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A Cortical Column Model for Multiscale Spatial Planning

机译:多尺度空间规划的皮质柱模型

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摘要

An important issue in spatial memory is the learning of abstract representations suitable for navigation planning. To address this problem, we have already developed a planning system inspired by the columnar organization of the mammalian cortex [1]. This model provides a neuromimetic architecture capable of learning topological spatial representations and planning goal-directed actions. The work presented here deals with the ability to encode multiscale representations of the environment, in order to solve large maze tasks. This is shown by validating the model on a multiscale version of the Tolman & Honzik's detour task [2]. Simulation results demonstrate that the performances of the planning system are invariant with respect to the scale of the maze. A series of statistical analyses is provided to characterise the neural activities subserving spatial planning. It is shown that the structural properties of the environment are encoded by the discharges of the location-selective neurones of the model. Complementing this purely spatial coding, the activity of another class of neurones in the model integrates both spatial and reward-dependent information suitable for navigation planning.
机译:空间记忆中的一个重要问题是学习适用于导航计划的抽象表示。为了解决这个问题,我们已经开发了一个受哺乳动物皮质柱状组织启发的规划系统[1]。该模型提供了一种模仿神经的体系结构,该体系结构能够学习拓扑空间表示并计划目标定向的动作。这里提出的工作涉及对环境的多尺度表示进行编码的能力,以解决大型迷宫任务。通过在Tolman&Honzik绕行任务的多尺度版本上验证模型可以证明这一点[2]。仿真结果表明,规划系统的性能相对于迷宫的规模是不变的。提供了一系列统计分析,以表征符合空间规划的神经活动。结果表明,环境的结构特性由模型的位置选择神经元的放电编码。作为这种纯粹的空间编码的补充,模型中另一类神经元的活动整合了适合导航计划的空间信息和依赖奖励的信息。

著录项

  • 来源
    《From animals to animats 11》|2010年|p.347-358|共12页
  • 会议地点 Paris(FR);Paris(FR)
  • 作者单位

    CNRS - UPMC Univ Paris 6, UMR 7102, F-75005, Paris, France,CNRS - UPMC Univ Paris 6, UMR 7222, F-75005, Paris, France;

    CNRS - UPMC Univ Paris 6, UMR 7102, F-75005, Paris, France;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 仿生学;
  • 关键词

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