An accurate HMM-based similarity measure between finite sets of histograms

被引:0
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作者
Sylvain Iloga
Olivier Romain
Maurice Tchuenté
机构
[1] University of Maroua,Higher Teachers’ Training College, Department of Computer Science
[2] University of Cergy-Pontoise,UMR 8051, ETIS Laboratory, CNRS, ENSEA
[3] University of Yaoundé 1,IRD UMI 209, UMMISCO
来源
关键词
Histogram comparison; Hidden Markov models; Color image comparison; Comparison of function curves; Automatic taxonomy generation; Hierarchical classification; Text document comparison;
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学科分类号
摘要
Histogram analysis has nowadays gain in interest, and a lot of work yet address this task. In most of the existing approaches, histograms are manipulated as simple vectors or as statistic distributions. As a consequence, only the bin values of the histograms are mostly considered and the histograms visual shapes are generally neglected. In this paper, hidden Markov models (HMMs) are associated with finite sets of histograms to capture both: the bin values and the visual shapes of the histograms contained in these sets, regardless of their bin sizes. The similarity rate between these HMMs is then used to compare two finite sets of histograms. Experimented in several areas within and beyond machine learning, the proposed approach exhibited relevant performances which outperformed the existing work in the hierarchical classification of the databases GTZAN+ and Corel.
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页码:1079 / 1104
页数:25
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