Issa Mohamed E, Helmi Ahmed M, Al-Qaness Mohammed A A, Dahou Abdelghani, Abd Elaziz Mohamed, Damaševičius Robertas
Computer and Systems Engineering Department, Faculty of Engineering, Zagazig University, Zagazig 44519, Egypt.
College of Engineering and Information Technology, Buraydah Private Colleges, Buraydah 51418, Saudi Arabia.
Healthcare (Basel). 2022 Jun 10;10(6):1084. doi: 10.3390/healthcare10061084.
Nowadays, the emerging information technologies in smart handheld devices are motivating the research community to make use of embedded sensors in such devices for healthcare purposes. In particular, inertial measurement sensors such as accelerometers and gyroscopes embedded in smartphones and smartwatches can provide sensory data fusion for human activities and gestures. Thus, the concepts of the Internet of Healthcare Things (IoHT) paradigm can be applied to handle such sensory data and maximize the benefits of collecting and analyzing them. The application areas contain but are not restricted to the rehabilitation of elderly people, fall detection, smoking control, sportive exercises, and monitoring of daily life activities. In this work, a public dataset collected using two smartphones (in pocket and wrist positions) is considered for IoHT applications. Three-dimensional inertia signals of thirteen timestamped human activities such as Walking, Walking Upstairs, Walking Downstairs, Writing, Smoking, and others are registered. Here, an efficient human activity recognition (HAR) model is presented based on efficient handcrafted features and Random Forest as a classifier. Simulation results ensure the superiority of the applied model over others introduced in the literature for the same dataset. Moreover, different approaches to evaluating such models are considered, as well as implementation issues. The accuracy of the current model reaches 98.7% on average. The current model performance is also verified using the WISDM v1 dataset.
如今,智能手持设备中新兴的信息技术促使研究界利用此类设备中的嵌入式传感器用于医疗保健目的。特别是,嵌入智能手机和智能手表中的加速度计和陀螺仪等惯性测量传感器可以为人类活动和手势提供传感数据融合。因此,医疗保健物联网(IoHT)范式的概念可以应用于处理此类传感数据,并最大限度地提高收集和分析这些数据的益处。应用领域包括但不限于老年人康复、跌倒检测、吸烟控制、体育锻炼以及日常生活活动监测。在这项工作中,考虑将使用两部智能手机(分别放在口袋和手腕位置)收集的公共数据集用于IoHT应用。记录了诸如行走、上楼梯、下楼梯、写作、吸烟等13种带时间戳的人类活动的三维惯性信号。在此,基于高效的手工特征和作为分类器的随机森林,提出了一种高效的人类活动识别(HAR)模型。仿真结果确保了所应用模型相对于文献中针对同一数据集引入的其他模型的优越性。此外,还考虑了评估此类模型的不同方法以及实现问题。当前模型的平均准确率达到98.7%。还使用WISDM v1数据集验证了当前模型的性能。