Title :
A robust competitive clustering algorithm with applications in computer vision
Author :
Frigui, Hichem ; Krishnapuram, Raghu
Author_Institution :
Dept. of Electr. Eng., Memphis State Univ., TN, USA
fDate :
5/1/1999 12:00:00 AM
Abstract :
This paper addresses three major issues associated with conventional partitional clustering, namely, sensitivity to initialization, difficulty in determining the number of clusters, and sensitivity to noise and outliers. The proposed robust competitive agglomeration (RCA) algorithm starts with a large number of clusters to reduce the sensitivity to initialization, and determines the actual number of clusters by a process of competitive agglomeration. Noise immunity is achieved by incorporating concepts from robust statistics into the algorithm. RCA assigns two different sets of weights for each data point: the first set of constrained weights represents degrees of sharing, and is used to create a competitive environment and to generate a fuzzy partition of the data set. The second set corresponds to robust weights, and is used to obtain robust estimates of the cluster prototypes. By choosing an appropriate distance measure in the objective function, RCA can be used to find an unknown number of clusters of various shapes in noisy data sets, as well as to fit an unknown number of parametric models simultaneously. Several examples, such as clustering/mixture decomposition, line/plane fitting, segmentation of range images, and estimation of motion parameters of multiple objects, are shown
Keywords :
computer vision; fuzzy set theory; image recognition; noise; pattern clustering; statistical analysis; RCA; clustering/mixture decomposition; computer vision; constrained weights; initialization sensitivity; line/plane fitting; motion parameter estimation; noise immunity; noise sensitivity; outlier sensitivity; parametric models; partitional clustering; range image segmentation; robust competitive clustering algorithm; robust statistics; Clustering algorithms; Fuzzy sets; Image segmentation; Multi-stage noise shaping; Noise robustness; Parametric statistics; Partitioning algorithms; Prototypes; Shape measurement; Working environment noise;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on