Novel Initial Parameters Computation for EM algorithm-based Univariate Asymmetric Generalized Gaussian Mixture

A. Goumeidane, Nafaa Nacereddine
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Abstract

In histogram-based image segmentation, the Asymmetric Generalized Mixture Model (AGGMM) is a powerful tool to fit accurately the real images histograms by handling, among others, any asymmetry of the modes. However, the Expectation Maximization (EM) algorithm, used for the estimation of the mixture model parameters, is known to be very sensitive to starting conditions and can lead to erroneous segmentation results when the initialization is not adequate. In this paper, we propose a new method to initialize the AGGMM. This method is based on geometrical aspects of the histogram. First experimentations implying synthetic images generated by Asymmetric Generalized Mixture Distribution (AGGD) model, reveal a good recovering of the input mixture parameters when applying the proposed method. Second experimentations involving real-world images have shown, how the initial parameters computed by the proposed method permit to achieve better histogram fitting with less EM algorithm running time in comparison to other initialization methods.
基于EM算法的单变量非对称广义高斯混合物初始参数计算新方法
在基于直方图的图像分割中,非对称广义混合模型(AGGMM)是一种强大的工具,可以通过处理模型的不对称性来准确拟合真实图像的直方图。然而,用于混合模型参数估计的期望最大化(EM)算法对起始条件非常敏感,并且在初始化不充分时可能导致错误的分割结果。本文提出了一种初始化AGGMM的新方法。这种方法是基于直方图的几何方面。采用非对称广义混合分布(AGGD)模型生成的合成图像进行实验,结果表明该方法对输入混合参数有较好的恢复效果。涉及真实世界图像的第二个实验表明,与其他初始化方法相比,由所提出的方法计算的初始参数如何允许以更少的EM算法运行时间实现更好的直方图拟合。
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