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Implementation of a real-time human movement classifier using a triaxial accelerometer for ambulatory monitoring

机译:使用三轴加速度计实现实时人体运动分类器的动态监控

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The real-time monitoring of human movement can provide valuable information regarding an individual's degree of functional ability and general level of activity. This paper presents the implementation of a real-time classification system for the types of human movement associated with the data acquired from a single, waist-mounted triaxial accelerometer unit. The major advance proposed by the system is to perform the vast majority of signal processing onboard the wearable unit using embedded intelligence. In this way, the system distinguishes between periods of activity and rest, recognizes the postural orientation of the wearer, detects events such as walking and falls, and provides an estimation of metabolic energy expenditure. A laboratory-based trial involving six subjects was undertaken, with results indicating an overall accuracy of 90.8% across a series of 12 tasks (283 tests) involving a variety of movements related to normal daily activities. Distinction between activity and rest was performed without error; recognition of postural orientation was carried out with 94.1% accuracy, classification of walking was achieved with less certainty (83.3% accuracy), and detection of possible falls was made with 95.6% accuracy. Results demonstrate the feasibility of implementing an accelerometry-based, real-time movement classifier using embedded intelligence.
机译:人体运动的实时监控可以提供有关个人功能能力程度和总体活动水平的有价值的信息。本文介绍了一种实时分类系统的实现,该系统用于与从单个腰部安装的三轴加速度计单元获取的数据相关的人体运动类型。该系统提出的主要进步是使用嵌入式智能在可穿戴单元上执行绝大多数信号处理。以这种方式,系统区分活动和休息时间,识别穿戴者的姿势取向,检测诸如步行和跌倒的事件,并提供代谢能量消耗的估计。进行了一项基于实验室的试验,涉及六名受试者,结果表明,在涉及与日常日常活动相关的各种动作的一系列12项任务(283项测试)中,总体准确性为90.8%。活动与休息的区分没有错误;姿势定向的识别精度为94.1%,步行分类的确定性较低(精度为83.3%),可能跌倒的检测精度为95.6%。结果证明了使用嵌入式智能技术实现基于加速度计的实时运动分类器的可行性。

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