João Carvalho, Dorothea Koert, Marek Daniv, Jan Peters
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引用次数: 1
摘要
人们希望未来的机器人能够快速学习新任务,并使所学技能适应不断变化的环境。为此,概率运动原语(Probabilistic Movement Primitives, promp)已被证明是一个很有前途的框架,可以从已演示轨迹的分布中学习可推广的轨迹生成器。然而,在实际应用中,需要高精度的对象操作,promp的精度往往是不够的,特别是当它们是在笛卡尔空间中从外部观察中学习并以有限的控制器增益执行时。因此,我们建议将promp与残差强化学习(RRL)框架结合起来,以解释任务执行过程中位置和方向的修正。特别是,我们使用软Actor-Critic学习名义ProMP轨迹上的残差,并将演示中的可变性作为决策变量合并,以减少RRL的搜索空间。作为概念验证,我们在一个7自由度Franka Emika Panda机器人的3D块插入任务上评估了我们提出的方法。实验结果表明,机器人成功地完成了插入,这是以前使用基本promp无法完成的。
Adapting Object-Centric Probabilistic Movement Primitives with Residual Reinforcement Learning
It is desirable for future robots to quickly learn new tasks and adapt learned skills to constantly changing environments. To this end, Probabilistic Movement Primitives (ProMPs) have shown to be a promising framework to learn generalizable trajectory generators from distributions over demonstrated trajectories. However, in practical applications that require high precision in the manipulation of objects, the accuracy of ProMPs is often insufficient, in particular when they are learned in cartesian space from external observations and executed with limited controller gains. Therefore, we propose to combine ProMPs with the Residual Reinforcement Learning (RRL) framework, to account for both, corrections in position and orientation during task execution. In particular, we learn a residual on top of a nominal ProMP trajectory with Soft Actor-Critic and incorporate the variability in the demonstrations as a decision variable to reduce the search space for RRL. As a proof of concept, we evaluate our proposed method on a 3D block insertion task with a 7-DoF Franka Emika Panda robot. Experimental results show that the robot successfully learns to complete the insertion, which was not possible before with using basic ProMPs.