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Synthesizing goal-directed actions from a library of example movements

机译:从示例动作库中合成目标导向的动作

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We present a new learning framework for synthesizing goal-directed actions from example movements. The approach is based on the memorization of training data and locally weighted regression to compute suitable movements for a large range of situations. The proposed method avoids making specific assumptions about an adequate representation of the task. Instead, we use a general representation based on fifth order splines. The data used for learning comes either from the observation of events in the Cartesian space or from the actual movement execution on the robot. Thus it informs us about the appropriate motion in the example situations. We show that by applying locally weighted regression to such data, we can generate actions having proper dynamics to solve the given task. To test the validity of the approach, we present simulation results under various conditions as well as experiments on a real robot.
机译:我们为综合示例移动综合目标导向的动作提供了一个新的学习框架。该方法基于培训数据和本地加权回归的记忆,以计算大量情况的合适运动。所提出的方法避免了对任务的足够表示的特定假设。相反,我们使用基于第五级样条的一般表示。用于学习的数据来自观察笛卡尔空间中的事件或从机器人上的实际运动执行。因此,它向我们通知我们在示例情况下适当的运动。我们表明,通过对这些数据应用本地加权回归,我们可以生成具有正确动态的动作来解决给定任务。为了测试该方法的有效性,我们在各种条件下显示仿真结果以及真实机器人的实验。

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