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Recognition of arm activities based on Hidden Markov Models for natural interaction with service robots

机译:基于隐马尔可夫模型的ARM活动认识到与服务机器人的自然互动

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This research presents a novel way of representing human motion and recognizing human activities from the skeleton output computed from RGB-D data from vision-based motion capture systems. The method uses a representation of the skeleton which is invariant to rotation and translation, based on Orthogonal Direction Change Chain Codes, as observations for a single Discrete Connected Hidden Markov Model formed by a set of multiple Hidden Markov Models for simple activities, which are merged using a grammar-based structure. The purpose of this research is to provide a service robot with the capability of human activity awareness, which can be used for action planning with implicit and indirect Human-Robot Interaction.
机译:该研究呈现了代表人类运动的新方法,并从基于视觉的运动捕获系统从RGB-D数据计算的骨架输出中识别人类活动。该方法使用基于正交方向改变链码的骨架的表示,其不变于旋转和转换,作为由一组多个隐藏的马尔可夫模型形成的单个离散连接的隐马尔可夫模型,用于简单的活动,这是合并的使用基于语法的结构。本研究的目的是提供一种服务机器人,具有人类活动意识的能力,可用于具有隐式和间接人机交互的行动规划。

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