Muller Philipp, Begin Marc-Andre, Schauer Thomas, Seel Thomas
IEEE J Biomed Health Inform. 2017 Mar;21(2):312-319. doi: 10.1109/JBHI.2016.2639537. Epub 2016 Dec 14.
Due to their relative ease of handling and low cost, inertial measurement unit (IMU)-based joint angle measurements are used for a widespread range of applications. These include sports performance, gait analysis, and rehabilitation (e.g., Parkinson's disease monitoring or poststroke assessment). However, a major downside of current algorithms, recomposing human kinematics from IMU data, is that they require calibration motions and/or the careful alignment of the IMUs with respect to the body segments. In this article, we propose a new method, which is alignment-free and self-calibrating using arbitrary movements of the user and an initial zero reference arm pose. The proposed method utilizes real-time optimization to identify the two dominant axes of rotation of the elbow joint. The performance of the algorithm was assessed in an optical motion capture laboratory. The estimated IMU-based angles of a human subject were compared to the ones from a marker-based optical tracking system. The self-calibration converged in under 9.5 s on average and the rms errors with respect to the optical reference system were 2.7° for the flexion/extension and 3.8° for the pronation/supination angle. Our method can be particularly useful in the field of rehabilitation, where precise manual sensor-to-segment alignment as well as precise, predefined calibration movements are impractical.
由于基于惯性测量单元(IMU)的关节角度测量相对易于操作且成本较低,因此在广泛的应用中得到了使用。这些应用包括运动表现、步态分析和康复(例如,帕金森病监测或中风后评估)。然而,当前从IMU数据重构人体运动学的算法的一个主要缺点是,它们需要校准运动和/或IMU相对于身体节段的精确对齐。在本文中,我们提出了一种新方法,该方法无需对齐,并且使用用户的任意运动和初始零参考手臂姿势进行自校准。所提出的方法利用实时优化来识别肘关节的两个主要旋转轴。该算法的性能在光学运动捕捉实验室中进行了评估。将基于IMU估计的人体受试者角度与基于标记的光学跟踪系统的角度进行了比较。自校准平均在9.5秒内收敛,相对于光学参考系统的均方根误差,屈伸角度为2.7°,旋前/旋后角度为3.8°。我们的方法在康复领域可能特别有用,在该领域中,精确的手动传感器到节段对齐以及精确的、预定义的校准运动是不切实际的。