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Fall detection algorithms for real-world falls harvested from lumbar sensors in the elderly population: A machine learning approach

机译:从老年人的腰部传感器采集的现实世界跌倒的跌倒检测算法:一种机器学习方法

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Automatic fall detection will promote independent living and reduce the consequences of falls in the elderly by ensuring people can confidently live safely at home for linger. In laboratory studies inertial sensor technology has been shown capable of distinguishing falls from normal activities. However less than 7% of fall-detection algorithm studies have used fall data recorded from elderly people in real life. The FARSEEING project has compiled a database of real life falls from elderly people, to gain new knowledge about fall events and to develop fall detection algorithms to combat the problems associated with falls. We have extracted 12 different kinematic, temporal and kinetic related features from a data-set of 89 real-world falls and 368 activities of daily living. Using the extracted features we applied machine learning techniques and produced a selection of algorithms based on different feature combinations. The best algorithm employs 10 different features and produced a sensitivity of 0.88 and a specificity of 0.87 in classifying falls correctly. This algorithm can be used distinguish real-world falls from normal activities of daily living in a sensor consisting of a tri-axial accelerometer and tri-axial gyroscope located at L5.
机译:自动跌倒检测将通过确保人们可以放心在家安全地流连忘返,从而促进独立生活并减少老年人跌倒的后果。在实验室研究中,惯性传感器技术已被证明能够区分跌落和正常活动。但是,只有不到7%的跌倒检测算法研究使用了现实生活中老年人记录的跌倒数据。 FARSEEING项目已编译了一个有关老年人真实生活跌倒的数据库,以获取有关跌倒事件的新知识,并开发跌倒检测算法来解决与跌倒相关的问题。我们从89个真实世界的瀑布和368个日常生活活动的数据集中提取了12种不同的运动学,时间和动力学相关特征。使用提取的特征,我们应用了机器学习技术,并基于不同的特征组合产生了一系列算法。最佳算法采用了10种不同的特征,在正确分类跌倒时产生的灵敏度为0.88,特异性为0.87。该算法可用于将现实世界中的跌落与日常生活中的正常活动区分开来,该传感器由位于L5处的三轴加速度计和三轴陀螺仪组成的传感器组成。

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