Litcius/Paper detail

T2FSNN: Deep Spiking Neural Networks with Time-to-first-spike Coding

Seongsik Park, Seijoon Kim, Byunggook Na, Sungroh Yoon

202017 citationsDOIOpen Access PDF

Abstract

Spiking neural networks (SNNs) have gained considerable interest due to their energy-efficient characteristics, yet lack of a scalable training algorithm has restricted their applicability in practical machine learning problems. The deep neural network-to-SNN conversion approach has been widely studied to broaden the applicability of SNNs. Most previous studies, however, have not fully utilized spatio-temporal aspects of SNNs, which has led to inefficiency in terms of number of spikes and inference latency. In this paper, we present T2FSNN, which introduces the concept of time-to-first-spike coding into deep SNNs using the kernel-based dynamic threshold and dendrite to overcome the aforementioned drawback. In addition, we propose gradient-based optimization and early firing methods to further increase the efficiency of the T2FSNN. According to our results, the proposed methods can reduce inference latency and number of spikes to 22% and less than 1%, compared to those of burst coding, which is the state-of-the-art result on the CIFAR-100.

Topics & Concepts

Spiking neural networkComputer scienceInferenceArtificial intelligenceDeep neural networksScalabilityDeep learningArtificial neural networkLatency (audio)Machine learningInefficiencyPattern recognition (psychology)MicroeconomicsDatabaseEconomicsTelecommunicationsAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesNeural dynamics and brain function