Accelerometer Placement for Posture Recognition and Fall Detection

H. Gjoreski, M. Luštrek, M. Gams
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引用次数: 199

Abstract

This paper presents an approach to fall detection with accelerometers that exploits posture recognition to identify postures that may be the result of a fall. Posture recognition as a standalone task was also studied. Nine placements of up to four sensors were considered: on the waist, chest, thigh and ankle. The results are compared to the results of a system using ultra wide band location sensors on a scenario consisting of events difficult to recognize as falls or non-falls. Three accelerometers proved sufficient to correctly recognize all the events except one(a slow fall). The location-based system was comparable to two accelerometers, except that it was able to recognize the slow fall because it resulted in lying outside the bed, whose location was known to the system. One accelerometer was able to recognize only the most clear-cut fall. Two accelerometers achieved over 90% accuracy of posture recognition, which was better than the location-based system. Chest and waist accelerometers proved best at both tasks, with the chest accelerometer having a slight advantage in posture recognition.
姿态识别和跌倒检测的加速度计放置
本文提出了一种使用加速度计进行跌倒检测的方法,该方法利用姿势识别来识别可能是跌倒的结果的姿势。姿势识别作为一个独立的任务也进行了研究。研究人员考虑了九个位置,最多四个传感器:腰部、胸部、大腿和脚踝。将结果与使用超宽带定位传感器的系统的结果进行比较,该系统的结果由难以识别为跌倒或非跌倒的事件组成。三个加速度计被证明足以正确识别所有事件,除了一个(缓慢下降)。基于位置的系统与两个加速度计相当,除了它能够识别缓慢下降,因为它导致躺在床外,而系统知道床的位置。其中一个加速度计只能识别出最清晰的坠落。两个加速度计的姿态识别准确率超过90%,优于基于位置的系统。胸部和腰部加速度计在两项任务中都被证明是最好的,胸部加速度计在姿势识别方面有轻微的优势。
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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