Procházka Aleš, Schätz Martin, Vyšata Oldřich, Vališ Martin
Department of Computing and Control Engineering, University of Chemistry and Technology, 166 28 Prague 6, Czech Republic.
Czech Institute of Informatics, Robotics and Cybernetics, Czech Technical University, 166 36 Prague 6, Czech Republic.
Sensors (Basel). 2016 Jun 28;16(7):996. doi: 10.3390/s16070996.
This paper is devoted to a new method of using Microsoft (MS) Kinect sensors for non-contact monitoring of breathing and heart rate estimation to detect possible medical and neurological disorders. Video sequences of facial features and thorax movements are recorded by MS Kinect image, depth and infrared sensors to enable their time analysis in selected regions of interest. The proposed methodology includes the use of computational methods and functional transforms for data selection, as well as their denoising, spectral analysis and visualization, in order to determine specific biomedical features. The results that were obtained verify the correspondence between the evaluation of the breathing frequency that was obtained from the image and infrared data of the mouth area and from the thorax movement that was recorded by the depth sensor. Spectral analysis of the time evolution of the mouth area video frames was also used for heart rate estimation. Results estimated from the image and infrared data of the mouth area were compared with those obtained by contact measurements by Garmin sensors (www.garmin.com). The study proves that simple image and depth sensors can be used to efficiently record biomedical multidimensional data with sufficient accuracy to detect selected biomedical features using specific methods of computational intelligence. The achieved accuracy for non-contact detection of breathing rate was 0.26% and the accuracy of heart rate estimation was 1.47% for the infrared sensor. The following results show how video frames with depth data can be used to differentiate different kinds of breathing. The proposed method enables us to obtain and analyse data for diagnostic purposes in the home environment or during physical activities, enabling efficient human-machine interaction.
本文致力于一种利用微软(MS)Kinect传感器进行呼吸非接触监测和心率估计以检测可能的医学和神经疾病的新方法。MS Kinect的图像、深度和红外传感器记录面部特征和胸部运动的视频序列,以便在选定的感兴趣区域进行时间分析。所提出的方法包括使用计算方法和功能变换进行数据选择,以及对其进行去噪、频谱分析和可视化,以确定特定的生物医学特征。所获得的结果验证了从口腔区域的图像和红外数据以及深度传感器记录的胸部运动中获得的呼吸频率评估之间的对应关系。口腔区域视频帧时间演变的频谱分析也用于心率估计。将从口腔区域的图像和红外数据估计的结果与通过佳明传感器(www.garmin.com)进行接触测量获得的结果进行比较。该研究证明,简单的图像和深度传感器可用于以足够的精度有效记录生物医学多维数据,以使用特定的计算智能方法检测选定的生物医学特征。红外传感器非接触检测呼吸率的准确率为0.26%,心率估计的准确率为1.47%。以下结果展示了带有深度数据的视频帧如何用于区分不同类型的呼吸。所提出的方法使我们能够在家庭环境或体育活动期间获取和分析用于诊断目的的数据,实现高效的人机交互。