Publication | Closed Access
Real-time HR Estimation from wrist PPG using Binary LSTMs
11
Citations
12
References
2019
Year
Unknown Venue
Wearable SystemMedical MonitoringWrist-worn PhotoplethysmographyEngineeringMeasurementWearable TechnologyHuman MonitoringMedical InstrumentationBiomedical Signal AnalysisKinesiologyBiosignal ProcessingApplied PhysiologyHuman MotionRehabilitation EngineeringHealth SciencesHeart RateComputer EngineeringReal-time Hr EstimationComputer ScienceSignal ProcessingBiomedical SensorsIntense Physical ActivityBiomedical InstrumentationHealth MonitoringHuman MovementWearable SensorBiomedical Signal Processing
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1