An automatic segmentation combining mixture analysis and adaptive region information: a level set approach

M. S. Allili, D. Ziou
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引用次数: 9

Abstract

In this paper, we propose a novel automatic framework for variational color image segmentation based on unifying adaptive region information and mixture modelling. We consider a formulation of the region information by using the posterior probability of a mixture of general Gaussian (GG) pdfs, where each region is represented by a pdf. The segmentation is formulated by the minimization of an energy functional according to the region contours and all the mixture parameters respectively. Two main objectives are achieved by the approach. A scheme is provided to extend easily the adaptive segmentation to an arbitrary number of regions and to perform it in a fully automatic fashion. Moreover, the segmentation recovers an accurate and representative mixture of pdfs. In the approach, we couple the boundary and region information of the image to steer the segmentation. We validate the method on the segmentation of real world color images.
结合混合分析和自适应区域信息的自动分割:一种水平集方法
本文提出了一种基于统一自适应区域信息和混合建模的彩色图像自动分割框架。我们通过使用一般高斯(GG) pdf混合的后验概率来考虑区域信息的公式,其中每个区域都由pdf表示。分割是根据区域轮廓和所有混合参数分别通过最小化能量函数来实现的。该方法实现了两个主要目标。提出了一种将自适应分割轻松扩展到任意数量的区域并以全自动方式执行的方案。此外,分割恢复了准确和有代表性的pdf混合。在该方法中,我们将图像的边界和区域信息耦合在一起来指导分割。在真实彩色图像的分割上对该方法进行了验证。
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