Image Segmentation Using a Spatially Correlated Mixture Model with Gaussian Process Priors

Kosei Kurisu, N. Suematsu, Kazunori Iwata, A. Hayashi
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引用次数: 2

Abstract

Finite mixture modeling has been widely used for image segmentation. However, since it takes no account of the spatial correlation among pixels in its standard form, its segmentation accuracy can be heavily deteriorated by noise in images. To improve segmentation accuracy in noisy images, the spatially variant finite mixture model has been proposed, in which a Markov Random Filed (MRF) is used as the prior for the mixing proportions and its parameters are estimated using the Expectation-Maximization (EM) algorithm based on the maximum a posteriori (MAP) criterion. In this paper, we propose a spatially correlated mixture model in which the mixing proportions are governed by a set of underlying functions whose common prior distribution is a Gaussian process. The spatial correlation can be expressed with a Gaussian process easily and flexibly. Given an image, the underlying functions are estimated by using a quasi EM algorithm and used to segment the image. The effectiveness of the proposed technique is demonstrated by an experiment with synthetic images.
基于高斯过程先验的空间相关混合模型图像分割
有限混合建模已广泛应用于图像分割。然而,由于其标准形式没有考虑像素之间的空间相关性,因此图像中的噪声会严重降低其分割精度。为了提高噪声图像的分割精度,提出了一种空间变有限混合模型,该模型采用马尔科夫随机场(MRF)作为混合比例的先验,并采用基于最大后验(MAP)准则的期望最大化(EM)算法估计混合比例的参数。本文提出了一种空间相关混合模型,其中混合比例由一组共同先验分布为高斯过程的底层函数控制。空间相关性可以用高斯过程表示,方便灵活。给定图像,使用准EM算法估计底层函数并用于图像分割。通过对合成图像的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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