Atrsaei Arash, Salarieh Hassan, Alasty Aria
J Biomech Eng. 2016 Sep 1;138(9). doi: 10.1115/1.4034170.
Due to various applications of human motion capture techniques, developing low-cost methods that would be applicable in nonlaboratory environments is under consideration. MEMS inertial sensors and Kinect are two low-cost devices that can be utilized in home-based motion capture systems, e.g., home-based rehabilitation. In this work, an unscented Kalman filter approach was developed based on the complementary properties of Kinect and the inertial sensors to fuse the orientation data of these two devices for human arm motion tracking during both stationary shoulder joint position and human body movement. A new measurement model of the fusion algorithm was obtained that can compensate for the inertial sensors drift problem in high dynamic motions and also joints occlusion in Kinect. The efficiency of the proposed algorithm was evaluated by an optical motion tracker system. The errors were reduced by almost 50% compared to cases when either inertial sensor or Kinect measurements were utilized.
由于人体运动捕捉技术的各种应用,正在考虑开发适用于非实验室环境的低成本方法。微机电系统(MEMS)惯性传感器和Kinect是两种可用于家庭运动捕捉系统的低成本设备,例如家庭康复。在这项工作中,基于Kinect和惯性传感器的互补特性,开发了一种无迹卡尔曼滤波器方法,以融合这两种设备的方向数据,用于在静止肩关节位置和人体运动期间跟踪人体手臂运动。获得了一种融合算法的新测量模型,该模型可以补偿高动态运动中惯性传感器的漂移问题以及Kinect中的关节遮挡问题。通过光学运动跟踪器系统评估了所提出算法的效率。与仅使用惯性传感器测量或Kinect测量的情况相比,误差降低了近50%。