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Artificial Cognitive Systems: From VLSI Networks of Spiking Neurons to Neuromorphic Cognition

机译:人工认知系统:从尖峰神经元的VLSI网络到神经形态认知

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摘要

Neuromorphic engineering (NE) is an emerging research field that has been attempting to identify neural types of computational principles, by implementing biophysically realistic models of neural systems in Very Large Scale Integration (VLSI) technology. Remarkable progress has been made recently, and complex artificial neural sensory-motor systems can be built using this technology. Today, however, NE stands before a large conceptual challenge that must be met before there will be significant progress toward an age of genuinely intelligent neuromorphic machines. The challenge is to bridge the gap from reactive systems to ones that are cognitive in quality. In this paper, we describe recent advancements in NE, and present examples of neuromorphic circuits that can be used as tools to address this challenge. Specifically, we show how VLSI networks of spiking neurons with spike-based plasticity mechanisms and soft winner-take-all architectures represent important building blocks useful for implementing artificial neural systems able to exhibit basic cognitive abilities.
机译:神经形态工程(NE)是一个新兴的研究领域,一直在尝试通过在超大规模集成(VLSI)技术中实现神经系统的生物物理现实模型来确定计算原理的神经类型。最近已经取得了显着进展,并且可以使用该技术构建复杂的人工神经感觉运动系统。然而,今天,NE面临着一个巨大的概念挑战,在迈向真正智能的神经形态机器时代之前,必须取得重大进展。挑战是弥合反应系统与质量认知系统之间的差距。在本文中,我们描述了NE的最新进展,并介绍了可以用作应对这一挑战的工具的神经形态电路的示例。具体而言,我们展示了具有基于尖峰的可塑性机制和柔和的获胜者通吃结构的尖刺神经元的VLSI网络如何代表重要的构建模块,这些模块对于实现能够表现出基本认知能力的人工神经系统很有用。

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