首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >HYPERSPECTRAL IMAGE DENOISING USING A NONLOCAL SPECTRAL SPATIAL PRINCIPAL COMPONENT ANALYSIS
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HYPERSPECTRAL IMAGE DENOISING USING A NONLOCAL SPECTRAL SPATIAL PRINCIPAL COMPONENT ANALYSIS

机译:基于非局部光谱空间主成分分析的高光谱图像降噪

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Hyperspectral images (HSIs) denoising is a critical research area in image processing duo to its importance in improving the quality of HSIs, which has a negative impact on object detection and classification and so on. In this paper, we develop a noise reduction method based on principal component analysis (PCA) for hyperspectral imagery, which is dependent on the assumption that the noise can be removed by selecting the leading principal components. The main contribution of paper is to introduce the spectral spatial structure and nonlocal similarity of the HSIs into the PCA denoising model. PCA with spectral spatial structure can exploit spectral correlation and spatial correlation of HSI by using 3D blocks instead of 2D patches. Nonlocal similarity means the similarity between the referenced pixel and other pixels in nonlocal area, where Mahalanobis distance algorithm is used to estimate the spatial spectral similarity by calculating the distance in 3D blocks. The proposed method is tested on both simulated and real hyperspectral images, the results demonstrate that the proposed method is superior to several other popular methods in HSI denoising.
机译:高光谱图像降噪是图像处理中的关键研究领域,因为高光谱图像对提高HSI的质量至关重要,这对物体检测和分类等产生了负面影响。在本文中,我们针对高光谱图像开发了一种基于主成分分析(PCA)的降噪方法,该方法取决于以下假设:可以通过选择领先的主成分来消除噪声。本文的主要贡献是将HSI的光谱空间结构和非局部相似性引入PCA去噪模型。具有频谱空间结构的PCA可以通过使用3D块而不是2D补丁来利用HSI的频谱相关性和空间相关性。非局部相似性是指参考像素与非局部区域中其他像素之间的相似性,其中Mahalanobis距离算法用于通过计算3D块中的距离来估计空间光谱相似性。在模拟和真实的高光谱图像上测试了该方法,结果表明该方法在HSI去噪方面优于其他几种流行方法。

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