Multicriteria fuzzy clustering for brain image segmentation

Olfa Limam, F. Ben Abdelaziz
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引用次数: 8

Abstract

One of the most challenging task in image analysis is to identify correctly tissues where boundaries are generally not clear. Fuzzy clustering is supposed to be the most appropriate to model this situation in applications such as tissue classification, tumor detection. While, image segmentation using fuzzy clustering technique classifies correctly pixels of an image with a great extent of accuracy [1], recent works have shown that fuzzy clustering techniques considers a single objective may not provide a good result since no single validity measure works well on different kinds of data sets. Moreover, a wrong choice of a validity measure leads to poor results [2]. In this paper, we introduce a multiobjective fuzzy clustering approach producing a set of Pareto solutions among which the best solution, based on I-index validation measure, is chosen to be the final clustering solution. First, a spatial information is considered to deal more effectively with the noise and intensity inhomogeneities introduced in imaging process. Second, we propose to use a variable string length encoding technique to automatically identify the number of clusters, given that it does not require a prior knowledge about number of clusters present in a data set. Therefore, an initializing method based on a center approximation approach is proposed to accelerate the clustering process and make results more robust. Applied to normal and multiple sclerosis lesion magnetic resonance image brain images, our method shows better performance than competing algorithms.
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多准则模糊聚类脑图像分割
图像分析中最具挑战性的任务之一是正确识别边界通常不清楚的组织。在组织分类、肿瘤检测等应用中,模糊聚类被认为是最适合模拟这种情况的方法。虽然使用模糊聚类技术的图像分割能够以很高的精度对图像的像素进行正确分类[1],但最近的研究表明,模糊聚类技术考虑单一目标可能无法提供良好的结果,因为没有单一的有效性度量可以很好地适用于不同类型的数据集。此外,效度测量的选择错误会导致结果不佳[2]。本文引入一种多目标模糊聚类方法,生成一组Pareto解,并根据i -指标验证度量选择其中的最优解作为最终聚类解。首先,考虑空间信息可以更有效地处理成像过程中引入的噪声和强度不均匀性。其次,我们建议使用可变字符串长度编码技术来自动识别簇的数量,因为它不需要关于数据集中存在的簇数量的先验知识。为此,提出了一种基于中心逼近的初始化方法,以加快聚类过程,提高聚类结果的鲁棒性。将该方法应用于正常和多发性硬化症病变的脑磁共振图像中,结果表明该方法的性能优于同类算法。
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