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Uncertainty-based Human Motion Tracking with Stable Gaussian Process State Space Models

机译:基于不确定性的人体运动跟踪,具有稳定的高斯过程状态空间模型

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Data-driven approaches are well suited to represent human motion because arbitrary complex trajectories can be captured. Gaussian process state space models allow to encode human motion while quantifying uncertainty due to missing data. Such human motion models are relevant for many application domains such as learning by demonstration and motion prediction in human-robot collaboration. For goal-directed tasks it is essential to impose stability constraints on the model representing the human motion. Motivated by learning by demonstration applications, this paper proposes an uncertainty-based control Lyapunov function approach for goal-directed path tracking. We exploit the model fidelity which is related to the location of the training and test data: Our approach actively strives into regions with more demonstration data and thus higher model certainty. This achieves accurate reproduction of the human motion independent of the initial condition and we show that generated trajectories are uniformly globally asymptotically stable. The approach is validated in a nonlinear learning by demonstration task where human-demonstrated motions are reproduced by the learned dynamical system, and higher precision than competitive state of the art methods is achieved.
机译:数据驱动的方法非常适合代表人类运动,因为可以捕获任意复杂的轨迹。高斯过程状态空间模型允许编码人类运动,同时量化由于缺失数据而定量不确定性。这种人类运动模型对于许多应用领域是相关的,例如通过人机协作中的示范和运动预测学习。对于目标定向任务,必须对代表人类运动的模型施加稳定限制。通过演示应用程序的激励,本文提出了一种基于不确定性的控制Lyapunov功能方法,用于目标定向路径跟踪。我们利用与培训和测试数据的位置有关的模型保真度:我们的方法积极努力进入具有更多示范数据的地区,从而更高的模型确定性。这实现了独立于初始条件的人体运动的精确再现,并且我们表明产生的轨迹均匀地全局渐近稳定。通过演示任务在非线性学习中验证了该方法,其中通过学习的动态系统再现人类展示的运动,并且实现了比现有技术方法的竞争状态更高的精度。

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