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Human Daily Activity Recognition for Healthcare Using Wearable and Visual Sensing Data

机译:使用可穿戴和视觉数据的医疗保健人员日常活动识别

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Wearable digital self-tracking technologies for monitoring individuals' health condition have become more accessible to the public in recent years with the development of connected portable devices, such as smart phones, smart watches, smart bands, and other personal biometric monitoring devices. Mining behavioural patterns from such wearable data along with other available sensory data, has the potential to offer an objective, insightful service in clinical professionals and healthcare. For example, accurate identification of human activities could help us provide a better patient recovery training guidance, or an early alarm of emergency that may happen to elder people, such as stroke, falls, etc. In this paper, we introduce an activity recognition system, which learns a nonlinear SVM algorithm to identify 20 different human activities from accelerometer and RGB-D camera data. Our early experimental results show that the proposed approach is promising and effective.
机译:近年来,随着联网便携式设备(例如智能手机,智能手表,智能手环和其他个人生物监控设备)的发展,用于监视个人健康状况的可穿戴数字自我跟踪技术已变得更加普及。从此类可穿戴数据以及其他可用的感官数据中挖掘行为模式,有可能为临床专业人员和医疗保健提供客观,有见地的服务。例如,对人类活动的准确识别可以帮助我们提供更好的患者康复训练指导,或者对老年人可能发生的中风,跌倒等紧急警报。在本文中,我们介绍了一种活动识别系统,它学习了一种非线性SVM算法,可以从加速度计和RGB-D摄像机数据中识别出20种不同的人类活动。我们的早期实验结果表明,该方法是有前途的和有效的。

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