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Recognition and Synthesis of Human Movements by Parametric HMMs

机译:参数HMM对人体运动的识别与综合

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摘要

The representation of human movements for recognition and synthesis is important in many application fields such as: surveillance, human-computer interaction, motion capture, and humanoid robots. Hidden Markov models (HMMs) are a common statistical framework in this context, since they are generative and are able to deal with the intrinsic dynamic variation of movements performed by humans. In this work we argue that many human movements are parametric, i.e., a parametric variation of the movements in dependence of, e.g., a position a person is pointing at. The parameter is part of the semantic of a movement. And while classic HMMs treat them as noise, we will use parametric HMMs (PHMMs) [6,19] to model the parametric variability of human movements explicitly. In this work, we discuss both types of PHMMs, as introduced in [6] and [19] , and we will focus our considerations on the recognition and synthesis of human arm movements. Furthermore, we will show in various experiments the use of PHMMs for the control of a humanoid robot by synthesizing movements for relocating objects at arbitrary positions. In vision-based interaction experiments, PHMM are used for the recognition of pointing movements, where the recognized parameterization conveys to a robot the important information which object to relocate and where to put it. Finally, we evaluate the accuracy of recognition and synthesis for pointing and grasping arm movements and discuss that the precision of the synthesis is within the natural uncertainty of human movements.
机译:用于识别和合成的人体运动的表示在许多应用领域中都很重要,例如:监视,人机交互,运动捕捉和类人机器人。在这种情况下,隐马尔可夫模型(HMM)是常见的统计框架,因为它们具有生成性,并且能够处理人类运动的内在动态变化。在这项工作中,我们认为许多人体运动是参数化的,即,该运动的参数变化取决于例如一个人所指向的位置。参数是机芯语义的一部分。虽然经典的HMM将它们视为噪声,但我们将使用参数HMM(PHMM)[6,19]来对人体运动的参数变异性进行建模。在这项工作中,我们将讨论[6]和[19]中介绍的两种类型的PHMM,并且我们将把注意力集中在人类手臂运动的识别和合成上。此外,我们将在各种实验中展示通过综合移动物体在任意位置的运动,PHMM在人形机器人控制中的应用。在基于视觉的交互实验中,PHMM用于识别指向运动,其中识别出的参数设置将重要信息传递给机器人,该信息将重定位要放置的对象以及将对象放置在何处。最后,我们评估了指向和抓握手臂运动的识别和合成的准确性,并讨论了合成的精度在人类运动的自然不确定性之内。

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