Enhanced Non-Local Cascading Network with Attention Mechanism for Hyperspectral Image Denoising

Hanwen Ma, Ganchao Liu, Yuan Yuan
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引用次数: 12

Abstract

Because of the complexity of imaging environment, hyper-spectral remote sensing images (HSIs) often suffer from different kinds of noise. Despite the success in natural image denoising, most of the existing CNN-based HSIs denoising methods still suffer from the problem of inadequate noise suppression and insufficient feature extraction. In this paper, a novel HSIs denoising algorithm based on an enhanced non-local cascading network with attention mechanism (ENCAM) is proposed, which can extract the joint spatial-spectral feature more effectively. The main contributions include: (1) the non-local structure is introduced to enlarge the receptive field to extract the spatial features more effectively; (2) multi-scale convolutions and channel attention module are applied to enhance extracted multi-scale features; (3) a cascading residual dense structure is used to extract different frequency features. Both of the theoretical analysis and the experiments indicate that the proposed method is superior to the other state-of-the-art methods on HSIs denoising.
基于注意机制的增强非局部级联网络高光谱图像去噪
由于成像环境的复杂性,高光谱遥感图像经常受到各种噪声的干扰。尽管在自然图像去噪方面取得了成功,但现有的大多数基于cnn的hsi去噪方法仍然存在噪声抑制不足和特征提取不足的问题。本文提出了一种基于增强非局部级联网络注意机制(ENCAM)的hsi去噪算法,该算法能更有效地提取联合空间-频谱特征。主要贡献有:(1)引入非局部结构,扩大接收野,更有效地提取空间特征;(2)采用多尺度卷积和通道关注模块增强提取的多尺度特征;(3)利用级联残差密集结构提取不同频率特征。理论分析和实验结果均表明,该方法对hsi信号的去噪效果优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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