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Real time unsupervised learning of visual stimuli in neuromorphic VLSI systems

机译:神经形态VLSI系统中视觉刺激的实时无监督学习

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摘要

Neuromorphic chips embody computational principles operating in the nervous system, into microelectronic devices. In this domain it is important to identify computational primitives that theory and experiments suggest as generic and reusable cognitive elements. One such element is provided by attractor dynamics in recurrent networks. Point attractors are equilibrium states of the dynamics (up to fluctuations), determined by the synaptic structure of the network; a ‘basin’ of attraction comprises all initial states leading to a given attractor upon relaxation, hence making attractor dynamics suitable to implement robust associative memory. The initial network state is dictated by the stimulus, and relaxation to the attractor state implements the retrieval of the corresponding memorized prototypical pattern. In a previous work we demonstrated that a neuromorphic recurrent network of spiking neurons and suitably chosen, fixed synapses supports attractor dynamics. Here we focus on learning: activating on-chip synaptic plasticity and using a theory-driven strategy for choosing network parameters, we show that autonomous learning, following repeated presentation of simple visual stimuli, shapes a synaptic connectivity supporting stimulus-selective attractors. Associative memory develops on chip as the result of the coupled stimulus-driven neural activity and ensuing synaptic dynamics, with no artificial separation between learning and retrieval phases.
机译:神经形态芯片将在神经系统中运行的计算原理体现到微电子设备中。在这一领域,重要的是要确定理论和实验建议作为通用和可重复使用的认知元素的计算原语。这种元素是由递归网络中的吸引子动力学提供的。点吸引子是由网络的突触结构决定的动力学平衡状态(直至波动)。吸引力的“基础”包括所有初始状态,这些状态在松弛时会导致给定的吸引子,因此使吸引子动力学适合于实现强大的联想记忆。初始网络状态由刺激决定,放松到吸引子状态可实现相应存储的原型模式的恢复。在以前的工作中,我们证明了尖峰神经元和适当选择的固定突触的神经形态递归网络支持吸引子动力学。在这里,我们专注于学习:激活芯片上的突触可塑性并使用理论驱动的策略选择网络参数,结果表明,在反复呈现简单的视觉刺激之后,自主学习会形成支持刺激选择性吸引子的突触连接性。伴随着刺激驱动的神经活动和随之而来的突触动力学的结果,联想记忆在芯片上发展,在学习和检索阶段之间没有人为分离。

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