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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >HIDDEN MARKOV MODELS FOR MODELING AND RECOGNIZING GESTURE UNDER VARIATION
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HIDDEN MARKOV MODELS FOR MODELING AND RECOGNIZING GESTURE UNDER VARIATION

机译:隐藏的马尔可夫模型在变化下的建模和识别

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摘要

Conventional application of hidden Markov models to the task of recognizing human gesture may suffer from multiple sources of systematic variation in the sensor outputs. We present two frameworks based on hidden Markov models which are designed to Model and recognize gestures that vary in systematic ways. In the first, the systematic Variation is assumed to be communicative in nature, and the input gesture is assumed To belong to gesture family. The variation across the family is modeled explicitly by the Parametric hidden Markov model (PHMM). In the second framework, variation in the Signal is overcome by relying on online learning rather than conventional offline, batch Learning.
机译:隐马尔可夫模型在识别人手势的任务上的常规应用可能会受到传感器输出中系统变化的多种来源的影响。我们提出了两个基于隐马尔可夫模型的框架,这些框架旨在建模和识别以系统方式变化的手势。首先,假定系统变体本质上是可交流的,并且假定输入手势属于手势族。通过隐式马尔可夫参数化模型(PHMM)可以显式地建模整个族的变化。在第二个框架中,信号的变化通过依靠在线学习而不是传统的离线批量学习来克服。

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