Noise reduction of shot-noise-dominated hyperspectral imagery by combining PCA with existing denoising methods

Guangyi Chen, A. Krzyżak
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Abstract

In this paper, we revisit the effects of principal component analysis (PCA) on hyperspectral imagery denoising. Our previous work combined PCA with wavelet shrinkage and particularly good denoising results has been achieved. We debate that any denoising methods can be used to replace wavelet shrinkage in our PCA+wavelet shrinkage algorithm. The major difference between this work and our previous PCA-based denoising method is that we consider a mixture of Gaussian and shot noise in this work whereas our previous methods studied Gaussian white noise alone. In addition, we retain [Formula: see text] [Formula: see text] PCA output components in our forward PCA transform in this paper whereas we keep all PCA output components [Formula: see text] in our previous works. The [Formula: see text] above is the number of spectral bands in the original hyperspectral imagery data cube. In addition, PCA is much better than nonlinear PCA for hyperspectral imagery denoising when Gaussian white noise and shot noise are introduced as demonstrated in this paper. Extensive experiments demonstrate that the method proposed in this paper outperforms the existing methods significantly in terms of signal-to-noise ratio for two testing hyperspectral imagery data cubes.
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结合PCA和现有降噪方法对高光谱图像进行降噪
本文研究了主成分分析(PCA)在高光谱图像去噪中的作用。我们之前的工作将PCA与小波收缩相结合,取得了特别好的去噪效果。在我们的PCA+小波收缩算法中,我们讨论了任何去噪方法都可以用来取代小波收缩。这项工作与我们之前基于pca的去噪方法的主要区别在于,我们在这项工作中考虑了高斯和散粒噪声的混合,而我们之前的方法只研究高斯白噪声。此外,在本文的前向PCA变换中,我们保留了[公式:见文][公式:见文]PCA输出分量,而在之前的工作中,我们保留了所有PCA输出分量[公式:见文]。上面[公式:见文]为原始高光谱影像数据立方的光谱带数。此外,当引入高斯白噪声和散粒噪声时,PCA对高光谱图像的去噪效果明显优于非线性PCA。大量实验表明,本文提出的方法在两个测试高光谱图像数据立方体的信噪比方面明显优于现有方法。
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