the first stage, we use the Multi-channel Efficient Selective Synthesis U-Net (MCESS-UNet) to pre-process the remote sensing haze images. This architecture performs initial dehazing and feature extraction through a multi-scale channel attention (MC) block, and then performs enhanced spatial feature aggregation through an Efficient Selective Synthesis (ESS) block. The preprocessed image is then used as the conditional input of the Residual Diffusion Model with Perceptual Decoding, where the perceptual decoder improves the generation quality by further decoupling the condition to refine the residual estimate. Extensive experiments on multiple datasets show that DS-RDMPD can achieve satisfactory results with only 300,000 iterations and about five sampling steps. It has achieved satisfactory results in both qualitative and quantitative experiments, and also exhibits strong performance in rain removal and deblurring tasks, demonstrating the excellent generalization ability of the model.


安徽工业大学
Anhui University of Technology
地址:安徽省马鞍山市雨山区安徽工业大学秀山校区

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