Abstruct- Traditionally, prototype-based fuzzy clustering al-gorithms such as the Fuzzy C Means (FCM) algorithm have been used to find “compact ” or “filled ” clusters. Recently, there have been attempts to generalize such algorithms to the case of hollow or “shell-like ” clusters, i.e., clusters that lie in sub-spaces of feature space. The shell clustering approach provides a powerful means to solve the hitherto unsolved problem of simultaneously fitting multiple curveslsurfaces to unsegmented, scattered and sparse data. In this paper, we present several fuzzy and possibilistic algorithms to detect linear and quadric shell clusters. We also introduce generalizations of these algorithms in which the prototypes represent sets of higher-order...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
In this work we propose to use the Gustafson-Kessel (GK) algorithm within the PFCM (Possibilistic Fu...
AbstractFuzzy entropy clustering (FEC) is sensitive to noises the same as fuzzy c-means (FCM) cluste...
Abstruct- Shell clustering algorithms are ideally suited for computer vision tasks such as boundary ...
Clustering methods have been used extensively in computer vision and pattern recognition. Fuzzy clus...
Abstract-This paper proposes a simple, metaheuristic clustering technique, inspired by the mountain ...
In this paper, we introduce a new fuzzy clustering algorithm to detect an unknown number of planar a...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
The present book outlines a new approach to possibilistic clustering in which the sought clustering ...
Abstract. In this paper, we examine the performance of fuzzy clustering algorithms as the major tech...
Kernel based fuzzy clustering has been extensively used for pattern sets that have clusters that ove...
The paper deals with the problem of the fuzzy data clustering. In other words, objects attributes ca...
Kernel approaches call improve the performance of conventional Clustering or classification algorith...
The problem of computational efforts of a heuristic method of possibilistic clustering based on the...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
In this work we propose to use the Gustafson-Kessel (GK) algorithm within the PFCM (Possibilistic Fu...
AbstractFuzzy entropy clustering (FEC) is sensitive to noises the same as fuzzy c-means (FCM) cluste...
Abstruct- Shell clustering algorithms are ideally suited for computer vision tasks such as boundary ...
Clustering methods have been used extensively in computer vision and pattern recognition. Fuzzy clus...
Abstract-This paper proposes a simple, metaheuristic clustering technique, inspired by the mountain ...
In this paper, we introduce a new fuzzy clustering algorithm to detect an unknown number of planar a...
Fuzzy clustering is an approach using the fuzzy set theory as a tool for data grouping, which has ad...
This work focuses on clustering data affected by imprecision. The imprecision is managed by fuzzy se...
The present book outlines a new approach to possibilistic clustering in which the sought clustering ...
Abstract. In this paper, we examine the performance of fuzzy clustering algorithms as the major tech...
Kernel based fuzzy clustering has been extensively used for pattern sets that have clusters that ove...
The paper deals with the problem of the fuzzy data clustering. In other words, objects attributes ca...
Kernel approaches call improve the performance of conventional Clustering or classification algorith...
The problem of computational efforts of a heuristic method of possibilistic clustering based on the...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
In this work we propose to use the Gustafson-Kessel (GK) algorithm within the PFCM (Possibilistic Fu...
AbstractFuzzy entropy clustering (FEC) is sensitive to noises the same as fuzzy c-means (FCM) cluste...