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Pose estimation in physical human-machine interactions with application to bicycle riding

机译:人机互动中的姿势估计及其在自行车骑行中的应用

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Tracking whole-body human pose in physical human-machine interactions such as bicycling is challenging because of highly-dimensional human motions and lack of inexpensive, effective motion sensors in outdoor environment. In this paper, we present a computational scheme to estimate the whole-body pose in human-machine interaction with application to the rider-bicycle system. The estimation scheme is built on the fusions of gyroscopes, accelerometers and force sensors with six Extended Kalman filter designs. The use of physical human-machine interaction constraints further helps to eliminate the integration drifts of inertial sensors measurements and also to reduce the number of the inertial sensors for whole-body pose estimation. For each set of upper- and lower-limb, only one tri-axial gyroscope is needed to accurately obtain the pose information. The performance of the drift-free, reliable estimation scheme is demonstrated through both the indoor and outdoor bicycle riding experiments. The proposed approach can be further extended to other types of physical human-machine interactions.
机译:由于人体运动的维度高,并且在室外环境中缺乏廉价,有效的运动传感器,因此在诸如自行车的人机交互中跟踪人体的整体姿势是一项挑战。在本文中,我们提出了一种计算方案,以估计人机交互中的全身姿势,并将其应用于骑行自行车系统。该估计方案基于陀螺仪,加速度计和力传感器与六种扩展卡尔曼滤波器设计的融合。物理人机交互约束的使用进一步有助于消除惯性传感器测量的积分漂移,并且还减少了用于全身姿势估计的惯性传感器的数量。对于每组上肢和下肢,仅需要一个三轴陀螺仪即可准确获取姿势信息。通过室内和室外自行车骑行实验证明了无漂移,可靠的估计方案的性能。所提出的方法可以进一步扩展到其他类型的物理人机交互。

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