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Rough Possibilistic Type-2 Fuzzy C-Means clustering for MR brain image segmentation

机译:MR脑图像分割的粗糙可能2型模糊C均值聚类

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Pixel clustering in spectral domain is an important approach for the soft-tissue categorization of magnetic resonance (MR) brain images. In this regard, clustering algorithms based on type-1 fuzzy set theory are suitable for the overlapping partitions while the rough set based clustering algorithms deal with uncertainty and vagueness. However, additional degree of fuzziness makes the clustering more challenging for various subtle uncertainties and noisy data in the overlapping areas. Hence, this fact motivates us to propose a hybrid technique, called Rough Possibilistic Type-2 Fuzzy C-Means clustering with the integration of Random Forest. In the proposed method, possibilistic approach handles the noisy data better, whereas the other various uncertainties and inherent vagueness are taken care by type-2 fuzzy set and rough set theories. After clustering, it produces rough and crisp points. Thereafter, such crisp points are used to train the Random Forest classifier in order to classify the rough points for yielding better clustering solution. The performance of the proposed method has been demonstrated in comparison with several other recently proposed methods for MR brain image segmentation. Finally, superiority of the results produced by the proposed hybrid method has also been validated through statistical significance test. (C) 2016 Elsevier B.V. All rights reserved.
机译:频谱域中的像素聚类是磁共振(MR)脑图像的软组织分类的重要方法。在这方面,基于类型1模糊集理论的聚类算法适用于重叠分区,而基于粗糙集的聚类算法则处理不确定性和模糊性。但是,额外的模糊程度使聚类对于重叠区域中的各种细微不确定性和嘈杂数据更具挑战性。因此,这一事实促使我们提出一种混合技术,称为“随机可能的2型模糊C均值”聚类,并集成了随机森林。在该方法中,可能性方法可以更好地处理噪声数据,而其他各种不确定性和固有模糊性则由2型模糊集和粗糙集理论来处理。聚类后​​,它会产生粗糙和清晰的点。此后,这些脆点用于训练随机森林分类器,以便对粗糙点进行分类以产生更好的聚类解。与最近提出的其他几种MR脑图像分割方法相比,已证明了该方法的性能。最后,通过统计显着性检验也验证了所提出的混合方法产生的结果的优越性。 (C)2016 Elsevier B.V.保留所有权利。

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