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Local Spectral Component Decomposition for Multi-Channel Image Denoising

机译:用于多通道图像去噪的局部频谱分量分解

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We propose a method for local spectral component decomposition based on the line feature of local distribution. Our aim is to reduce noise on multi-channel images by exploiting the linear correlation in the spectral domain of a local region. We first calculate a linear feature over the spectral components of an -channel image, which we call the spectral line, and then, using the line, we decompose the image into three components: a single -channel image and two gray-scale images. By virtue of the decomposition, the noise is concentrated on the two images, and thus our algorithm needs to denoise only the two gray-scale images, regardless of the number of the channels. As a result, image deterioration due to the imbalance of the spectral component correlation can be avoided. The experiment shows that our method improves image quality with less deterioration while preserving vivid contrast. Our method is especially effective for hyperspectral images. The experimental results demonstrate that our proposed method can compete with the other state-of-the-art denoising methods.
机译:我们提出了一种基于局部分布线特征的局部频谱分量分解方法。我们的目标是通过利用局部区域光谱域中的线性相关性来减少多通道图像上的噪声。我们首先在-通道图像的光谱分量上计算线性特征,这称为光谱线,然后使用该线将图像分解为三个分量:单通道图像和两个灰度图像。通过分解,噪声集中在两个图像上,因此我们的算法只需要对两个灰度图像进行降噪,而与通道数无关。结果,可以避免由于光谱成分相关性的不平衡引起的图像劣化。实验表明,我们的方法可以在保持鲜明对比度的同时,改善图像质量,减少劣化。我们的方法对于高光谱图像特别有效。实验结果表明,我们提出的方法可以与其他最新的去噪方法相抗衡。

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