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

机译:有限组直方图之间的基于准确的基于HMM的相似度量

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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 isthen 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.
机译:直方图分析如今,有利于兴趣,并且很多工作还是解决了这项任务。在大多数现有方法中,直方图被操纵为简单的载体或作为统计分布。结果,大多数考虑直方图的箱子值,并且通常忽略直方图视觉形状。在本文中,隐藏的Markov模型(HMMS)与有限组直方图相关联,以捕获它们的直方格值和这些集合中包含的直方图的可视形状,而不管其箱尺寸如何。这些HMMS之间的相似率是用于比较两个有限组直方图。在机器学习内部和超越机器学习中的几个领域进行了实验,拟议的方法表现出相关的表现,这表现了在数据库GTZAN +和Corel的分层分类中表现出现有的工作。

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