Spike-Time-Dependent Encoding For Neuromorphic Processors

ACM Journal on Emerging Technologies in Computing Systems(2015)

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摘要
This article presents our research towards developing novel and fundamental methodologies for data representation using spike-timing-dependent encoding. Time encoding efficiently maps a signal's amplitude information into a spike time sequence that represents the input data and offers perfect recovery for band-limited stimuli. In this article, we pattern the neural activities across multiple timescales and encode the sensory information using time-dependent temporal scales. The spike encodingmethodologies for autonomous classification of time-series signatures are explored using near-chaotic reservoir computing. The proposed spiking neuron is compact, low power, and robust. A hardware implementation of these results is expected to produce an agile hardware implementation of time encoding as a signal conditioner for dynamical neural processor designs.
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关键词
Neuromorphic computing,neural encoding,analog neuron,spiking train,reservoir computing
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