Suppr超能文献

基于球心冲击图头部运动的无监督聚类的心率的视觉测量。

Vision-Based Measurement of Heart Rate from Ballistocardiographic Head Movements Using Unsupervised Clustering.

机构信息

Department of Emotion Engineering, University of Sangmyung, Seoul 03016, Korea.

Department of Intelligence Informatics Engineering, University of Sangmyung, Seoul 03016, Korea.

出版信息

Sensors (Basel). 2019 Jul 24;19(15):3263. doi: 10.3390/s19153263.

Abstract

Heart rate has been measured comfortably using a camera without the skin-contact by the development of vision-based measurement. Despite the potential of the vision-based measurement, it has still presented limited ability due to the noise of illumination variance and motion artifacts. Remote ballistocardiography (BCG) was used to estimate heart rate from the ballistocardiographic head movements generated by the flow of blood through the carotid arteries. It was robust to illumination variance but still limited in the motion artifacts such as facial expressions and voluntary head motions. Recent studies on remote BCG focus on the improvement of signal extraction by minimizing the motion artifacts. They simply estimated the heart rate from the cardiac signal using peak detection and fast fourier transform (FFT). However, the heart rate estimation based on peak detection and FFT depend on the robust signal estimation. Thus, if the cardiac signal is contaminated with some noise, the heart rate cannot be estimated accurately. This study aimed to develop a novel method to improve heart rate estimation from ballistocardiographic head movements using the unsupervised clustering. First, the ballistocardiographic head movements were measured from facial video by detecting facial points using the good-feature-to-track (GFTT) algorithm and by tracking using the Kanade-Lucas-Tomasi (KLT) tracker. Second, the cardiac signal was extracted from the ballistocardiographic head movements by bandpass filter and principal component analysis (PCA). The relative power density (RPD) was extracted from its power spectrum between 0.75 Hz and 2.5 Hz. Third, the unsupervised clustering was performed to construct a model to estimate the heart rate from the RPD using the dataset consisting of the RPD and the heart rate measured from electrocardiogram (ECG). Finally, the heart rate was estimated from the RPD using the model. The proposed method was verified by comparing it with previous methods using the peak detection and the FFT. As a result, the proposed method estimated a more accurate heart rate than previous methods in three experiments by levels of the motion artifacts consisting of facial expressions and voluntary head motions. The four main contributions are as follows: (1) the unsupervised clustering improved the heart rate estimation by overcoming the motion artifacts (i.e., facial expressions and voluntary head motions); (2) the proposed method was verified by comparing with the previous methods using the peak detection and the FFT; (3) the proposed method can be combined with existing vision-based measurement and can improve their performance; (4) the proposed method was tested by three experiments considering the realistic environment including the motion artifacts, thus, it increases the possibility of the non-contact measurement in daily life.

摘要

心率已经通过开发基于视觉的测量技术,在不接触皮肤的情况下通过摄像头舒适地测量。尽管基于视觉的测量具有潜力,但由于照明方差和运动伪影的噪声,它的能力仍然有限。远程心冲击图(BCG)用于通过颈动脉血流产生的心冲击图头部运动来估计心率。它对光照方差具有鲁棒性,但仍然受到面部表情和自愿头部运动等运动伪影的限制。最近的远程 BCG 研究侧重于通过最小化运动伪影来改善信号提取。他们只是使用峰值检测和快速傅里叶变换(FFT)从心信号中估计心率。然而,基于峰值检测和 FFT 的心率估计取决于稳健的信号估计。因此,如果心信号受到一些噪声的污染,就不能准确估计心率。本研究旨在开发一种新方法,通过无监督聚类来改善基于心冲击图头部运动的心率估计。首先,通过使用良好特征跟踪(GFTT)算法检测面部点,并使用 Kanade-Lucas-Tomasi(KLT)跟踪器进行跟踪,从面部视频中测量心冲击图头部运动。其次,通过带通滤波器和主成分分析(PCA)从心冲击图头部运动中提取心信号。从其功率谱中提取 0.75 Hz 至 2.5 Hz 之间的相对功率密度(RPD)。第三,进行无监督聚类,使用由 RPD 和从心电图(ECG)测量的心率组成的数据集,构建从 RPD 估计心率的模型。最后,使用该模型从 RPD 估计心率。通过与使用峰值检测和 FFT 的先前方法进行比较,验证了所提出的方法。结果表明,在所进行的三个实验中,该方法比先前的方法估计出更准确的心率,这些方法包含了由面部表情和自愿头部运动组成的运动伪影水平。主要贡献有四个方面:(1)无监督聚类通过克服运动伪影(即面部表情和自愿头部运动)来提高心率估计的准确性;(2)通过与使用峰值检测和 FFT 的先前方法进行比较,验证了所提出的方法;(3)所提出的方法可以与现有的基于视觉的测量方法相结合,从而提高其性能;(4)通过考虑包括运动伪影的现实环境进行了三个实验来测试所提出的方法,从而增加了日常生活中非接触测量的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a47b/6695981/a574e9c240c8/sensors-19-03263-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验