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Possibilistic clustering for shape recognitionClustering methods have been used extensively in computer vision and pattern recognition. Fuzzy clustering has been shown to be advantageous over crisp (or traditional) clustering in that total commitment of a vector to a given class is not required at each iteration. Recently fuzzy clustering methods have shown spectacular ability to detect not only hypervolume clusters, but also clusters which are actually 'thin shells', i.e., curves and surfaces. Most analytic fuzzy clustering approaches are derived from Bezdek's Fuzzy C-Means (FCM) algorithm. The FCM uses the probabilistic constraint that the memberships of a data point across classes sum to one. This constraint was used to generate the membership update equations for an iterative algorithm. Unfortunately, the memberships resulting from FCM and its derivatives do not correspond to the intuitive concept of degree of belonging, and moreover, the algorithms have considerable trouble in noisy environments. Recently, we cast the clustering problem into the framework of possibility theory. Our approach was radically different from the existing clustering methods in that the resulting partition of the data can be interpreted as a possibilistic partition, and the membership values may be interpreted as degrees of possibility of the points belonging to the classes. We constructed an appropriate objective function whose minimum will characterize a good possibilistic partition of the data, and we derived the membership and prototype update equations from necessary conditions for minimization of our criterion function. In this paper, we show the ability of this approach to detect linear and quartic curves in the presence of considerable noise.
Document ID
19930009039
Acquisition Source
Legacy CDMS
Document Type
Other
Authors
Keller, James M.
(Missouri Univ. Columbia, MO, United States)
Krishnapuram, Raghu
(Missouri Univ. Columbia, MO, United States)
Date Acquired
September 6, 2013
Publication Date
June 30, 1992
Publication Information
Publication: RICIS, Fuzzy Set Methods for Object Recognition in Space Applications
Subject Category
Computer Programming And Software
Accession Number
93N18228
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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