基于面部表情特征和Remote-PPG信号的疲劳估计

Masaki Hasegawa, Kotaro Hayashi, J. Miura
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引用次数: 1

摘要

目前,日常生活生活支持机器人的研发正在积极进行。健康箱就是这样一种功能机器人。在这项研究中,我们开发了一个使用相机的疲劳估计系统,可以很容易地安装在机器人上。在真实环境中进行的测量必须考虑由光线变化和物体运动引起的噪声。该疲劳估计系统基于鲁棒特征提取方法。LF/ hf比作为疲劳指标,由心电图RR间隔的功率谱或血容量脉冲(BVP)计算。BVP可以通过光体积脉搏波描记术(PPG)从指尖检测到。在这项研究中,我们使用了一种非接触式的PPG:远程PPG (rPPG),通过人脸图像的亮度变化来检测。一些研究表明,从面部视频中提取的面部表情特征对疲劳估计也很有用。过去使用LLE的降维方法破坏了特征大维度的信息。我们还开发了一种疲劳估计方法,该方法使用相机为医疗机器人提供了这些特征。该算法使用面部标志点、视线向量和大小与眼睛和嘴的标志点拟合的椭圆。因此,本文提出的方法简单地利用人脸的时变形状信息,如眼睛的大小或注视方向。利用支持向量机(SVM)进行疲劳状态分类,验证了所提特征的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fatigue Estimation using Facial Expression features and Remote-PPG Signal
Currently, research and development of lifestyle support robots in daily life is being actively conducted. Health-case is one such function robots. In this research, we develop a fatigue estimation system using a camera that can easily be mounted on robots. Measurements taken in a real environment have to be consider noises caused by changes in light and the subject’s movement. This fatigue estimation system is based on a robust feature extraction method. As an indicator of fatigue, LF/HF-ratio was calculated from the power spectrum of RR interval in the electrocardiogram or the blood volume pulse (BVP). The BVP can be detected from the fingertip by using the photoplethysmography (PPG). In this study, we used a contactless PPG: remote-PPG (rPPG) detected by the luminance change of the face image. Some studies show facial expression features extracted from facial video are also useful for fatigue estimation. dimension reduction of past method using LLE spoiled the information in the large dimention of feature. We also developed a fatigue estimation method with such features using a camera for the healthcare robots. It used facial landmark points, line-of-sight vector, and size of the ellipse fitted with eyes and mouth landmark points. Therefore, proposed method simply use time-varying shape information of face like size of eyes, or gaze direction. We verified the performance of proposed features by the fatigue state classification using Support Vector Machine (SVM).
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