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Learning joint representations for order and timing of perceptual-motor sequences: a dynamic neural field approach

机译:学习感知运动序列的顺序和时间的联合表示:动态神经场方法

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摘要

Many of our everyday tasks require the control of the serial order and the timing of component actions. Using the dynamic neural field (DNF) framework, we address the learning of representations that support the performance of precisely time action sequences. In continuation of previous modeling work and robotics implementations, we ask specifically the question how feedback about executed actions might be used by the learning system to fine tune a joint memory representation of the ordinal and the temporal structure which has been initially acquired by observation. The perceptual memory is represented by a self-stabilized, multi-bump activity pattern of neurons encoding instances of a sensory event (e.g., color, position or pitch) which guides sequence learning. The strength of the population representation of each event is a function of elapsed time since sequence onset. We propose and test in simulations a simple learning rule that detects a mismatch between the expected and realized timing of events and adapts the activation strengths in order to compensate for the movement time needed to achieve the desired effect. The simulation results show that the effector-specific memory representation can be robustly recalled. We discuss the impact of the fast, activation-based learning that the DNF framework provides for robotics applications.
机译:我们的许多日常任务都需要控制序列顺序和组件操作的时间。使用动态神经场(DNF)框架,我们致力于支持精确时间动作序列性能的表示形式的学习。在继续之前的建模工作和机器人技术的实现时,我们专门提出一个问题,即学习系统如何使用有关已执行动作的反馈来微调最初已通过观察获得的序数和时间结构的联合记忆表示。知觉记忆由神经元的自我稳定的多峰活动模式表示,该活动模式对指导序列学习的感觉事件(例如颜色,位置或音高)的实例进行编码。每个事件的总体表示强度是自序列开始以来经过的时间的函数。我们提出并在模拟中测试了一种简单的学习规则,该规则可检测事件的预期时间与实现时间之间的不匹配,并调整激活强度,以补偿实现所需效果所需的运动时间。仿真结果表明,可以特效地调用特定于效应子的记忆表示。我们讨论了DNF框架为机器人应用程序提供的基于激活的快速学习的影响。

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