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Automatic Fall Detection System Based on the Combined Use of a Smartphone and a Smartwatch

机译:基于智能手机和智能手表结合使用的自动跌倒检测系统

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摘要

Due to their widespread popularity, decreasing costs, built-in sensors, computing power and communication capabilities, Android-based personal devices are being seen as an appealing technology for the deployment of wearable fall detection systems. In contrast with previous solutions in the existing literature, which are based on the performance of a single element (a smartphone), this paper proposes and evaluates a fall detection system that benefits from the detection performed by two popular personal devices: a smartphone and a smartwatch (both provided with an embedded accelerometer and a gyroscope). In the proposed architecture, a specific application in each component permanently tracks and analyses the patient’s movements. Diverse fall detection algorithms (commonly employed in the literature) were implemented in the developed Android apps to discriminate falls from the conventional activities of daily living of the patient. As a novelty, a fall is only assumed to have occurred if it is simultaneously and independently detected by the two Android devices (which can interact via Bluetooth communication). The system was systematically evaluated in an experimental testbed with actual test subjects simulating a set of falls and conventional movements associated with activities of daily living. The tests were repeated by varying the detection algorithm as well as the pre-defined mobility patterns executed by the subjects (i.e., the typology of the falls and non-fall movements). The proposed system was compared with the cases where only one device (the smartphone or the smartwatch) is considered to recognize and discriminate the falls. The obtained results show that the joint use of the two detection devices clearly increases the system’s capability to avoid false alarms or ‘false positives’ (those conventional movements misidentified as falls) while maintaining the effectiveness of the detection decisions (that is to say, without increasing the ratio of ‘false negatives’ or actual falls that remain undetected).
机译:由于它们的广泛普及,降低的成本,内置传感器,计算能力和通信功能,基于Android的个人设备被视为部署可穿戴式跌倒检测系统的诱人技术。与现有文献中基于单个元素(智能手机)性能的先前解决方案相比,本文提出并评估了一种跌倒检测系统,该系统得益于两种流行的个人设备执行的检测:智能手机和智能手机。 smartwatch(均配有嵌入式加速度计和陀螺仪)。在建议的体系结构中,每个组件中的特定应用程序会永久跟踪和分析患者的运动。在已开发的Android应用程序中实施了多种跌倒检测算法(文献中通常采用的算法),以将跌倒与患者的日常常规活动区分开。作为一种新颖性,仅当两个Android设备(可以通过蓝牙通信进行交互)同时且独立地检测到跌倒时,才假定发生跌倒。该系统在实验测试平台上进行了系统评估,实际测试对象模拟了一组跌落和与日常生活活动相关的常规动作。通过更改检测算法以及受试者执行的预定义移动模式(即跌倒和非跌倒运动的类型)来重复测试。将提议的系统与仅考虑一种设备(智能手机或智能手表)来识别和区分跌倒的情况进行了比较。获得的结果表明,两个检测设备的联合使用明显提高了系统避免误报或“误报”(那些常规动作被误认为是跌倒)的能力,同时保持了检测决策的有效性(也就是说,没有增加“漏报率”或仍未发现的实际跌倒的比率)。

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