Reliable Computation in Noisy Backgrounds Using Real-Time Neuromorphic Hardware

Hsi-Ping Wang, E. Chicca, G. Indiveri, T. Sejnowski
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引用次数: 7

Abstract

Spike-time based coding of neural information, in contrast to rate coding, requires that neurons reliably and precisely fire spikes in response to repeated identical inputs, despite a high degree of noise from stochastic synaptic firing and extraneous background inputs. We investigated the degree of reliability and precision achievable in various noisy background conditions using real-time neuromorphic VLSI hardware which models integrate-and-fire spiking neurons and dynamic synapses. To do so, we varied two properties of the inputs to a single neuron, synaptic weight and synchrony magnitude (number of synchronously firing pre-synaptic neurons). Thanks to the realtime response properties of the VLSI system we could carry out extensive exploration of the parameter space, and measure the neurons firing rate and reliability in real-time. Reliability of output spiking was primarily influenced by the amount of synchronicity of synaptic input, rather than the synaptic weight of those synapses. These results highlight possible regimes in which real-time neuromorphic systems might be better able to reliably compute with spikes despite noisy input.
基于实时神经形态硬件的噪声背景下的可靠计算
与频率编码相比,基于峰值时间的神经信息编码要求神经元可靠而精确地响应重复的相同输入,尽管随机突触放电和外来背景输入的噪声很高。我们研究了在各种噪声背景条件下,使用实时神经形态VLSI硬件实现的可靠性和精度,该硬件模拟了集成和发射尖峰神经元和动态突触。为此,我们改变了单个神经元输入的两个属性,突触权重和同步幅度(同步发射突触前神经元的数量)。由于超大规模集成电路系统的实时响应特性,我们可以对参数空间进行广泛的探索,并实时测量神经元的放电速率和可靠性。输出峰值的可靠性主要受突触输入的同步性数量的影响,而不是受这些突触的突触权重的影响。这些结果突出了实时神经形态系统在有噪声输入的情况下能够更好地可靠地计算峰值的可能机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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