A Neuromorphic Processing System for Low-Power Wearable ECG Classification

This paper proposes a neuromorphic processing system and its classifier design for always-on wearable electrocardiogram (ECG) classification. The ECG signal is captured by level crossing (LC) sampling yielding single-bit temporal coding that can be natively fed into a spiking neural network (SNN) in...

Full description

Saved in:
Bibliographic Details
Published in2021 IEEE Biomedical Circuits and Systems Conference (BioCAS) pp. 1 - 5
Main Authors Chu, Haoming, Jia, Hao, Yan, Yulong, Jin, Yi, Qian, Liyu, Gan, Leijing, Huan, Yuxiang, Zheng, Lirong, Zou, Zhuo
Format Conference Proceeding
LanguageEnglish
Published IEEE 07.10.2021
Subjects
Online AccessGet full text
DOI10.1109/BioCAS49922.2021.9644939

Cover

Loading…
More Information
Summary:This paper proposes a neuromorphic processing system and its classifier design for always-on wearable electrocardiogram (ECG) classification. The ECG signal is captured by level crossing (LC) sampling yielding single-bit temporal coding that can be natively fed into a spiking neural network (SNN) in an event-driven manner. Such an architecture simplifies the quantization of analog-to-digital converter (ADC) and bypasses the coding processing for SNN. Thus, the system power can be reduced by simplified data conversion architecture, single-bit data representation for input data reduction, and spare processing of SNN. Spatio-temporal backpropagation (STBP) training is optimized to adapt to the LC-based data representation and mitigate the firing rate, thus increase network sparsity. The system-level design of the hardware architecture consisting of an LC-ADC and an SNN processor is evaluated by Simulink-ModelSim co-simulation. Trained with the MIT-BIH database, the proposed system achieves 95.34% in classification accuracy with an average of 79 sampling points and 24.6 kFLOPs per inference, corresponding to 55.9 × and 42.4 x reduction on sampling data and FLOPs per inference respectively, compared with conventional ADC and artificial neural network (ANN) approaches.
DOI:10.1109/BioCAS49922.2021.9644939