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Sensitivity and Variability Analysis for Image Denoising Using Maximum Likelihood Estimation of Exponential Distribution

机译:基于指数分布最大似然估计的图像去噪敏感性和变异性分析

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摘要

In this paper, we have performed denoising when the pixel values of images are corrupted by Gaussian and Poisson noises. This paper introduces a new class exponential distribution which lies between Poisson and Gamma distributions. The proposed method combines the ion for denoising the pixels and later a minimization using log-likelihood estimation is performed. The characteristic equation is based on various image parameters like mean, variance, mean deviation, distortion index, shape and scale parameters for minimizing the noise and for maximizing image edge strength to enhance overall visual quality of the image. By utilizing the exponential distribution, we can adaptively control the distortion in the image by minimizing Gaussian and Poisson noises in accordance with the image feature. The simulation results indicate that the proposed algorithm is very efficient to strengthen edge information and remove noise. To provide a probabilistic model we have used statistical approximation of mean and variances. Later, we have evaluated sensitivity and variability effect as well on the image restoration. Experiments were conducted on different test images, which were corrupted by different noise levels in order to assess the performance of the proposed algorithm in comparison with standard and other related denoising methods.
机译:在本文中,当图像的像素值被高斯和泊松噪声破坏时,我们进行了去噪。本文介绍了一种介于Poisson和Gamma分布之间的新类指数分布。所提出的方法结合了用于去噪像素的离子,随后使用对数似然估计进行了最小化。该特征方程式基于各种图像参数,例如均值,方差,均值偏差,变形指数,形状和比例参数,以最大程度地降低噪声并最大化图像边缘强度以增强图像的整体视觉质量。通过利用指数分布,我们可以根据图像特征通过最小化高斯和泊松噪声来自适应地控制图像中的失真。仿真结果表明,该算法在增强边缘信息和消除噪声方面非常有效。为了提供概率模型,我们使用了均值和方差的统计近似值。后来,我们评估了灵敏度和可变性对图像恢复的影响。针对不同的测试图像进​​行了实验,这些图像被不同的噪声水平破坏,以便与标准方法和其他相关降噪方法进行比较来评估所提出算法的性能。

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