Abstract

This paper presents an important advancement in heart activity monitoring, focusing on non-contact sensor data, which tend to be noisy due to interference, and the limitations of non-contact (untact) technology. A preprocessing filter and optimal classification model are proposed to improve the accuracy and reliability of heart rate data measured by a non-contact Doppler radar sensor, and the results are compared to those of a contact heart rate sensor (Holter monitor). The MIT-BIH Arrhythmia Database of PhysioNet are used for learning, and the results from the non-contact sensor and Holter monitor are compared for verification. To train the abnormal heartbeat waveform classification model, (1) an optimal heart rate data separation window size is selected through iterative model comparison and used for data separation, and (2) meaningful indicators of heart rate variability are selected; the data are transformed and applied as model characteristics. The non-contact sensor data are then applied to three filter algorithms, and the accuracy is assessed by comparison with the contact sensor data using the trained abnormal heartbeat waveform classification model. Learning is performed using 12 classification models, and the accuracies of the models are compared. This study demonstrates an effective new method of transfer learning for contact data abnormality detection.

Highlights

  • The COVID-19 pandemic has led to a rise in demand for non-contact technology, including non-contact sensors

  • An abnormal heartbeat waveform classification model is learned through an open database, and bpm data measured by contact and non-contact sensors are applied to the model

  • VALIDATION OF ABNORMAL HEARTBEAT WAVEFORM CLASSIFICATION MODEL The open heart rate data are separated using the optimal window size, and the R-R interval (RRI) of the separated open heart rate data is converted according to the heart rate variability (HRV) criteria

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Summary

INTRODUCTION

The COVID-19 pandemic has led to a rise in demand for non-contact (untact) technology, including non-contact sensors. An abnormal heartbeat waveform classification model is learned through an open database, and bpm data measured by contact and non-contact sensors are applied to the model. By applying this model to non-contact sensor, we confirm the possibility of untact processing. Non-contact sensors provide an excellent means of continuous biomedical data monitoring for doctors and health care professionals by enabling non-contact measurements during daily activities. They will aid in the faster implementation of AmI in the field of healthcare [3]

RELATED RESEARCH
CLASSIFICATION MODELING PROCESS
MEASURING HEARTRATE USING NON CONTACT SENSOR
TRAINING AND TESTING OF ABNORMAL HEART RATE WAVEFORM CLASSIFICATION MODELS
RESULTS AND DISCUSSION
CONCLUSION

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