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Compliant Parametric Dynamic Movement Primitives

机译:符合参数的动态运动原语

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In this paper, we propose and implement an advanced manipulation framework that enables parametric learning of complex action trajectories along with their haptic feedback profiles. Our framework extends Dynamic Movement Primitives (DMPs) method with a new parametric nonlinear shaping function and a novel force-feedback coupling term. The nonlinear trajectories of the action control variables and the haptic feedback trajectories measured during execution are encoded with parametric temporal probabilistic models, namely parametric hidden Markov models (PHMMs). PHMMs enable autonomous segmentation of a taught skill based on the statistical information extracted from multiple demonstrations, and learning the relations between the model parameters and the properties extracted from the environment. Hidden states with high-variances in observation probabilities are interpreted as parts of the skill that could not be reliably learned and autonomously executed due to possibly uncertain or missing information about the environment. In those parts, our proposed force-feedback coupling term, which computes the deviation of the actual force feedback from the one predicted by the force-feedback PHMM, acts as a compliance term, enabling a human to scaffold the ongoing movement trajectory to accomplish the task. Our method is verified in a number of tasks including a real pick and place task that involves obstacles of different heights. Our robot, Baxter, successfully learned to generate the trajectory taking into the heights of the obstacles, move its end effector stiffly (and accurately) along the generated trajectory while passing through apertures, and allow human-robot collaboration in the autonomously detected segments of the motion, for example, when the gripper picks up the object whose position is not provided to the robot.
机译:在本文中,我们提出并实现了一种先进的操作框架,该框架能够对复杂的动作轨迹及其触觉反馈特性进行参数学习。我们的框架通过新的参数非线性整形函数和新的力反馈耦合项扩展了动态运动基元(DMP)方法。使用参数时间概率模型,即参数隐马尔可夫模型(PHMM),对动作控制变量的非线性轨迹和执行期间测得的触觉反馈轨迹进行编码。 PHMM可以根据从多个演示中提取的统计信息,对所学技能进行自动分段,并学习模型参数与从环境中提取的属性之间的关系。具有高观测概率差异的隐藏状态被解释为由于可能不确定或缺少有关环境的信息而无法可靠学习和自主执行的技能的一部分。在这些部分中,我们提出的力反馈耦合项可以用来计算实际力反馈与力反馈PHMM预测的力反馈的偏差,它可以作为顺应项,使人们能够支撑正在进行的运动轨迹以完成运动。任务。我们的方法已在许多任务中得到验证,包括涉及不同高度障碍物的实际拾取和放置任务。我们的机器人百特(Baxter)成功地学会了生成包含障碍物高度的轨迹,使末端执行器在穿过孔径的同时沿生成的轨迹坚硬(准确)移动,并允许人机协作在机器人自主检测的区域内进行协作。例如,当抓取器捡起位置未提供给机器人的物体时,会发生动作。

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