首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Where neuroscience and dynamic system theory meet autonomous robotics: A contracting basal ganglia model for action selection.
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Where neuroscience and dynamic system theory meet autonomous robotics: A contracting basal ganglia model for action selection.

机译:当神经科学和动态系统理论与自主机器人相遇时:一种用于选择动作的收缩性基底神经节模型。

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摘要

Action selection, the problem of choosing what to do next, is central to any autonomous agent architecture. We use here a multi-disciplinary approach at the convergence of neuroscience, dynamical system theory and autonomous robotics, in order to propose an efficient action selection mechanism based on a new model of the basal ganglia. We first describe new developments of contraction theory regarding locally projected dynamical systems. We exploit these results to design a stable computational model of the cortico-baso-thalamo-cortical loops. Based on recent anatomical data, we include usually neglected neural projections, which participate in performing accurate selection. Finally, the efficiency of this model as an autonomous robot action selection mechanism is assessed in a standard survival task. The model exhibits valuable dithering avoidance and energy-saving properties, when compared with a simple if-then-else decision rule.
机译:动作选择是选择下一步做什么的问题,它是任何自治代理体系结构的核心。我们在神经科学,动力学系统理论和自主机器人技术的融合中采用多学科方法,以基于一种新的基底神经节模型提出一种有效的动作选择机制。我们首先描述关于局部投影动力系统的收缩理论的新发展。我们利用这些结果来设计皮质-基础-丘脑-皮质循环的稳定计算模型。基于最新的解剖数据,我们通常包括被忽略的神经投影,这些神经投影参与执行精确的选择。最后,在标准的生存任务中评估了该模型作为自主机器人动作选择机制的效率。与简单的if-then-else决策规则相比,该模型具有有价值的避免抖动和节能特性。

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