Real-time HR Estimation from wrist PPG using Binary LSTMs

Leandro Mateus Giacomini Rocha, N. V. Helleputte, Muqing Liu, Dwaipayan Biswas, B. Verhoef, S. Bampi, C. Kim, C. Hoof, M. Konijnenburg, M. Verhelst
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引用次数: 9

Abstract

Wrist-worn photoplethysmography (PPG) sensors present a popular alternative to electrocardiogram recording for heart rate (HR) estimation. However, their accuracy is limited by motion artifacts inherent in ambulatory settings. In this paper, we propose a binarized neural network framework, b-CorNET, to efficiently estimate HR from single-channel wrist PPG signals during intense physical activity. The model comprises two binary convolution neural network layers followed by two binary long short-term memory (b-LSTM) layers and a dense layer working on quantized PPG data. The proposed framework achieves an MAE of 3.75±3.05 bpm when evaluated on 12 IEEE SPC subjects. Furthermore, a novel, low-complexity architecture for the b-LSTM layers is proposed and efficiently mapped on a Xilinx Virtex5 FPGA, enabling HR computation.
基于二值LSTMs的腕部PPG实时HR估计
腕上佩戴的光电容积脉搏波(PPG)传感器是一种流行的替代心电图记录的心率(HR)估计。然而,它们的准确性受到动态环境中固有的运动伪影的限制。在本文中,我们提出了一个二值化神经网络框架,b-CorNET,以有效地估计高强度运动时单通道手腕PPG信号的HR。该模型包括两个二进制卷积神经网络层,随后是两个二进制长短期记忆(b-LSTM)层和一个处理量化PPG数据的密集层。该框架在12个IEEE SPC科目上的MAE为3.75±3.05 bpm。此外,提出了一种新的低复杂度的b-LSTM层架构,并有效地映射到Xilinx Virtex5 FPGA上,实现了HR计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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