基于人类意图学习和推理的隐马尔可夫模型

Tingting Liu, Jiaole Wang, M. Meng
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引用次数: 4

摘要

为了有效地促进人与机器人的合作,机器人需要准确有效地识别人的意图。提前告诉机器人人类的意图可能非常适合于任务有限的静态环境。然而,在一个需要任务更新的动态环境中,教学前的方法不能满足不断变化的人类意图知识。人类的未知意图,如果没有事先被告知,机器人是无法理解的。这一问题限制了人与机器人在真实动态环境中的合作。在本文中,我们提出了一种人类意图学习和推理方法来提高机器人的直觉合作能力。一种不断发展的隐马尔可夫模型(EHMM)方法可以根据观察来学习和推断人类的意图。设计了十种不同构型的装配任务,并进行了仿真实验。已知的人类意图识别实验使用了四种装配构型,未知的人类意图学习和推理实验使用了六种装配构型。实验结果的准确性和鲁棒性证明了所提出的EHMM用于人类意图学习和推理的可行性。
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Evolving hidden Markov model based human intention learning and inference
To effectively facilitate human robot cooperation, human intention should be recognized by robot accurately and effectively. Teaching the robot human intentions in advance could be well suitable for a static environment with limited tasks. Nevertheless, in an dynamic environment that requires task update, the pre-teaching approach cannot satisfy the evolving knowledge of human intention. The unknown human intentions which have not been taught in advance, will not be understood by robot. This problem limits the human robot cooperation in a real dynamic environment. In this paper, we proposed a human intention learning and inference method to improve the intuitive cooperative capability of the robot. An evolving hidden Markov model (EHMM) approach has been developed to learn and infer human intentions according to the observation. Assembly tasks with ten different configurations have been designed and simulation experiments were carried out. Four assembly configurations have been used for known human intention recognition experiment and six configurations have been used for unknown human intention learning and inference experiment. The accurate and robust results obtained from the experiments have shown the feasibility of the proposed EHMM for human intention learning and inference.
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