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Manipulator motion planning using flexible obstacle avoidance based on model learning

机译:基于模型学习的灵活障碍避免,操纵器运动规划

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摘要

Traditional manipulator motion planning methods aim to find collision-free paths. But in highly cluttered environments, it is hard to find available solutions. We present a novel motion planning strategy which integrates the sampling-based path planning algorithm with the flexible obstacle avoidance approach for finding the efficient path through changing poses of movable obstacles. Following the resulting path, the manipulator can push the obstacles away and move to the target simultaneously. For dealing with the safety issue of the interaction between manipulator and obstacles, a learning-based motion modeling method is proposed for motion prediction of the obstacles being pushed by manipulator, and then the trained models are utilized in the motion planning. The results from both simulations and real robot experiments show that the proposed method can generate efficient paths which cannot be solved by traditional method.
机译:传统的操纵器运动计划方法旨在找到无碰撞路径。 但在高度凌乱的环境中,很难找到可用的解决方案。 我们提出了一种新的运动规划策略,其集成了基于采样的路径规划算法,通过改变可移动障碍物的姿势来寻找有效路径的柔性障碍方法。 在得到的路径之后,操纵器可以将障碍物推开并同时移动到目标。 为了处理操纵器和障碍物之间的相互作用的安全问题,提出了一种基于学习的运动建模方法,用于由操纵器推动的障碍物的运动预测,然后在运动规划中使用训练型模型。 两种模拟和真实机器人实验的结果表明,所提出的方法可以产生高效的路径,该路径不能通过传统方法解决。

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