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Learning to control planar hitting motions in a minigolf-like task

机译:学习在类似迷你高尔夫球的任务中控制平面击球运动

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A current trend in robotics is to define robot tasks using a combination of superimposed motion patterns. For maximum versatility of such motion patterns, they should be easily and efficiently adaptable for situations beyond those for which the motion was originally designed. In this work, we show how a challenging minigolf-like task can be efficiently learned by the robot using a basic hitting motion model and a task-specific adaptation of the hitting parameters: hitting speed and hitting angle. We propose an approach to learn the hitting parameters for a minigolf field using a set of provided examples. This is a non-trivial problem since the successful choice of hitting parameters generally represent a highly non-linear, multi-valued map from the situation-representation to the hitting parameters. We show that by limiting the problem to learning one combination of hitting parameters for each input, a high-performance model of the hitting parameters can be learned using only a small set of training data. We compare two statistical methods, Gaussian Process Regression (GPR) and Gaussian Mixture Regression (GMR) in the context of inferring hitting parameters for the minigolf task. We validate our approach on the 7 degrees of freedom Barrett WAM robotic arm in both a simulated and real environment.
机译:机器人技术的当前趋势是使用叠加运动模式的组合来定义机器人任务。为了使这种运动模式具有最大的通用性,它们应该易于有效地适应最初设计运动的情况以外的情况。在这项工作中,我们展示了机器人如何使用基本的击球运动模型和特定于任务的击球参数:击球速度和击球角度来有效地学习具有挑战性的类似迷你高尔夫球的任务。我们提出了一种使用一组提供的示例来学习迷你高尔夫球场的命中参数的方法。这是一个不小的问题,因为成功选择击中参数通常代表从情势表示到击中参数的高度非线性的多值映射。我们表明,通过将问题限制为学习每个输入的击中参数的一种组合,可以仅使用一小组训练数据来学习击中参数的高性能模型。在推断迷你高尔夫任务的命中参数的背景下,我们比较了两种统计方法,即高斯过程回归(GPR)和高斯混合回归(GMR)。我们在模拟和真实环境中的7自由度Barrett WAM机械手臂上验证了我们的方法。

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