Key feature extraction for probabilistic categorization of human motion patterns

W. Takano, H. Tanie, Y. Nakamura
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引用次数: 10

Abstract

Mimesis is a hypothesis that human intelligence originated where motion recognition and motion generation interact through imitation. We previously proposed the mathematical model of mimesis using hidden Markov models (HMM) and constructed the proto symbol space from parameters of each HMM. The proto symbol space included only 10 motion patterns. No attention was paid on the relationship between behavior pattern and parts of body. It is common that a human observer pays an attention to the relationship between the parts of body and the behaviors recognizing performer's behavior pattern. In this paper, we discuss key feature extraction from a rich database of behavior patterns based on probabilistic categorization among HMMs. The method is also applied to extract body parts that characterize behavior patterns
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人体运动模式概率分类的关键特征提取
模仿是一种假设,认为人类智能起源于运动识别和运动生成通过模仿相互作用。在此基础上,我们提出了隐马尔可夫模型(HMM)模拟的数学模型,并利用每个隐马尔可夫模型的参数构造了原型符号空间。原型符号空间仅包含10种运动模式。行为模式与身体部位的关系未得到重视。人类观察者关注身体部位与行为之间的关系,识别表演者的行为模式是很常见的。在本文中,我们讨论了基于概率分类的hmm行为模式丰富数据库的关键特征提取。该方法还可用于提取表征行为模式的身体部位
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