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State Estimation for Legged Robots on Unstable and Slippery Terrain

机译:在不稳定和滑动地形上的腿机器人的状态估计

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This paper presents a state estimation approach for legged robots based on stochastic filtering. The key idea is to extract information from the kinematic constraints given through the intermittent contacts with the ground and to fuse this information with inertial measurements. To this end, we design an unscented Kalman filter based on a consistent formulation of the underlying stochastic model. To increase the robustness of the filter, an outliers rejection methodology is included into the update step. Furthermore, we present the nonlinear observability analysis of the system, where, by considering the special nature of 3D rotations, we obtain a relatively simple form of the corresponding observability matrix. This yields, that, except for the global position and the yaw angle, all states are in general observable. This also holds if only one foot is in contact with the ground. The presented filter is evaluated on a real quadruped robot trotting over an uneven and slippery terrain.
机译:本文介绍了基于随机滤波的腿机器人的状态估计方法。关键思想是通过与地面的间歇触点给出的运动约束中提取信息,并利用惯性测量来融合该信息。为此,我们基于底层随机模型的一致配方设计一个无名的卡尔曼滤波器。为了增加滤波器的稳健性,将抑制方法包含在更新步骤中。此外,我们介绍了系统的非线性可观察性分析,其中,通过考虑3D旋转的特殊性,我们获得了相对简单的相应观察性矩阵形式。这种产量,除了全球位置和偏航角外,所有州都是一般可观察的。这也是只有一只脚与地面接触。所呈现的过滤器在真正的四轮机器人上进行评估,在不均匀和滑动的地形上突出。

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