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Full body human motion estimation on lie groups using 3D marker position measurements

机译:使用3D标记位置测量值对测谎组进行全身人体运动估计

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This paper proposes a new algorithm for full body human motion estimation using 3D marker position measurements. The joints are represented with Lie group members, including special orthogonal groups SO(2) and SO(3), and a special euclidean group SE(3). We employ the Lie Group Extended Kalman Filter (LG-EKF) for stochastic inference on groups, thus explicitly accounting for the non-euclidean geometry of the state space, and provide the derivation of the LG-EKF recursion for articulated motion estimation. We evaluate the performance of the proposed algorithm in both simulation and on real-world motion capture data, comparing it with the Euler angles based EKF. The results show that the proposed filter significantly outperforms the Euler angles based EKF, since it estimates human motion more accurately and is not affected by gimbal lock.
机译:本文提出了一种使用3D标记位置测量进行人体人体运动估计的新算法。关节用李群成员表示,包括特殊的正交群SO(2)和SO(3),以及特殊的欧几里得群SE(3)。我们使用李群扩展卡尔曼滤波器(LG-EKF)来对群进行随机推断,从而明确考虑状态空间的非欧几里得几何,并提供LG-EKF递归进行关节运动估计。我们将其与基于欧拉角的EKF进行比较,以评估仿真算法和真实运动捕获数据的性能。结果表明,所提出的滤波器明显优于基于欧拉角的EKF,因为它可以更准确地估计人体运动并且不受万向节锁定的影响。

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