SVM-based fall detection method for elderly people using Android low-cost smartphones

P. Pierleoni, Luca Pernini, Alberto Belli, Lorenzo Palma, Simone Valenti, M. Paniccia
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引用次数: 31

Abstract

Nowadays society is moving to a scenery where autonomous elderly live alone in their houses. An automatic remote monitoring system using wearable and ambient sensors is becoming even more important, and is a challenge for the future in WSNs, AAL, and Home Automation areas. Relating to this, one of the most critical events for the safety and the health of the elderly is the fall. Lot of methods, applications, and stand-alone devices have been presented so far. This work proposes a novel method based on the Support Vector Machine technique and addressed to Android low-cost smartphones. Our method starts from data acquired from accelerometer and magnetometer, now available in all the low-end devices, and uses a set of features extracted from a processing of the two signals. After an initial training, the classification of fall events and non-fall events is performed by the Support Vector Machine algorithm. Since we have decided to use the smartphone as monitoring device, the use of other invasive wearable sensors is avoided, and the user have simply to hold the phone on his pocket. Moreover, we can use the cellular network for the eventual sending of notifications and alerts to relatives in case of falls. Actually, our tests show a good performance with a sensitivity of 99.3% and a specificity of 96%.
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基于svm的Android低成本智能手机老年人跌倒检测方法
现在社会正在走向一个独立的老人独自生活在自己的房子里的风景。使用可穿戴和环境传感器的自动远程监控系统变得越来越重要,这是未来wsn, AAL和家庭自动化领域的挑战。与此相关,对老年人的安全和健康最关键的事件之一是跌倒。到目前为止,已经介绍了许多方法、应用程序和独立设备。本工作提出了一种基于支持向量机技术的新方法,并针对Android低成本智能手机。我们的方法从加速度计和磁力计获得的数据开始,现在所有的低端设备都可以使用,并使用从两个信号处理中提取的一组特征。经过初始训练后,使用支持向量机算法对跌倒事件和非跌倒事件进行分类。由于我们决定使用智能手机作为监控设备,因此避免了使用其他侵入式可穿戴传感器,用户只需将手机放在口袋中即可。此外,我们可以使用蜂窝网络,在摔倒时最终向亲属发送通知和警报。实际上,我们的测试显示出良好的性能,灵敏度为99.3%,特异性为96%。
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