Pervasive Pose Estimation for Fall Detection

Jia-qin Luo, Ruiyu Bai, Suining He, K. Shin
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引用次数: 2

Abstract

Falls are the second leading cause of accidental or unintentional injuries/deaths worldwide. Accurate pose estimation using commodity mobile devices will help early detection and injury assessment of falls, which are essential for the first aid of elderly falls. By following the definition of fall, we propose a Pervasive Pose Estimation scheme for fall detection (P \( ^2 \) Est), which measures changes in tilt angle and height of the human body. For the tilt measurement, P \( ^2 \) Est leverages the pointing of the mobile device, e.g., the smartphone, when unlocking to associate the Device coordinate system with the World coordinate system. For the height measurement, P \( ^2 \) Est exploits the fact that the person’s height remains unchanged while walking to calibrate the pressure difference between the device and the floor. We have prototyped and tested P \( ^2 \) Est in various situations and environments. Our extensive experimental results have demonstrated that P \( ^2 \) Est can track the body orientation irrespective of which pocket the phone is placed in. More importantly, it enables the phone’s barometer to detect falls in various environments with decimeter-level accuracy.
基于普适姿态估计的跌倒检测
跌倒是全世界意外或非故意伤害/死亡的第二大原因。使用商品移动设备进行准确的姿势估计将有助于早期发现和评估跌倒的伤害,这对老年人跌倒的急救至关重要。根据跌倒的定义,我们提出了一种用于跌倒检测的普适姿势估计方案(P \( ^2 \) Est),该方案测量人体倾斜角度和高度的变化。对于倾斜测量,P \( ^2 \) Est在解锁时利用移动设备(例如智能手机)的指向将device坐标系与World坐标系关联起来。对于身高测量,P \( ^2 \) Est利用人在走路时身高保持不变的事实来校准设备和地板之间的压力差。我们已经在各种情况和环境中制作了原型并测试了P \( ^2 \) Est。我们广泛的实验结果表明,P \( ^2 \) Est可以跟踪身体方向,而不管手机放在哪个口袋里。更重要的是,它使手机的气压计能够以分米级的精度检测各种环境中的跌倒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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