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FPGA implementation of a modified FitzHugh-Nagumo neuron based causal neural network for compact internal representation of dynamic environments

机译:改进的基于FitzHugh-Nagumo神经元的因果神经网络的FPGA实现,用于动态环境的紧凑内部表示

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Animals for surviving have developed cognitive abilities allowing them an abstract representation of the environment. This internal representation (IR) may contain a huge amount of information concerning the evolution and interactions of the animal and its surroundings. The temporal information is needed for IRs of dynamic environments and is one of the most subtle points in its implementation as the information needed to generate the IR may eventually increase dramatically. Some recent studies have proposed the compaction of the spatiotemporal information into only space, leading to a stable structure suitable to be the base for complex cognitive processes in what has been called Compact Internal Representation (CIR). The Compact Internal Representation is especially suited to be implemented in autonomous robots as it provides global strategies for the interaction with real environments. This paper describes an FPGA implementation of a Causal Neural Network based on a modified FitzHugh-Nagumo neuron to generate a Compact Internal Representation of dynamic environments for roving robots, developed under the framework of SPARK and SPARK II European project, to avoid dynamic and static obstacles
机译:存活的动物已发展出认知能力,使它们可以抽象地表达环境。内部表示(IR)可能包含有关动物及其周围环境的进化和相互作用的大量信息。动态环境的IR需要时间信息,它是实现中最微妙的点之一,因为生成IR所需的信息最终可能会急剧增加。最近的一些研究提出将时空信息压缩到仅空间中,从而形成一种稳定的结构,该结构适合作为所谓的紧凑内部表示(CIR)中复杂的认知过程的基础。紧凑型内部表示特别适合在自主机器人中实现,因为它提供了与实际环境进行交互的全局策略。本文描述了一种基于因果神经网络的FPGA实现,该神经网络基于改进的FitzHugh-Nagumo神经元生成了巡回机器人动态环境的紧凑内部表示形式,该框架是在SPARK和SPARK II欧洲项目的框架下开发的,以避免动态和静态障碍

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