基于连续hmm的仿人运动知识获取与修正

Yuki Okuzawa, Shohei Kato, M. Kanoh, H. Itoh
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引用次数: 2

摘要

介绍了一种基于知识的仿人机器人运动生成模仿学习方法和一种基于运动知识学习和重用的仿人机器人运动生成系统。该系统由识别、学习和修改三部分组成。第一部分利用连续隐马尔可夫模型从运动知识库中识别指示运动。当运动被识别为不熟悉时,第二部分使用局部加权回归学习并获得运动的知识。当机器人识别出被指示的动作是熟悉的或判断其获得的知识适用于运动生成时,第三部分通过修改学习到的运动来模仿被指示的运动。本文报道了几种无线电体操动作的动作模仿的一些性能结果。
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Acquisition and modification of motion knowledge using continuous HMMs for motion imitation of humanoids
A knowledge-based approach to imitation learning of motion generation for humanoid robots and an imitative motion generation system based on motion knowledge learning and reuse are described. The system has three parts: recognizing, learning, and modifying parts. The first part recognizes an instructed motion distinguishing it from the motion knowledge database by the continuous hidden markov model. When the motion is recognized as being unfamiliar, the second part learns it using locally weighted regression and acquires a knowledge of the motion. When a robot recognizes the instructed motion as familiar or judges that its acquired knowledge is applicable to the motion generation, the third part imitates the instructed motion by modifying a learned motion. This paper reports some performance results: the motion imitation of several radio gymnastics motions.
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