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首页> 外文期刊>International Journal of Image, Graphics and Signal Processing >A Robust Skin Colour Segmentation Using Bivariate Pearson Type IIαα (Bivariate Beta) Mixture Model
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A Robust Skin Colour Segmentation Using Bivariate Pearson Type IIαα (Bivariate Beta) Mixture Model

机译:使用二元PearsonIIαα(二元Beta)混合模型进行稳健的肤色分割

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Probability distributions formulate the basic framework for developing several segmentation algorithms. Among the various segmentation algorithms, skin colour segmentation is one of the most important algorithms for human computer interaction. Due to various random factors influencing the colour space, there does not exist a unique algorithm which serve the purpose of all images. In this paper a novel and new skin colour segmentation algorithms is proposed based on bivariate Pearson type II mixture model since the hue and saturation values always lies between 0 and 1. The bivariate feature vector of the human image is to be modeled with a Pearson type II mixture (bivariate Beta mixture) model. Using the EM Algorithm the model parameters are estimated. The segmentation algorithm is developed under Bayesian frame. Through experimentation the proposed skin colour segmentation algorithm performs better with respect to segmentation quality metrics such as PRI, VOI and GCE. The ROC curves plotted for the system also revealed that the proposed algorithm can segment the skin colour more effectively than the algorithm with Gaussian mixture model for some images.
机译:概率分布为开发几种分割算法制定了基本框架。在各种分割算法中,肤色分割是人机交互最重要的算法之一。由于影响色彩空间的各种随机因素,因此不存在可以满足所有图像目的的独特算法。由于色相和饱和度值始终在0到1之间,因此本文提出了一种基于二元Pearson II型混合模型的新颖新颖的肤色分割算法。人像的二元特征向量将以Pearson型进行建模II混合(双变量Beta混合)模型。使用EM算法估计模型参数。分割算法是在贝叶斯框架下开发的。通过实验,提出的肤色分割算法在分割质量指标(例如PRI,VOI和GCE)方面表现更好。针对该系统绘制的ROC曲线还显示,与某些图像的高斯混合模型算法相比,该算法可以更有效地分割肤色。

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