Arleo A, Gerstner W
Centre for Neuro-Mimetic Systems, MANTRA, Swiss Federal Institute of Technology Lausanne, EPFL, Switzerland.
Biol Cybern. 2000 Sep;83(3):287-99. doi: 10.1007/s004220000171.
A computational model of hippocampal activity during spatial cognition and navigation tasks is presented. The spatial representation in our model of the rat hippocampus is built on-line during exploration via two processing streams. An allothetic vision-based representation is built by unsupervised Hebbian learning extracting spatio-temporal properties of the environment from visual input. An idiothetic representation is learned based on internal movement-related information provided by path integration. On the level of the hippocampus, allothetic and idiothetic representations are integrated to yield a stable representation of the environment by a population of localized overlapping CA3-CA1 place fields. The hippocampal spatial representation is used as a basis for goal-oriented spatial behavior. We focus on the neural pathway connecting the hippocampus to the nucleus accumbens. Place cells drive a population of locomotor action neurons in the nucleus accumbens. Reward-based learning is applied to map place cell activity into action cell activity. The ensemble action cell activity provides navigational maps to support spatial behavior. We present experimental results obtained with a mobile Khepera robot.
本文提出了一种在空间认知和导航任务期间海马体活动的计算模型。我们大鼠海马体模型中的空间表征是在探索过程中通过两个处理流在线构建的。基于视觉输入的他感视觉表征是通过无监督赫布学习从视觉输入中提取环境的时空属性而构建的。基于路径整合提供的内部运动相关信息学习自身感受表征。在海马体层面,他感和自身感受表征通过一群局部重叠的CA3-CA1位置场进行整合,以产生稳定的环境表征。海马体空间表征被用作目标导向空间行为的基础。我们关注连接海马体和伏隔核的神经通路。位置细胞驱动伏隔核中的一群运动动作神经元。基于奖励的学习用于将位置细胞活动映射到动作细胞活动。集合动作细胞活动提供导航图以支持空间行为。我们展示了使用移动Khepera机器人获得的实验结果。