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Cluster analysis and optimization in color-based clustering for image abstract
conference contribution
posted on 2007-01-01, 00:00 authored by J He, Guangyan HuangGuangyan Huang, Y Zhang, Y ShiCluster analysis has been identified as a core task in data mining. What constitutes a cluster, or a good clustering, may depend on the background of researchers and applications. This paper proposes two optimization criteria of abstract degree and fidelity in the field of image abstract. To satisfy the fidelity criteria, a novel clustering algorithm named Global Optimized Color-based DBSCAN Clustering (GOC-DBSCAN) is provided. Also, non-optimized local color information based version of GOC-DBSCAN, called HSV-DBSCAN, is given. Both of them are based on HSV color space. Clusters of GOC-DBSCAN are analyzed to find the factors that impact on the performance of both abstract degree and fidelity. Examples show generally the greater the abstract degree is, the less is the fidelity. It also shows GOC-DBSCAN outperforms HSV-DBSCAN when they are evaluated by the two optimization criteria. © 2007 IEEE.
History
Pagination
213-218Location
Omaha, NebraskaPublisher DOI
Start date
2007-10-28End date
2007-10-31ISSN
1550-4786ISBN-13
9780769530192ISBN-10
0769530192Language
engPublication classification
E Conference publication, E1.1 Full written paper - refereedCopyright notice
2007, IEEEEditor/Contributor(s)
[Unknown]Title of proceedings
ICDMW 2007: Proceedings of the 7th IEEE International Conference on Data MiningEvent
IEEE International Conference on Data Mining Workshops (7th : 2007 : Omaha, Nebraska)Publisher
IEEEPlace of publication
Piscataway, N.J.Series
IEEE International Conference on Data MiningUsage metrics
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