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Using Deep Learning and Smartphone for Automatic Detection of Fall and Daily Activities

机译:利用深度学习和智能手机进行自动检测秋季和日常活动

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The rapid growth of elderly population makes the health of the elderly one of the major social concerns. The elderly is often facing with several physical and mental healthcare related problems, among those, instance of fall and injuries ranked at the top. If people fall unexpectedly and without timely assistance, it is easy to cause irreparable harm. Therefore, how to automatically detect fall and alert for care/attention using advanced assisted technologies is a hot area of research. In this paper, we examine six machine learning-based methods and propose and carefully configure two novel deep learning-based architectures for fall detection. We compare the relative performance of these methods using an open source dataset, MobiAct, which was collected with four simulated fall types and nine daily living activities using smartphones. Our experimental results show that the proposed long short-term memory (LSTM) deep learning model is quite effective for the fall detection classification; its accuracy reaches 98.83%, the specificity is 99.38%, the sensitivity is 90.57% and the F1 score is 90.33%. These results are better than existing machine learning methods in all types of fall and most of daily activities.
机译:老年人的快速增长使老人的健康成为主要的社会问题之一。老年人经常面临着几种身心健康相关问题,其中秋季的秋季和伤害的实例。如果人们出乎意料而不及时援助,那么很容易引起无法弥补的伤害。因此,如何使用先进的辅助技术自动检测跌倒和护理警报,是一个研究的热门领域。在本文中,我们研究了六种基于机器学习的方法,并仔细配置了两种基于深度学习的基于深度学习的架构。我们使用使用智能手机的四种模拟秋季类型和九个日常生活收集的开源数据集进行比较这些方法的相对性能。我们的实验结果表明,建议的长期内存(LSTM)深度学习模型对跌倒检测分类非常有效;其精度达到98.83%,特异性为99.38%,灵敏度为90.57%,F1得分为90.33%。这些结果优于所有类型的秋季和大部分日常活动的现有机器学习方法。

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