Joint angles tracking for rehabilitation at home using inertial sensors: a feasibility study

Ana Pereira, V. Guimarães, I. Sousa
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引用次数: 13

Abstract

Joint angles are commonly measured in physical rehabilitation to evaluate joint function. Evidences showed that wearable inertial sensors can accurately quantify human motion information, however, the most advanced and accurate methodologies require the execution of complex calibration movements which are unsuitable to inexpert users and inadequate for a home context. This way, four different joint angles estimation methods requiring no calibration movement were developed in order to track the main human body joint angles in real time. IMUs mounted in bracelets were used to restrict sensor positioning on the limbs. For six different exercises, the estimated absolute and relative joint angles were evaluated against the marker-based video tracking software Kinovea ground-truth. Correlation analysis between estimated and ground-truth joint angles indicated a very strong and statistically significant correlation. The average error in estimated joint angles is below 5 degrees for all four methods employed, which may be an acceptable result for the rehabilitation at home scenario.
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用惯性传感器跟踪关节角度用于家庭康复的可行性研究
关节角通常在物理康复中测量,以评估关节功能。有证据表明,可穿戴惯性传感器可以准确地量化人体运动信息,然而,最先进和准确的方法需要执行复杂的校准运动,这不适合非专业用户,也不适合家庭环境。在此基础上,提出了四种不需要标定运动的关节角度估计方法,实现了对人体主要关节角度的实时跟踪。安装在手环中的imu用于限制传感器在肢体上的定位。对于六种不同的练习,根据基于标记的视频跟踪软件Kinovea ground-truth评估估计的绝对和相对关节角度。估计关节角与真地关节角之间的相关分析表明,相关性非常强,具有统计学意义。所有四种方法估计关节角度的平均误差都在5度以下,这对于家庭康复方案来说可能是可以接受的结果。
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