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Implementation of Unsupervised Statistical Methods for Low-Quality Iris Segmentation

机译:低质量虹膜分割无监督统计方法的实现

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In this paper, we explore the use of advanced statistical models for unsupervised segmentation of challenging eye images. A previous work has shown the superiority of Triplet Markov Field (TMF) over HMF for segmenting challenging eye region but TMF implementation is computationally very expensive. To enable faster processing while preserving performance, we investigate in this paper Hidden Markov Chain (HMC) and Pair wise Markov Chain (PMC). We developed novel adequate image scanning procedures and initialization steps for implementing these models and extensive experiments on challenging images of the ICE2005 database show that the use of HMC with the snail scan and Histogram Initialization enhances the quality of segmentation comparing to OSIRIS-V4 based on contour approach or TMF model.
机译:在本文中,我们探索使用高级统计模型对具有挑战性的眼图图像进行无监督分割。先前的工作表明,三重态马尔可夫场(TMF)在分割具有挑战性的眼部区域方面优于HMF,但TMF的实现在计算上非常昂贵。为了在保持性能的同时实现更快的处理,我们在本文中研究了隐马尔可夫链(HMC)和成对马尔可夫链(PMC)。我们开发了新颖的图像扫描程序以及用于实施这些模型的初始化步骤,并对ICE2005数据库的具有挑战性的图像进行了广泛的实验,结果表明,与基于轮廓的OSIRIS-V4相比,将HMC与蜗牛扫描和直方图初始化结合使用可提高分割质量方法或TMF模型。

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