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A Posture Recognition Method Based on Indoor Positioning Technology

机译:一种基于室内定位技术的姿势识别方法

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摘要

Posture recognition has been widely applied in fields such as physical training, environmental awareness, human-computer-interaction, surveillance system and elderly health care. The traditional methods consist of two main variations: machine vision methods and acceleration sensor methods. The former has the disadvantages of privacy invasion, high cost and complex implementation processes, while the latter has low recognition rate for still postures. A new body posture recognition scheme based on indoor positioning technology is presented in this paper. A single deployed indoor positioning system is constructed by installing wearable receiving tags at key points of the human body. The distance measurement method with ultra-wide band (UWB) radio is applied to position the key points of human body. Posture recognition is implemented by positioning. In the posture recognition algorithm, least square estimation (LSE) method and the improved extended Kalman filtering (iEKF) algorithm are respectively adopted to suppress the noise of the distances measurement and to improve the accuracy of positioning and recognition. The comparison of simulation results with the two methods shows that the improved extended Kalman filtering algorithm is more effective in error performance.
机译:姿势识别已广泛应用于体育培训,环境意识,人机互动,监测系统和老年医疗保健等领域。传统方法包括两个主要变体:机器视觉方法和加速度传感器方法。前者具有隐私入侵,高成本和复杂实施过程的缺点,而后者的仍然仍然存在低姿势。本文提出了一种基于室内定位技术的新型车身姿态识别方案。通过在人体的关键点安装可穿戴接收标签来构造单个部署的室内定位系统。利用超宽带(UWB)无线电的距离测量方法来定位人体的关键点。姿势识别是通过定位实施的。在姿势识别算法中,分别采用最小二乘估计(LSE)方法和改进的扩展卡尔曼滤波(IEKF)算法来抑制距离测量的噪声并提高定位和识别的准确性。模拟结果的比较与两种方法表明,改进的扩展卡尔曼滤波算法在误差性能方面更有效。

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