Department of Mechanical Engineering, Virginia Tech, Blacksburg, VA 24061, USA.
Department of Electrical & Computer Engineering, Virginia Tech, Blacksburg, VA 24061, USA.
Sensors (Basel). 2022 Mar 16;22(6):2300. doi: 10.3390/s22062300.
For upper extremity rehabilitation, quantitative measurements of a person's capabilities during activities of daily living could provide useful information for therapists, including in telemedicine scenarios. Specifically, measurements of a person's upper body kinematics could give information about which arm motions or movement features are in need of additional therapy, and their location within the home could give context to these motions. To that end, we present a new algorithm for identifying a person's location in a region of interest based on a Bluetooth received signal strength (RSS) and present an experimental evaluation of this and a different Bluetooth RSS-based localization algorithm via fingerprinting. We further present algorithms for and experimental results of inferring the complete upper body kinematics based on three standalone inertial measurement unit (IMU) sensors mounted on the wrists and pelvis. Our experimental results for localization find the target location with a mean square error of 1.78 m. Our kinematics reconstruction algorithms gave lower errors with the pelvis sensor mounted on the person's back and with individual calibrations for each test. With three standalone IMUs, the mean angular error for all of the upper body segment orientations was close to 21 degrees, and the estimated elbow and shoulder angles had mean errors of less than 4 degrees.
对于上肢康复,日常生活活动中对人的能力进行定量测量可以为治疗师提供有用的信息,包括在远程医疗场景中。具体来说,人体上身运动学的测量可以提供有关需要额外治疗的手臂运动或运动特征的信息,以及它们在家庭中的位置可以为这些运动提供背景信息。为此,我们提出了一种新的基于蓝牙接收信号强度(RSS)的算法,用于识别目标在感兴趣区域的位置,并通过指纹识别对该算法和另一种基于蓝牙 RSS 的定位算法进行了实验评估。我们进一步提出了基于三个独立的惯性测量单元(IMU)传感器安装在手腕和骨盆上的完整上身运动学的推断算法和实验结果。我们的定位实验结果表明,目标位置的均方根误差为 1.78 米。当骨盆传感器安装在人的背部并且对每个测试进行单独校准时,我们的运动学重建算法的误差较小。使用三个独立的 IMU,所有上身段方向的平均角度误差接近 21 度,并且估计的肘部和肩部角度的平均误差小于 4 度。