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Navigation functions learning from experiments: Application to anthropomorphic grasping

机译:从实验中学习导航功能:在拟人化掌握中的应用

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This paper proposes a method to construct Navigation Functions (NF) from experimental trajectories in an unknown environment. We want to approximate an unknown obstacle function and then use it within an NF. When navigating the same destinations with the experiments, this NF should produce the same trajectories as the experiments. This requirement is equivalent to a partial differential equation (PDE). Solving the PDE yields the unknown obstacle function, expressed with spline basis functions. We apply this new method to anthropomorphic grasping, producing automatic trajectories similar to the observed ones. The grasping experiments were performed for a set of different objects, Principal Component Analysis (PCA) allows reduction of the configuration space dimension, where the learning NF method is then applied.
机译:本文提出了一种在未知环境中从实验轨迹构建导航功能(NF)的方法。我们希望近似未知的障碍物功能,然后在NF内使用它。当使用实验导航相同的目的地时,该NF应该产生与实验相同的轨迹。该要求等同于局部微分方程(PDE)。解决PDE产生未知的障碍物功能,以花键基函数表示。我们将这种新方法应用于人为掌握,产生类似于观察到的轨迹。对一组不同物体进行抓握实验,主成分分析(PCA)允许减小配置空间尺寸,然后应用学习NF方法。

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