Instituto de Investigación Sanitaria Aragón / Department of Electronics Engineering and Communications, Department of Electrical Engineering / EduQTech, EUPT, University of Zaragoza, c/Atarazana 2, 44003, Teruel, Spain.
Department of Electronics Engineering and Communications/ CeNITEQ, EUPT, University of Zaragoza, c/Atarazana 2, 44003, Teruel, Spain.
Med Biol Eng Comput. 2017 Oct;55(10):1849-1858. doi: 10.1007/s11517-017-1632-z. Epub 2017 Mar 1.
Research on body-worn sensors has shown how they can be used for the detection of falls in the elderly, which is a relevant health problem. However, most systems are trained with simulated falls, which differ from those of the target population. In this paper, we tackle the problem of fall detection using a combination of novelty detectors. A novelty detector can be trained only with activities of daily life (ADL), which are true movements recorded in real life. In addition, they allow adapting the system to new users, by recording new movements and retraining the system. The combination of several detectors and features enhances performance. The proposed approach has been compared with a traditional supervised algorithm, a support vector machine, which is trained with both falls and ADL. The combination of novelty detectors shows better performance in a typical cross-validation test and in an experiment that mimics the effect of personalizing the classifiers. The results indicate that it is possible to build a reliable fall detector based only on ADL.
穿戴式传感器的研究表明,它们可用于检测老年人跌倒,这是一个相关的健康问题。然而,大多数系统都是用模拟跌倒训练的,而与目标人群的跌倒情况有所不同。在本文中,我们使用新颖性检测器的组合来解决跌倒检测问题。新颖性检测器只能用日常生活活动(ADL)进行训练,ADL 是在现实生活中记录的真实运动。此外,通过记录新的运动并重新训练系统,它们允许系统适应用户。几种检测器和特征的组合可以提高性能。所提出的方法已经与传统的监督算法(支持向量机)进行了比较,支持向量机是用跌倒和 ADL 两者进行训练的。新颖性检测器的组合在典型的交叉验证测试和模拟分类器个性化效果的实验中表现出更好的性能。结果表明,仅基于 ADL 构建可靠的跌倒检测器是可能的。