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Quantification of gait parameters with inertial sensors and inverse kinematics

机译:具有惯性传感器和逆运动学的步态参数的定量

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Measuring human gait is important in medicine to obtain outcome parameter for therapy, for instance in Parkinson's disease. Recently, small inertial sensors became available which allow for the registration of limb-position outside of the limited space of gait laboratories. The computation of gait parameters based on such recordings has been the subject of many scientific papers. We want to add to this knowledge by presenting a 4-segment leg model which is based on inverse kinematic and Kalman filtering of data from inertial sensors. To evaluate the model, data from four leg segments (shanks and thighs) were recorded synchronously with accelerometers and gyroscopes and a 3D motion capture system while subjects (n = 12) walked at three different velocities on a treadmill. Angular position of leg segments was computed from accelerometers and gyroscopes by Kalman filtering and compared to data from the motion capture system. The four-segment leg model takes the stance foot as a pivotal point and computes the position of the remaining segments as a kinematic chain (inverse kinematics). Second, we evaluated the contribution of pelvic movements to the model and evaluated a five segment model (shanks, thighs and pelvis) against ground-truth data from the motion capture system and the path of the treadmill. Results: We found the precision of the Kalman filtered angular position is in the range of 2-6 degrees (RMS error). The 4-segment leg model computed stride length and length of gait path with a constant undershoot of 3% for slow and 7% for fast gait. The integration of a 5th segment (pelvis) into the model increased its precision. The advantages of this model and ideas for further improvements are discussed. (C) 2018 Elsevier Ltd. All rights reserved.
机译:测量人体步态在医学中是重要的,以获得治疗的结果参数,例如在帕金森病中。最近,可以获得小型惯性传感器,允许在步态实验室的有限空间之外注册肢体位置。基于此类录音的步态参数的计算是许多科学论文的主题。我们想通过呈现一个4段杠杆模型来增加本知识,该腿模型是基于惯性传感器的数据的反向运动和卡尔曼滤波。为了评估模型,来自四个腿段(柄和大腿)的数据与加速度计和陀螺仪和3D运动捕获系统同步地记录,而受试者(n = 12)在跑步机上的三个不同的速度下行走。通过卡尔曼滤波从加速度计和陀螺仪计算腿段的角度位置,并与来自运动捕获系统的数据进行比较。四个段腿模型作为枢转点将姿态脚带到枢轴点,并计算剩余段作为运动链(逆运动学)的位置。其次,我们评估了盆腔运动对模型的贡献,并从运动捕获系统和跑步机的路径中评估了五个段模型(柄,大腿和骨盆)和跑步机的路径。结果:我们发现卡尔曼滤波的角度位置的精度在2-6度(rms误差)的范围内。 4分段腿模型计算的步伐长度和步态路径的长度,恒定的下冲,速度为3%,7%用于快速步态。第五段(骨盆)的集成到模型中提高了精度。讨论了这种模型的优势和进一步改进的想法。 (c)2018年elestvier有限公司保留所有权利。

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