Hyperspectral images (HSIs) have been widely used in a variety of applications thanks to the rich spectral information they are able to provide. Among all HSI processing tasks, HSI denoising is a crucial step. Recently, deep learning-based image denoising methods have made great progress and achieved great performance. However, existing methods tend to ignore the correlations between adjacent spectral bands, leading to problems such as spectral distortion and blurred edges in denoised results. In this study, we propose a novel HSI denoising network, termed SSCAN, that combines group convolutions and attention modules. Specifically, we use a group convolution with a spatial attention module to facilitate feature extraction by directing models' attention to band-wise important features. We propose a spectral-spatial attention block (SSAB) to exploit the spatial and spectral information in hyperspectral images in an effective manner. In addition, we adopt residual learning operations with skip connections to ensure training stability. The experimental results indicate that the proposed SSCAN outperforms several state-of-the-art HSI denoising algorithms.
翻译:由于能够提供丰富的光谱信息,超光谱图像(HISI)被广泛用于各种应用中。在所有HSI处理任务中,HSI脱色是一个关键步骤。最近,基于深学习的图像脱色方法取得了巨大进步并取得了巨大绩效。然而,现有方法往往忽视相邻光谱频带之间的相互关系,导致光谱扭曲和脱色结果的模糊边缘等问题。在本研究中,我们提议建立一个名为SSCAN的新型HSI脱色网络,将群体变异和关注模块结合起来。具体地说,我们使用一个带有空间关注模块的组变集团,通过将模型的注意力引向带带宽带重要特征的特征提取。我们建议一个光谱空间空间空间空间空间空间关注区块,以便有效地利用超光谱图像中的空间和光谱信息。此外,我们采用了带有跳过连接的残余学习操作,以确保培训稳定性。实验结果表明,拟议的SSCAN超越了几个状态的HSI脱色算法。