Image Denoising Using Sparse Representation and Principal Component Analysis

Maryam Abedini, Horriyeh Haddad, M. F. Masouleh, A. Shahbahrami
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引用次数: 1

Abstract

This study proposes an image denoising algorithm based on sparse representation and Principal Component Analysis (PCA). The proposed algorithm includes the following steps. First, the noisy image is divided into overlapped [Formula: see text] blocks. Second, the discrete cosine transform is applied as a dictionary for the sparse representation of the vectors created by the overlapped blocks. To calculate the sparse vector, the orthogonal matching pursuit algorithm is used. Then, the dictionary is updated by means of the PCA algorithm to achieve the sparsest representation of vectors. Since the signal energy, unlike the noise energy, is concentrated on a small dataset by transforming into the PCA domain, the signal and noise can be well distinguished. The proposed algorithm was implemented in a MATLAB environment and its performance was evaluated on some standard grayscale images under different levels of standard deviations of white Gaussian noise by means of peak signal-to-noise ratio, structural similarity indexes, and visual effects. The experimental results demonstrate that the proposed denoising algorithm achieves significant improvement compared to dual-tree complex discrete wavelet transform and K-singular value decomposition image denoising methods. It also obtains competitive results with the block-matching and 3D filtering method, which is the current state-of-the-art for image denoising.
基于稀疏表示和主成分分析的图像去噪
提出了一种基于稀疏表示和主成分分析的图像去噪算法。该算法包括以下步骤。首先,将噪声图像分成重叠的【公式:见文】块。其次,将离散余弦变换应用于由重叠块创建的向量的稀疏表示的字典。稀疏向量的计算采用正交匹配追踪算法。然后,通过PCA算法更新字典,实现向量的最稀疏表示。由于信号能量与噪声能量不同,通过变换到PCA域,信号能量集中在一个小数据集上,因此可以很好地区分信号和噪声。在MATLAB环境下实现了该算法,并通过峰值信噪比、结构相似度指标和视觉效果对不同高斯白噪声标准偏差下的标准灰度图像进行了性能评价。实验结果表明,与双树复离散小波变换和k奇异值分解图像去噪方法相比,所提出的去噪算法取得了显著的改进。该方法与当前图像去噪最先进的分块匹配和三维滤波方法相比,也取得了相当的效果。
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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