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Learning a musical sequence by observation: A robotics implementation of a dynamic neural field model

机译:通过观察学习音乐序列:动态神经场模型的机器人实现

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We tested in a robotics experiment a dynamic neural field model for learning a precisely timed musical sequence. Based on neuro-plausible processing mechanisms, the model implements the idea that order and relative timing of events are stored in an integrated representation whereas the onset of sequence production is controlled by a separate process. Dynamic neural fields provide a rigorous theoretical framework to analyze and implement the necessary neural computations that bridge gaps between sensation and action in order to mediate working memory, action planing, and decision making. The robot first memorizes a short musical sequence performed by a human teacher by watching color coded keys on a screen, and then tries to execute the piece of music on a keyboard from memory without any external cues. The experimental results show that the robot is able to correct in very few demonstration-execution cycles initial sequencing and timing errors.
机译:我们在机器人实验中测试了动态神经场模型,以学习精确定时的音乐序列。基于神经合理的处理机制,该模型实现了这样的想法,即事件的顺序和相对计时以集成表示形式存储,而序列产生的开始则由单独的过程控制。动态神经场提供了严格的理论框架来分析和实施必要的神经计算,以弥合感觉与动作之间的鸿沟,从而介导工作记忆,动作计划和决策制定。机器人首先通过观看屏幕上的彩色编码键来记住人类教师执行的简短音乐序列,然后尝试在没有任何外部提示的情况下从内存中执行键盘上的音乐。实验结果表明,该机器人能够在极少的演示执行周期内纠正初始排序和时序错误。

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