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Integrated sensing from multiple wearable devices for activity recognition and dead reckoning

机译:来自多个可穿戴设备的集成感测,用于活动识别和航位推测

摘要

Wearable devices are increasingly prevalent in our everyday lives. This thesis examines the potential of combining multiple wearable devices worn on different body locations for fitness activity recognition and inertial dead-reckoning. First, a novel method is presented to classify fitness activities using head-worn sensors, with comparisons to other common worn locations on the body. Using multiclass Support Vector Machine (SVM) on head-worn sensors, high degree of accuracy was obtained for classifying standing, walking, running, ascending/descending stairs and cycling. Next, a complete inertial dead-reckoning system for walking and running using smartwatch and smartglasses is proposed. Head-turn motion can derail the position propagation on a head-worn dead-reckoning system. Using the relative angle rate-of-change between arm swing direction and head yaw, head-turn motion can be detected. The experimental results show that using the proposed head-turn detection algorithm, head-worn dead-reckoning performance can be greatly improved.
机译:可穿戴设备在我们的日常生活中越来越普遍。本文研究了将组合穿戴在不同身体位置的多个可穿戴设备用于健身活动识别和惯性死坐的潜力。首先,提出了一种新颖的方法,可以使用头戴式传感器对健身活动进行分类,并与身体上其他常见的佩戴位置进行比较。在头戴式传感器上使用多类支持向量机(SVM),可以对站立,行走,奔跑,爬升/下降楼梯和自行车进行分类,获得很高的准确性。接下来,提出了一种用于使用智能手表和智能眼镜行走和跑步的完整的惯性死推系统。头转向运动可能会使头戴式死区推重系统上的位置传播偏离轨道。使用手臂摆动方向和头部偏航之间的相对角度变化率,可以检测到头部转动。实验结果表明,采用本文提出的头转弯检测算法,可以大大提高头戴式死区重击性能。

著录项

  • 作者

    Loh Darrell Jui Hsiong;

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  • 年度 2016
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