Image De-nosing with Morphological Component Analysis ⋆

Chengjia Yang, Xiong-fei Li
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引用次数: 2

Abstract

In this paper, we investigate the problem of image de-noising. Here, the theory of morphological component analysis is employed to separate the image to be de-noised into some layers with different morphological components. In this paper, images are decomposed into two parts: smooth and textural parts. As noise only exists in the textural parts, we utilize bilateral filter to smooth textural parts. Finally, the smooth parts and the filtered textual parts are combined to get the image free of noise. The algorithm is tested experimentally, and the results show that it is superior to other state-of-art algorithms.
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基于形态成分分析的图像去噪
本文主要研究图像去噪问题。本文利用形态学分量分析理论,将待去噪图像分割成具有不同形态学分量的若干层。本文将图像分解为两个部分:平滑部分和纹理部分。由于噪声只存在于纹理部分,我们利用双边滤波对纹理部分进行平滑处理。最后,将平滑部分与过滤后的文本部分相结合,得到无噪声的图像。实验结果表明,该算法优于现有的算法。
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