首页> 外文会议>Robotics and Automation, 1993. Proceedings., 1993 IEEE International Conference on >Hidden Markov model approach to skill learning and its application in telerobotics
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Hidden Markov model approach to skill learning and its application in telerobotics

机译:隐马尔可夫模型的技能学习方法及其在机器人领域的应用

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The problem of how human skill can be represented as a parametric model using a hidden Markov (HMM), and how an HMM-based skill model can be used to learn human skill, is discussed. The HMM is feasible for characterizing two stochastic processes, measurable action and immeasurable mental states that are involved in the skill learning. Based on the most likely performance criterion, the best action sequence can be selected from previously measured action data by modeling the skill as an HMM. This selection process can be updated in real-time by feeding new action data and modifying HMM parameters. The implementation of the proposed method in a teleoperation-controlled space robot is discussed. The results demonstrate the feasibility of the method.
机译:讨论了如何使用隐马尔可夫(HMM)将人类技能表示为参数模型,以及如何将基于HMM的技能模型用于学习人类技能的问题。 HMM可用于表征技能学习中涉及的两个随机过程,即可测量的动作和不可测量的心理状态。基于最可能的绩效标准,可以通过将技能建模为HMM来从先前测得的动作数据中选择最佳动作序列。通过输入新的动作数据并修改HMM参数,可以实时更新此选择过程。讨论了该方法在遥操作太空机器人中的实现。结果证明了该方法的可行性。

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