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Segmentation of Noisy Images Using the Rank M-Type L-Filter and the Fuzzy C-Means Clustering Algorithm

机译:使用Rank M型L滤波器和模糊C-Means聚类算法进行噪声图像的分割

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In this paper we present an image processing scheme to segment noisy images based on a robust estimator in the filtering stage and the standard Fuzzy C-Means (FCM) clustering algorithm to segment the images. The main objective of paper is to evaluate the performance of the Rank M-type L-filter with different influence functions and to establish a reference base to include the filter in the objective function of FCM algorithm in a future work. The filter uses the Rank M-type (RM) estimator in the scheme of L-filter, to get more robustness in the presence of different types of noises and a combination of them. Tests were made on synthetic and real images subjected to three types of noise and the results are compared with six reference modified Fuzzy C-Means methods to segment noisy images.
机译:在本文中,我们向基于滤波阶段中的鲁棒估计器和标准模糊C-METION(FCM)聚类算法进行分段的噪声图像来介绍一个图像处理方案,以分割图像。纸张的主要目的是评估等级M型L滤波器的性能与不同的影响功能,并建立参考基础,以包括在未来工作中FCM算法的目标函数中的过滤器。过滤器在L滤波器方案中使用Rank M型(RM)估计器,在存在不同类型的噪声和它们的组合的情况下获得更多的鲁棒性。在合成和真实图像上进行测试,经过三种类型的噪音,结果与六个参考改良模糊C-MEAR方法进行比较,以对噪声图像进行分段。

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