高光谱图像的多级增强去噪网络

Xiaomiao Pan, Q. Pan, Chao Wang, Chuan-Sheng Yang, Yueting Yang, Liangtian He
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摘要

由于成像系统的限制,高光谱图像(hsi)在整个数据收集过程中都会遇到噪声,这将使提取图像的关键信息变得具有挑战性。本文提出了一种多级增强HSI去噪网络(MED-Net)。我们的核心思想是使用多级网络迭代处理高光谱噪声图像。采用类似网络结构的第一阶段和第二阶段进行去噪处理。为了实现跨阶段的信息传递,我们使用了CSFF (cross-stage Feature Fusion)机制和SAM (Supervised Attention Module)。使用AN (Additive Network)和MN (Multiplicative Network)去除加性噪声和乘性噪声。然后,基于残差网络和注意机制对背景进行还原。实验结果表明,该方法优于实际的hsi数据恢复,恢复后的图像具有良好的视觉清晰度和细节。
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Multi-stage Enhanced Denoising Network on Hyperspectral Image
Hyperspectral images (HSIs) will experience noise throughout the data collection process due to the imaging system's limitations, which will make it challenging to extract the image's crucial information. In this paper, a multi-stage enhanced HSI denoising network (MED-Net) is proposed. Our core concept is to process the hyperspectral noise image iteratively using a multi-stage network. A similar network structure's first and second phases are employed for the denoise process. To achieve cross-stage information transfer, we use CSFF (Cross-stage Feature Fusion) mechanism and SAM (Supervised Attention Module). AN (Additive Network) and MN (Multiplicative Network) are used to remove additive and multiplicative noise. Then, we restore the background based on the residual network and attention mechanism. The results of our experiments demonstrate the superiority of our approach over the actual HSIs data recovery, and the restored image has good visual clarity and detail.
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