Department of Electrical Engineering and Electronics, University of Liverpool, Liverpool, L69 3GJ, UK.
Department of Eye and Vision Science, University of Liverpool, Liverpool, L7 8TX, UK.
Sci Rep. 2022 Sep 7;12(1):15197. doi: 10.1038/s41598-022-19198-1.
Reliable and contactless measurements of vital signs, such as respiration and heart rate, are still unmet needs in clinical and home settings. Mm-wave radar and video-based technologies are promising, but currently, the signal processing-based vital sign extraction methods are prone to body motion disruptions or illumination variations in the surrounding environment. Here we propose an image segmentation-based method to extract vital signs from the recorded video and mm-wave radar signals. The proposed method analyses time-frequency spectrograms obtained from Short-Time Fourier Transform rather than individual time-domain signals. This leads to much-improved robustness and accuracy of the heart rate and respiration rate extraction over existing methods. The experiments were conducted under pre- and post-exercise conditions and were repeated on multiple individuals. The results are evaluated by using four metrics against the gold standard contact-based measurements. Significant improvements were observed in terms of precision, accuracy, and stability. The performance was reflected by achieving an averaged Pearson correlation coefficient (PCC) of 93.8% on multiple subjects. We believe that the proposed estimation method will help address the needs for the increasingly popular remote cardiovascular sensing and diagnosing posed by Covid-19.
在临床和家庭环境中,可靠且非接触式的生命体征测量(如呼吸和心率)仍然是未满足的需求。毫米波雷达和基于视频的技术很有前途,但目前基于信号处理的生命体征提取方法容易受到身体运动干扰或周围环境光照变化的影响。在这里,我们提出了一种基于图像分割的方法,从记录的视频和毫米波雷达信号中提取生命体征。所提出的方法分析从短时傅里叶变换获得的时频频谱图,而不是单个时域信号。这导致心率和呼吸率提取的稳健性和准确性比现有方法有了很大提高。实验在运动前和运动后条件下进行,并在多个个体上重复进行。使用四项指标与基于接触的金标准测量值进行评估。在精度、准确性和稳定性方面都有显著提高。在多个受试者中,平均皮尔逊相关系数(PCC)达到 93.8%,反映了该方法的性能。我们相信,所提出的估计方法将有助于满足新冠疫情期间远程心血管传感和诊断日益增长的需求。