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Encoding and Decoding Mixed Bandlimited Signals using Spiking Integrate-and-Fire Neurons

Authors :
Adam, Karen
Scholefield, Adam
Vetterli, Martin
Publication Year :
2019

Abstract

Conventional sampling focuses on encoding and decoding bandlimited signals by recording signal amplitudes at known time points. Alternately, sampling can be approached using biologically-inspired schemes. Among these are integrate-and-fire time encoding machines (IF-TEMs). They behave like simplified versions of spiking neurons and encode their input using spike times rather than amplitudes. Moreover, when multiple of these neurons jointly process a set of mixed signals, they form one layer in a feedforward spiking neural network. In this paper, we investigate the encoding and decoding potential of such a layer. We propose a setup to sample a set of bandlimited signals, by mixing them and sampling the result using different IF-TEMs. We provide conditions for perfect recovery of the set of signals from the samples in the noiseless case, and suggest an algorithm to perform the reconstruction.<br />Comment: To appear in ICASSP 2020. Code is available at https://github.com/karenadam/Multi-Channel-Time-Encoding

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.09413
Document Type :
Working Paper