Enea Cippitelli, Samuele Gasparrini, E. Gambi, S. Spinsante
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引用次数: 11
摘要
人口老龄化是一个日益严重的现象,特别是在欧洲,因此研究人员正在开发积极和辅助生活解决方案,以促进老龄化代替老年人。跌倒是老年人最重要的问题之一,开发跌倒风险评估和跌倒检测工具可以提高老年人的安全性。这项工作的目的是利用从可穿戴和基于视觉的传感器中提取的数据开发跌倒风险估计和跌倒检测工具。首先,解决了不同传感器捕获的异构数据之间的同步问题,并提供了一个基于影响样本的时间延迟的简单同步过程。然后,提出了基于可穿戴惯性测量单元(imu)和rgb深度传感器(Microsoft Kinect)的跌倒检测算法和基于Timed Up and Go (TUG)测试的跌倒风险估计工具。对11名健康成人模拟4种不同的跌倒并进行4种日常生活活动进行跌倒检测工具评估,对20名健康受试者进行TUG测试。在实验室环境下获得了令人鼓舞的初步结果。这些工具是隐私保护的,因为Kinect只处理深度和骨架信息。
An Integrated Approach to Fall Detection and Fall Risk Estimation Based on RGB-Depth and Inertial Sensors
Population ageing is a growing phenomenon, especially in Europe, so researchers are developing Active and Assisted Living solutions to promote ageing in place of elderly people. One of the most critical issues is represented by falls, and the development of fall risk estimation and fall detection tools can increase safety of elderly. The aim of this work is to develop fall risk estimation and fall detection tools using data extracted from wearable and vision-based sensors. First, the synchronization issue between heterogeneous data captured by different sensors is addressed, and a straightforward synchronization procedure based on time delays affecting the samples is provided. Then, fall detection algorithms and a fall risk estimation tool based on Timed Up and Go (TUG) test, exploiting wearable Inertial Measurement Units (IMUs) and an RGB-Depth sensor (Microsoft Kinect) are proposed. The fall detection tool is evaluated on 11 healthy adults simulating 4 different falls and performing 4 activities of daily living, while the TUG is tested on 20 healthy subjects. Encouraging preliminary results are obtained with data acquired in laboratory environment. The tools are privacy preserving since only depth and skeleton information captured by Kinect are processed.