Khan Sarah, Qamar Ramsha, Zaheen Rahma, Al-Ali Abdul Rahman, Al Nabulsi Ahmad, Al-Nashash Hasan
Department of Electrical Engineering, American University of Sharjah, Sharjah, United Arab Emirates.
Department of Computer Engineering, American University of Sharjah, Sharjah, United Arab Emirates.
Healthc Technol Lett. 2019 Aug 21;6(5):132-137. doi: 10.1049/htl.2018.5121. eCollection 2019 Oct.
Accidental falls of patients cannot be completely prevented. However, timely fall detection can help prevent further complications such as blood loss and unconsciousness. In this study, the authors present a cost-effective integrated system designed to remotely detect patient falls in hospitals in addition to classifying non-fall motions into activities of daily living. The proposed system is a wearable device that consists of a camera, gyroscope, and accelerometer that is interfaced with a credit card-sized single board microcomputer. The information received from the camera is used in a visual-based classifier and the sensor data is analysed using the -Nearest Neighbour and Naïve Bayes' classifiers. Once a fall is detected, an attendant at the hospital is informed. Experimental results showed that the accuracy of the device in classifying fall versus non-fall activity is 95%. Other requirements and specifications are discussed in greater detail.
患者的意外跌倒无法完全避免。然而,及时的跌倒检测有助于预防进一步的并发症,如失血和昏迷。在本研究中,作者提出了一种经济高效的集成系统,该系统除了将非跌倒动作分类为日常生活活动外,还能远程检测医院内患者的跌倒情况。所提出的系统是一种可穿戴设备,它由一个摄像头、陀螺仪和加速度计组成,并与信用卡大小的单板微型计算机相连。从摄像头接收到的信息用于基于视觉的分类器,传感器数据则使用k近邻和朴素贝叶斯分类器进行分析。一旦检测到跌倒,医院的护理人员就会收到通知。实验结果表明,该设备在区分跌倒与非跌倒活动方面的准确率为95%。其他要求和规格将更详细地讨论。