Strączkiewicz M, Urbanek J K, Fadel W F, Crainiceanu C M, Harezlak J
Faculty of Mechanical Engineering and Robotics, AGH University of Science and Technology, Krakow, Poland.
Physiol Meas. 2016 Oct;37(10):1757-1769. doi: 10.1088/0967-3334/37/10/1757. Epub 2016 Sep 21.
Measuring physical activity using wearable devices has become increasingly popular. Raw data collected from such devices is usually summarized as 'activity counts', which combine information of human activity with environmental vibrations. Driving is a major sedentary activity that artificially increases the activity counts due to various car and body vibrations that are not connected to human movement. Thus, it has become increasingly important to identify periods of driving and quantify the bias induced by driving in activity counts. To address these problems, we propose a detection algorithm of driving via accelerometry (DADA), designed to detect time periods when an individual is driving a car. DADA is based on detection of vibrations generated by a moving vehicle and recorded by an accelerometer. The methodological approach is based on short-time Fourier transform (STFT) applied to the raw accelerometry data and identifies and focuses on frequency vibration ranges that are specific to car driving. We test the performance of DADA on data collected using wrist-worn ActiGraph devices in a controlled experiment conducted on 24 subjects. The median area under the receiver-operating characteristic curve (AUC) for predicting driving periods was 0.94, indicating an excellent performance of the algorithm. We also quantify the size of the bias induced by driving and obtain that per unit of time the activity counts generated by driving are, on average, 16% of the average activity counts generated during walking.
使用可穿戴设备测量身体活动已变得越来越普遍。从这类设备收集的原始数据通常汇总为“活动计数”,它将人类活动信息与环境振动结合在一起。驾驶是一种主要的久坐活动,由于各种与人体运动无关的汽车和身体振动,会人为地增加活动计数。因此,识别驾驶时段并量化驾驶在活动计数中引起的偏差变得越来越重要。为了解决这些问题,我们提出了一种基于加速度计的驾驶检测算法(DADA),旨在检测个体驾驶汽车的时间段。DADA基于对移动车辆产生并由加速度计记录的振动的检测。该方法基于应用于原始加速度计数据的短时傅里叶变换(STFT),并识别和关注特定于汽车驾驶的频率振动范围。我们在对24名受试者进行的对照实验中,使用腕戴式ActiGraph设备收集的数据测试了DADA的性能。预测驾驶时段的受试者工作特征曲线(AUC)下的中位数面积为0.94,表明该算法性能优异。我们还量化了驾驶引起的偏差大小,得出每单位时间驾驶产生的活动计数平均为步行期间产生的平均活动计数的16%。