Active Sensing of Visual and Tactile Stimuli by Brain-based Devices

A. Seth, J. McKinstry, G. Edelman, J. Krichmar
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引用次数: 27

Abstract

We describe the construction and performance of `brain-based devices? (BBDs), physical devices whose behaviour is controlled by simulated nervous systems modelled on vertebrate neuroanatomy and neurophysiology, that carry out perceptual categorization and selective conditioning to visual and textural stimuli. BBDs take input from the environment through on-board sensors including cameras, microphones and artificial whiskers, and take action based on experiential learning. BBDs have a large-scale neural simulation, a phenotype, a body plan, and the means to learn through autonomous exploration. Key neural mechanisms in the present BBDs include synaptic plasticity, reward or value systems, reentrant connectivity, the dynamic synchronization of neuronal activity, and neuronal units with spatiotemporal response properties. With our BBDs, as with animals, it is the interaction of these neural mechanisms with the sensorimotor correlations generated by active sensing and self motion that is responsible for adaptive behaviour. BBDs permit analysis of activity at all levels of the nervous system during behaviour, and as such they provide a rich source of heuristics for generating hypotheses regarding brain function. Moreover, by taking inspiration from systems neuroscience, BBDs provide a novel architecture for the design of neuromorphic systems.
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基于脑的设备对视觉和触觉刺激的主动感知
我们描述了“基于大脑的设备”的结构和性能。bbd是一种物理装置,其行为由模拟脊椎动物神经解剖学和神经生理学的模拟神经系统控制,对视觉和纹理刺激进行感知分类和选择性条件反射。bbd通过车载传感器(包括摄像头、麦克风和人造胡须)接收来自环境的输入,并根据体验式学习采取行动。bbd具有大规模的神经模拟,表型,身体计划以及通过自主探索学习的手段。当前bbd的主要神经机制包括突触可塑性、奖励或价值系统、可重入连通性、神经元活动的动态同步以及具有时空响应特性的神经元单元。与动物一样,我们的bbd是这些神经机制与主动感知和自我运动产生的感觉运动相关性的相互作用,这是适应性行为的原因。bbd允许分析行为过程中各级神经系统的活动,因此它们为产生关于大脑功能的假设提供了丰富的启发式来源。此外,通过从系统神经科学中获得灵感,bbd为神经形态系统的设计提供了一种新的架构。
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