Higashi Kotaro, Sun Guanghao, Ishibashi Koichiro
Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:788-791. doi: 10.1109/EMBC.2019.8857830.
Non-contact and continuous heart rate measurement using Doppler radar is important for various healthcare applications. In this paper, we propose a precise heart rate measurement method assisted by machine learning based sleep posture estimation. Machine learning is used for processing time-domain signal of the Doppler radar. Doppler radar has attracted much attention due to its non-contact to the subject feature. Moreover, it will not encroach into the privacy of the subject compared to image sensors. The method proposed in this paper automatically removes the data from the raw signal while the patient is moving or is not staying on the bed. This method based on machine learning uses simple features to reduce the computational cost thereby enabling real-time application. The sleeping posture was detected with an accuracy of 88.5%, and the error ratios of heart rate estimation were reduced by 15.2% in a sleep laboratory testing on 6 subjects.
使用多普勒雷达进行非接触式连续心率测量对于各种医疗保健应用都很重要。在本文中,我们提出了一种基于机器学习辅助睡眠姿势估计的精确心率测量方法。机器学习用于处理多普勒雷达的时域信号。多普勒雷达因其对受试者的非接触特性而备受关注。此外,与图像传感器相比,它不会侵犯受试者的隐私。本文提出的方法在患者移动或不在床上时会自动从原始信号中去除数据。这种基于机器学习的方法使用简单特征来降低计算成本,从而实现实时应用。在对6名受试者的睡眠实验室测试中,睡眠姿势检测准确率为88.5%,心率估计误差率降低了15.2%。