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Human pose recovery using wireless inertial measurement units

机译:使用无线惯性测量单元的人体姿势恢复

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摘要

Many applications in rehabilitation and sports training require the assessment of the patient's status based on observation of their movement. Small wireless sensors, such as accelerometers and gyroscopes, can be utilized to provide a quantitative measure of the human movement for assessment. In this paper, a kinematics-based approach is developed to estimate human leg posture and velocity from wearable sensors during the performance of typical physiotherapy and training exercises. The proposed approach uses an extended Kalman filter to estimate joint angles from accelerometer and gyroscopic data and is capable of recovering joint angles from arbitrary 3D motion. Additional joint limit constraints are implemented to reduce drift, and an automated approach is developed for estimating and adapting the process noise during online estimation. The approach is validated through a user study consisting of 20 subjects performing knee and hip rehabilitation exercises. When compared to motion capture, the approach achieves an average root-mean-square error of 4.27 cm for unconstrained motion, with an average joint error of 6.5°. The average root-mean-square error is 3.31 cm for sagittal planar motion, with an average joint error of 4.3°.
机译:在康复和运动训练中的许多应用都需要基于对患者运动的观察来评估患者的状况。诸如加速度计和陀螺仪之类的小型无线传感器可用于对人体运动进行定量测量以进行评估。在本文中,开发了一种基于运动学的方法,可以在典型的理疗和训练锻炼过程中通过可穿戴式传感器估算人的腿部姿势和速度。所提出的方法使用扩展的卡尔曼滤波器从加速度计和陀螺仪数据估计关节角度,并且能够从任意3D运动中恢复关节角度。实现了附加的联合极限约束以减少漂移,并且开发了一种自动方法来估计和调整在线估计期间的过程噪声。该方法通过一项由20名受试者进行的膝盖和髋关节康复锻炼的用户研究得到验证。与运动捕捉相比,该方法在无约束运动下的平均均方根误差为4.27 cm,平均关节误差为6.5°。矢状平面运动的平均均方根误差为3.31 cm,平均关节误差为4.3°。

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