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Exploiting Motion Correlations in 3-D Articulated Human Motion Tracking

机译:利用3-D关节运动追踪中的运动关联

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In 3-D articulated human motion tracking, the curse of dimensionality renders commonly-used particle-filter-based approaches inefficient. Also, noisy image measurements and imperfect feature extraction call for strong motion prior. We propose to learn the correlation between the right-side and the left-side human motion using partial least square (PLS) regression. The correlation effectively constrains the sampling of the proposal distribution to portions of the parameter space that correspond to plausible human motions. The learned correlation is then used as motion prior in designing a Rao–Blackwellized particle filter algorithm, RBPF-PLS, which estimates only one group of state variables using the Monte Carlo method, leaving the other group being exactly computed through an analytical filter that utilizes the learned motion correlation. We quantitatively assessed the accuracy of the proposed algorithm with challenging HumanEva-I/II data set. Experiments with comparison with both the annealed particle filter and the standard particle filter show that the proposed method achieves lower estimation error in processing challenging real-world data of 3-D human motion. In particular, the experiments demonstrate that the learned motion correlation model generalizes well to motions outside of the training set and is insensitive to the choice of the training subjects, suggesting the potential wide applicability of the method.
机译:在3D铰接式人体运动跟踪中,维数的诅咒使基于粒子过滤器的常用方法效率低下。同样,嘈杂的图像测量和不完善的特征提取要求先有强烈的运动。我们建议使用偏最小二乘(PLS)回归学习右侧和左侧人体运动之间的相关性。该相关性有效地将提议分布的采样限制到与合理的人类运动相对应的参数空间部分。然后,在设计Rao–Blackwellized粒子滤波算法RBPF-PLS之前,将学习到的相关性用作运动,该算法使用蒙特卡洛方法仅估计一组状态变量,而另一组则通过使用学习的运动相关性。我们用具有挑战性的HumanEva-I / II数据集定量评估了所提出算法的准确性。与退火粒子滤波器和标准粒子滤波器的比较实验表明,该方法在处理具有挑战性的3D人体运动的真实世界数据时,实现了较低的估计误差。特别地,实验表明,学习的运动相关模型很好地概括了训练集之外的运动,并且对训练对象的选择不敏感,表明该方法的潜在广泛应用性。

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