探索加速神经形态平交adc调谐的信息论准则

A. Safa, Jonah Van Assche, C. Frenkel, A. Bourdoux, F. Catthoor, G. Gielen
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引用次数: 2

摘要

平交叉模数转换器(lc - adc)是一种神经形态的、事件驱动的数据转换器,在资源受限的应用中越来越受到关注,在这些应用中,智能传感必须在极端边缘提供,能源和面积预算紧张。lc - adc将现实世界的模拟信号(如ECG, EEG等)转换为稀疏的尖峰信号,与使用传统adc相比,提供显著的数据带宽减少,并在系统层面上节省高达两个数量级的面积和能耗。此外,lc - adc的尖峰特性使其成为超低功耗、事件驱动的尖峰神经网络(snn)的自然选择。尽管如此,LC-ADC尖峰信号的压缩特性可能会危及下游任务的性能,如信号分类精度,这对LC-ADC调谐参数高度敏感。在本文中,我们探讨了在模型选择理论中发现的用于LC-ADC参数调谐的流行信息准则的使用。我们通过实验证明,Bayesian、Akaike和修正的Akaike标准等信息度量可用于调整LC-ADC参数,以最大限度地提高下游SNN分类精度。我们在两种不同的生物信号分类任务上使用全分辨率权重和4位量化snn进行实验。我们相信我们的研究结果可以加速LC-ADC参数的调整,而无需诉诸于需要许多SNN训练通道的计算昂贵的网格搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Information-Theoretic Criteria to Accelerate the Tuning of Neuromorphic Level-Crossing ADCs
Level-crossing analog-to-digital converters (LC-ADCs) are neuromorphic, event-driven data converters that are gaining much attention for resource-constrained applications where intelligent sensing must be provided at the extreme edge, with tight energy and area budgets. LC-ADCs translate real-world analog signals (such as ECG, EEG, etc.) into sparse spiking signals, providing significant data bandwidth reduction and inducing savings of up to two orders of magnitude in area and energy consumption at the system level compared to the use of conventional ADCs. In addition, the spiking nature of LC-ADCs make their use a natural choice for ultra-low-power, event-driven spiking neural networks (SNNs). Still, the compressed nature of LC-ADC spiking signals can jeopardize the performance of downstream tasks such as signal classification accuracy, which is highly sensitive to the LC-ADC tuning parameters. In this paper, we explore the use of popular information criteria found in model selection theory for the tuning of the LC-ADC parameters. We experimentally demonstrate that information metrics such as the Bayesian, Akaike and corrected Akaike criteria can be used to tune the LC-ADC parameters in order to maximize downstream SNN classification accuracy. We conduct our experiments using both full-resolution weights and 4-bit quantized SNNs, on two different bio-signal classification tasks. We believe that our findings can accelerate the tuning of LC-ADC parameters without resorting to computationally-expensive grid searches that require many SNN training passes.
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