基于形状信息的模糊图像分割

Mohammed Ameer Ali, G. Karmakar, L. Dooley
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引用次数: 4

摘要

任何聚类算法的结果都对限制其泛化的特征高度敏感,因此提供了将形状信息集成到算法中的强烈动机。现有的基于模糊形状的聚类算法只考虑圆形和椭圆形的形状信息,因此不能很好地分割任意形状的物体。为了解决这一问题,本文引入了一种基于形状的模糊图像分割算法——基于形状信息的模糊图像分割(FISS)。定性和定量分析都证明了新的FISS算法与其他已建立的基于形状的模糊聚类算法(包括Gustafson-Kessel、环形聚类、圆形聚类、c椭球壳聚类和椭圆环形聚类)相比具有优越性。
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Fuzzy image segmentation using shape information
Results of any clustering algorithm are highly sensitive to features that limit their generalization and hence provide a strong motivation to integrate shape information into the algorithm. Existing fuzzy shape-based clustering algorithms consider only circular and elliptical shape information and consequently do not segment well, arbitrary shaped objects. To address this issue, this paper introduces a new shape-based algorithm, called fuzzy image segmentation using shape information (FISS) by incorporating general shape information. Both qualitative and quantitative analysis proves the superiority of the new FISS algorithm compared to other well-established shape-based fuzzy clustering algorithms, including Gustafson-Kessel, ring-shaped, circular shell, c-ellipsoidal shells and elliptic ring-shaped clusters.
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