标题: | 基于影像资讯量测脉率及呼吸率之生理讯号 Image-based Vital Physiological Signals Evaluations of Pulse Rate and Respiratory Rate |
作者: | 林冠仪 蔡文锦 陈敦裕 Lin, Kuan-Yi Tsai, Wen-Jiin Chen, Duan-Yu 资讯科学与工程研究所 |
关键字: | 呼吸率;心率;脉率;希尔伯特-黄转换;respiratory rate;heart rate;pulse rate;Hilbert-HuangTransform |
公开日期: | 2016 |
摘要: | 使用传统接触式的脉率和呼吸率量测设备如心电仪需穿戴束胸带等量测设备会造成使用者皮肤的刺激和不舒适感。因此在这研究中,开发了两技术以非接触式的方式以影像讯号为基础量测脉率和呼吸率的变化。在脉率方面,因心脏跳动使得血红蛋白流过血管,而反射光的量测可测量血红蛋白吸收反射光的变化进而推导出脉率,所以将血红蛋白于吸收反色光效果较强的绿色频道抽取出来,因连续侦测下可得连续反光讯号,接着利用Ensemble Empirical Mode Decomposition的方法来获得主要脉率频率之讯号Intrinsic Mode Functions (IMFs),经统计分析将各IMF透过多元线性回归方法(Multiple-Linear Regression)筛选出可模拟计算脉率之模型,并由各IMF之瞬时频率透过卜瓦松结合贝式定理(Bayesian Inference for Poisson Distribution)推估平均顺时频率缩短所需之资料量达到加速计算之目的,从实验结果以影像为基础非接触式的方式量测脉率可呈现此研究架构和方法与其他现行所提出的方法有明显准确度和稳定度的提升。在呼吸率量测部分,因呼气和吸气过程中,可利用身体的垂直方向会呈现一个类似简谐运动的方式来观察呼吸变化,因此在此开发技术中首先我们先取得脸部区域,接着依对应位置获得上半身的影像讯号,且利用Haar-like特征找寻突出区域(Salient Region)代表上半身资讯,接着利用连续影像之垂直光流于突出区域的变化做为呼吸的输入讯号,最后搭配过滤器和越零点方法计算出各呼吸周期。于实验中,将讨论各变因所呈现的研究数据来显示本系统之稳定性,而变因包含呼吸时的姿势、呼吸频率、使用者晃动和量测距离;且与以影像为基础之呼吸率量测之现行方法比较后,本研究所开发的技术不管是于准确度或是可容忍之变因皆优于其他开发技术,且从实验结果可看出此研究技术已可有效的运用于真实环境中。 Contact measurements of the cardiac pulse and respiratory rate using conventional electrocardiogram (ECG) equipment requires patients to wear adhesive gel patches or chest straps that can cause skin irritation and discomfort. Therefore, two novel robust non-contact frameworks are developed for the evaluation of pulse rate and respiratory variation. In pulse rate measurement, according to the periodic variation of reflectance strength resulting from changes to hemoglobin absorptivity across the visible light spectrum as heartbeats cause changes to blood volume in the blood vessels in the face, a reflectance signal is decomposed from consecutive frames of the green channel of the facial region. Furthermore, ensemble empirical mode decomposition (EEMD) of the Hilbert-Huang Transform (HHT) is used to acquire the primary heart rate signal while reducing the effect of ambient light changes. The effective instantaneous frequencies from intrinsic mode functions decomposed by HHT are implemented by the multiple-linear regression model to evaluate heart rates before the frequencies were rectified by maximum likelihood method assuming Poisson distribution, and the minimum elapse time for heart rate evaluation is also evaluated in the estimate process. Experimental results show that our proposed approach provides a convenient non-contact method to evaluate heart rate and outperforms the current state-of-the-art method with higher accuracy and smaller variance. In respiratory rate measurement, the changes of a simple harmonic motion between inhalation and exhalation from the human’s upper body can be observed from visual appearance. Therefore, in this work to characterize the motion, a salient region is automatically selected in the energy map resulted from Haar-like features through consecutive frames. Furthermore, a median optical flow signal is used to acquire the primary respiratory rate signal. The effective respiratory frequencies resulted from vertical motion variation are decomposed by median motion signal and then characterized by zero-crossing method before the frequencies were rectified by an estimation using the noise elimination methods. In the experiment, the performance is evaluated using an extensive dataset obtained under distinct four respiratory types, regular respiration, respiration with body motion, respiration with distinct poses, and respiration with distinct capturing distances. Our approach develops a convenient non-contact method to evaluate respiratory rate with the achievement of measurement under farther distance and also outperforms the current state-of-the-art approach in terms of high correlation coefficient. Therefore, the experiment results show its efficacy for real-world environment. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070186023 http://hdl.handle.net/11536/139063 |
显示于类别: | Thesis |