Using Marchenko–Pastur SVD and Linear MMSE Estimation for Reducing Image Noise

IF 0.3
Swati Rane, Lakshmappa K. Ragha, Siddalingappagouda Biradar, Vaibhav R. Pandit
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引用次数: 0

Abstract

The degradation in visual quality of images is often seen due to a variety of noise added inevitably at the time of image acquisition. Its restoration has thus become a fundamental and significant problem in image processing. Many attempts are made in recent past to efficiently denoise images. But, the best possible solution to this problem is still an open research problem. This paper validates the effectiveness of one such popular image denoising approach, where an adaptive image patch clustering is followed by the two step denoising algorithm in Principal Component Analysis (PCA) domain. First step uses Marchenko–Pastur law based hard thresholding of singular values in the singular value decomposition (SVD) domain and the second step removes remaining noise in PCA domain using Linear Minimum Mean-Squared-Error (LMMSE), a soft thresholding. The experimentation is conducted on gray-scale images corrupted by four different noise types namely speckle, salt & pepper, Gaussian, and Poisson. The efficiency of image denoising is quantified in terms of popular image quality metrics peak signal-to-noise ratio (PSNR), structural similarity (SSIM), feature similarity (FSIM), and the denoising time. The comprehensive performance analysis of the denoising approach against the four noise models underlies its suitability to various applications. This certainly gives the new researchers a direction for selection of image denoising method.
利用Marchenko-Pastur奇异值分解和线性MMSE估计降低图像噪声
由于在图像采集过程中不可避免地加入了各种噪声,导致图像的视觉质量下降。因此,它的恢复已成为图像处理中的一个基本而重要的问题。近年来,为了有效地对图像进行去噪,人们进行了许多尝试。但是,这个问题的最佳解决方案仍然是一个开放的研究问题。本文验证了一种流行的图像去噪方法的有效性,其中自适应图像补丁聚类之后是主成分分析(PCA)域的两步去噪算法。第一步在奇异值分解(SVD)域中使用基于Marchenko-Pastur定律的奇异值硬阈值,第二步在PCA域中使用线性最小均方误差(LMMSE)软阈值去除剩余噪声。在被散斑噪声、椒盐噪声、高斯噪声和泊松噪声四种不同噪声类型破坏的灰度图像上进行了实验。图像去噪效率通过常用的图像质量指标——峰值信噪比(PSNR)、结构相似度(SSIM)、特征相似度(FSIM)和去噪时间来量化。对四种噪声模型的综合性能分析表明,该方法适合于各种应用。这为新研究者在图像去噪方法的选择上提供了一个方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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