Fuzzy Joint Gaussian-Impulsive Noise Removal Using Joint Distribution Modelling in Sparse Domain

V. Tallapragada, D. V. Reddy, V. SureshVarmaK.N.
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Abstract

Image denoising is trivial. It is considered that when multiple sources of noise act simultaneously such a task tends to be more critical. The distribution of resulting noise will possess irregular structure with heavy tail leading to fuzzy in detection and removal of noise from images. Most mixed noise removal schemes first detect the pixels with noise attack and then attempt to remove the noise. The proposed scheme is a single phase mechanism where the noise detection phase is absent. The proposed scheme uses sparse coding as a base and modifies the weight of the fidelity term so that the heavy tail of mixed noise distribution is approximated to Gaussian distribution. The simulation results prove the superiority of the proposed scheme using peak signal to noise ratio and feature similarity index. Results show that in the severe mixed noise case a PSNR improvement of 1% is achieved, whereas in the intermediate and little mixed noise cases a PSNR improvement of about 4% and 5% ae achieved.
基于稀疏域联合分布建模的模糊联合高斯-脉冲噪声去除
图像去噪是微不足道的。据认为,当多个噪声源同时作用时,这样的任务往往更为关键。产生的噪声分布具有不规则的结构和重尾,导致图像噪声的检测和去除变得模糊。大多数混合噪声去除方案首先检测有噪声攻击的像素,然后尝试去除噪声。提出的方案是一种没有噪声检测阶段的单相机制。该方案以稀疏编码为基础,修改保真度项的权重,使混合噪声分布的重尾近似于高斯分布。仿真结果证明了采用峰值信噪比和特征相似度指标的方法的优越性。结果表明,在严重混合噪声情况下,PSNR提高了1%,而在中度和轻度混合噪声情况下,PSNR分别提高了4%和5%左右。
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