Nonlinear Filtered Compressed Sensing Applied on Image De-noising

Jian Dong, Yang Ding, H. Kudo
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引用次数: 2

Abstract

In the present era, the need for studies on noise removal by image processing is still considerable. In this paper, we developed a compressed sensing (CS) based algorithm for image de-nosing. Optimization theory was utilized. A cost function consisting of data fidelity term and penalty term was proposed. The minimization of cost function was achieved by proximal minimization method. The advantage of the algorithm is two-fold. First, we embedded the filtering procedure into a CS framework. It enhanced the effectiveness of filtering strategy. As known, repetitive post filters make images blurred, but CS in the proposed algorithm could keep the image clarity while achieving noise depression. Second, selectivity of filter type, especially nonlinear filters, strengthened the effectiveness and practicability of CS. With increasing number of literatures revealing the failure of total variation (TV) method in processing images with rich details, the new algorithm could preserve image textures and object boundaries accurately. Convergence property of the novel algorithm was also proved by the de-nosing instance. Among the nonlinear filters, nonlocal weighted median filter based CS presented the best de-noising effectiveness. The algorithm is considered to have a potential application value in other image processing issues, such as image restoration and reconstruction.
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非线性滤波压缩感知在图像去噪中的应用
在当今时代,对图像处理去噪的研究仍有很大的需求。本文提出了一种基于压缩感知(CS)的图像去噪算法。运用最优化理论。提出了一种由数据保真度项和惩罚项组成的代价函数。采用最近邻最小法实现了代价函数的最小化。该算法的优点是双重的。首先,我们将过滤过程嵌入到CS框架中。提高了过滤策略的有效性。众所周知,重复的后期滤波会使图像模糊,但本文算法中的CS可以在保持图像清晰度的同时达到抑制噪声的目的。其次,滤波器类型的选择性,特别是非线性滤波器的选择性,增强了CS的有效性和实用性。随着越来越多的文献揭示全变分(TV)方法在处理丰富细节图像时的失败,新算法可以准确地保留图像纹理和目标边界。通过去噪实例验证了该算法的收敛性。在非线性滤波器中,基于CS的非局部加权中值滤波器的去噪效果最好。该算法被认为在其他图像处理问题,如图像恢复和重建中具有潜在的应用价值。
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