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Infrared image denoising via sparse representation over redundant dictionary

机译:通过冗余字典上的稀疏表示对红外图像进行去噪

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Infrared images are often contaminated by much noise, thus it is significant to denoise the infrared image. An effective denoising method is presented in this paper. The infrared images are assumed with strong zero-mean white and homogeneous Gaussian adaptive noise. Focus on denoising image with high noise level, firstly, the image is denoised via sparse representation over an adaptive redundant dictionary. The dictionary is trained by applying K-means Singular Value Decomposition (K-SVD) algorithm on the down-scaled noisy image. Secondly, a double-scale denoising is added to improve the denoised results. The experimental results indicate that this method could obtain a better performance when noise level is high.
机译:红外图像经常被很多噪声污染,因此对红外图像进行降噪非常重要。本文提出了一种有效的去噪方法。假设红外图像具有强零均值白光和均质的高斯自适应噪声。着重于对具有高噪声水平的图像进行降噪,首先,在自适应冗余字典上通过稀疏表示对图像进行降噪。通过在缩小的噪点图像上应用K均值奇异值分解(K-SVD)算法来训练字典。其次,添加双尺度降噪以改善降噪效果。实验结果表明,该方法在噪声水平较高时可以获得较好的性能。

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