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Blind image restoration method by PCA-based subspace generation

机译:基于PCA的子空间生成的盲图像复原方法

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Principal Component Analysis (PCA) has been effectively applied for image restoration. Original idea underlying PCA approach has two different roots. One is from the fact that PCA is relevant to variance of pixel intensity by which the missing high frequency components in blurred image should be recovered. The other comes from the idea of source separation based on PCA. In the light of PCA approach we have proposed an image restoration algorithm which contains the following three novel aspects: iterative application of PCA, Gaussian smoothing filtering for image ensemble creation, and no-reference image quality index for iteration number management. This paper aims to investigate and propose a non-iterative PCA-based image restoration with some generalizations. First, through conducted experiments the variance of Gaussian filters as well as the number of created images by them are appropriately determined. Second, weights are introduced to the principal component images. Finally, optimal weights are determined by maximizing the image quality index with no reference. Experimental results by the proposed method provide higher PSNR than the previous iterative PCA approach.
机译:主成分分析(PCA)已有效地应用于图像恢复。 PCA方法的基本思想有两个不同的根源。一个原因是PCA与像素强度的变化有关,通过该变化可以恢复模糊图像中缺失的高频分量。另一个来自基于PCA的源分离的想法。根据PCA方法,我们提出了一种图像恢复算法,该算法包含以下三个新颖方面:PCA的迭代应用,用于图像整体创建的高斯平滑滤波以及用于迭代数管理的无参考图像质量指标。本文旨在研究并提出基于PCA的非迭代图像复原方法,并进行一些概括。首先,通过进行的实验,适当地确定高斯滤波器的方差以及由它们创建的图像的数量。第二,将权重引入主成分图像。最后,通过在没有参考的情况下最大化图像质量指标来确定最佳权重。所提出的方法的实验结果提供了比以前的迭代PCA方法更高的PSNR。

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