Ensemble HMM Learning for Motion Retrieval with Non-linear PCA Dimensionality Reduction

Jian Xiang, Hongli Zhu
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引用次数: 5

Abstract

As commercial motion capture systems are widely used , more and more 3D motion database become available. In this paper, we presented a motion retrieval system based on ensemble HMM learning. First, 3D features are extracted. Due to high dimensionality of motion's features, then non-linear PCA and radial basis function (RBF) neural network for dimensionality reduction are used. At last each action class is learned with one HMM for motion analysis. Since ensemble learning can effectively enhance supervised learners, ensembles of weak HMM learners are built. Some experimental examples are given to demonstrate the effectiveness and efficiency of our methods.
非线性主成分降维运动检索的集成HMM学习
随着商业运动捕捉系统的广泛应用,越来越多的三维运动数据库应运而生。本文提出了一种基于集成HMM学习的运动检索系统。首先,提取三维特征。针对运动特征的高维性,采用非线性主成分分析和径向基函数(RBF)神经网络进行降维。最后用一个HMM学习每个动作类,进行动作分析。由于集成学习可以有效地增强监督学习器,因此构建了弱HMM学习器的集成。最后给出了一些实验实例,验证了该方法的有效性和高效性。
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