基于运动传播预测的Sim2Real策略移动杂波去除

Jiaxin Zhang, Ping Zhang
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引用次数: 0

摘要

在物体密集的情况下,利用人工样本进行模拟训练,去除杂波有助于降低成本和风险。然而,控制策略在sim2real中的性能下降仍然是一个挑战。介绍了一种基于目标运动传播预测的sim2real图像杂波去除方法。该方法基于深度强化学习,采用推和抓动作去除杂波。根据四叉树的目标散度计算推送动作的奖励。在仿真环境中训练动作策略。针对机器人在仿真和真实环境中推动物体所产生的位置误差,采用基于图神经网络的物体运动传播预测网络来预测真实环境中的推动结果,并代替真实的推动动作来训练推动策略,以提高奖励值。在模拟中学习到的推策略是基于差分进化进行微调的。与将行动策略直接应用于实际环境相比,本文方法具有更高的行动效率和完成率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Motion Propagation Prediction based Sim2Real Strategy Migration for Clutter Removal
When objects are densely placed, training in the simulation with artificial samples and removing clutter are helpful to reduce the cost and risk. However, the performance of control strategy decreases in sim2real is still a challenge. This paper introduces a clutter removal method of sim2real using object motion propagation prediction. In this method, based on deep reinforcement learning, push and grasp actions are used to remove clutter. The reward of push action is calculated based on the object divergence of quadtree. The action strategy is trained in the simulation environment. Due to the position error caused by the robot pushing the object in the simulation and real environment, the object motion propagation prediction network based on graph neural network is used to predict the pushing results in the real environment and replace the real push action to training pushing strategy to improve the reward value. The pushing strategy learned in the simulation is subject to fine-tuning based on differential evolution. Compared with applying the action strategy directly to the real environment, the method in this paper has higher action efficiency and completion rate.
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