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Learning of Motor Control from Motor Babbling * * This research is supported by CREST, JST.

机译:从Motor Babbling学习电机控制 * < ce:footnote id =“ fn1”> * 这项研究得到了CREST,JST的支持。

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Abstract: Human intelligence is deeply dependent on its physical embodiment, and its development requires interaction between its own body and surrounding environment. However, it is still an open problem that how we can integrate the lower level motor control and a higher level symbol manipulation system. One of our research goals is to make a computational model of human intelligence from the motor control to the higher level symbol manipulation. To this end, we propose a robot motor control learning as the first step in this paper. The method is based on HMMs (Hidden Markov Models). The robot moves its arm randomly by changing torques of joint angles and obtains the pose of its arm. The HMM uses state space for representing the relationship between joint torques and pose of the arm by segmenting the obtained sensory-motor information autonomously. The robot can gradually learn to move its arm to a specific position by planning the torque sequence using the learned model. Moreover, we also discuss a future plan for the ultimate goal. We are planning to probabilistically integrate the proposed motor control HMM and the language acquisition model, which has already been proposed by the authors. In this paper, we describe an overview of the integrated model with some important building blocks for our future plan.
机译:摘要:人类的智能高度依赖于其物理表现,其发展需要其自身的身体与周围环境之间的相互作用。但是,如何集成较低级别的电机控制和较高级别的符号操纵系统仍然是一个悬而未决的问题。我们的研究目标之一是建立从电机控制到高级符号操纵的人类智能计算模型。为此,我们提出了机器人电机控制学习作为本文的第一步。该方法基于HMM(隐马尔可夫模型)。机器人通过改变关节角度的扭矩来随机移动手臂,并获得手臂的姿势。 HMM通过自动分割获得的感觉运动信息,使用状态空间来表示关节扭矩和手臂姿势之间的关系。通过使用学习的模型计划扭矩序列,机器人可以逐渐学习将其手臂移动到特定位置。此外,我们还讨论了最终目标的未来计划。我们正计划将作者提出的运动控制HMM和语言习得模型进行概率集成。在本文中,我们将对集成模型进行概述,并为我们的未来计划提供一些重要的构建基块。

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