Fisher-ratio-separability增强后验概率支持向量机二叉树在动作识别中的应用

Dongli Wang, Yanhua Wei, Yan Zhou, Tingrui Pei
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引用次数: 1

摘要

基于fisher比率类可分性测度,提出了两种基于二叉树结构的后验概率支持向量机(ppsvm)。第一种是PPSVM分类器的逆余二叉树(some-against-rest),在每个非叶节点上将一些类作为一个簇从其余类中分离出来。为了确定这两个簇,我们使用Fisher比率可分性度量。因此,第二种被提出的方法称为ppsvm的1 -against-rest二叉树(OBT),我们在每个非叶节点上仅从其他类中分离出可分性测度最大的一个类。然后,提供了SBT和OBT的流程。最后,我们考虑了基于深度图的人体动作识别问题。仿真结果表明,两种方法的分类精度均高于标准多类支持向量机和ppsvm。此外,由于采用了后验概率和Fisher比值可分性度量,该方法降低了决策复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fisher-ratio-separability boosted binary tree of posterior probability SVMs with application to action recognition
Based on fisher ratio class separability measure, we propose two types of posterior probability support vector machines (PPSVMs) using binary tree structure. The first one is a some-against-rest binary tree of PPSVM classifiers (SBT), for which some classes as a cluster are divided from the rest classes at each non-leaf node. To determine the two clusters, we use the Fisher ratio separability measure. Accordingly, the second proposed method termed one-against-rest binary tree of PPSVMs (OBT), we separate only one class with the largest separability measure from the rest classes at each non-leaf node. Then, the procedures of both SBT and OBT are provided. Finally, we consider the problem of human action recognition based on depth maps adopting both proposed approaches. Simulation results indicate both methods gain higher classifying accuracy than those of canonical multi-class SVMs and PPSVMs. Besides, the decision complexity of the proposed SBT and OBT are reduced because they use the posterior probability and the Fisher ratio separability measure.
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