模仿的艺术:从少量演示中学习远距离操作任务

IF 4.6 2区 计算机科学 Q2 ROBOTICS IEEE Robotics and Automation Letters Pub Date : 2024-10-29 DOI:10.1109/LRA.2024.3487506
Jan Ole von Hartz;Tim Welschehold;Abhinav Valada;Joschka Boedecker
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引用次数: 0

摘要

任务参数化高斯混合模型(TP-GMM)是学习以物体为中心的机器人操纵任务的一种样本高效方法。然而,在野外应用 TP-GMM 时还面临一些挑战。在这项工作中,我们协同应对了三个关键挑战。首先,末端执行器的速度是非欧几里得的,因此很难使用标准 GMM 建模。因此,我们建议将机器人的末端执行器速度因子化为方向和幅度,并使用黎曼 GMM 建立模型。其次,我们利用因子化速度对复杂的演示轨迹进行分割和技能排序。通过分割,我们进一步调整技能轨迹,从而利用时间作为强大的归纳偏倚。第三,我们提出了一种从视觉观察中自动检测每个技能的相关任务参数的方法。我们的方法只需使用 RGB-D 观察结果,就能从五个演示中学习复杂的操作任务。在 RLBench 上进行的广泛实验评估表明,我们的方法达到了最先进的性能,样本效率提高了 20 倍。我们的策略可在不同环境、对象实例和对象位置之间通用,同时所学技能可重复使用。
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The Art of Imitation: Learning Long-Horizon Manipulation Tasks From Few Demonstrations
Task Parametrized Gaussian Mixture Models (TP-GMM) are a sample-efficient method for learning object-centric robot manipulation tasks. However, there are several open challenges to applying TP-GMMs in the wild. In this work, we tackle three crucial challenges synergistically. First, end-effector velocities are non-Euclidean and thus hard to model using standard GMMs. We thus propose to factorize the robot's end-effector velocity into its direction and magnitude, and model them using Riemannian GMMs. Second, we leverage the factorized velocities to segment and sequence skills from complex demonstration trajectories. Through the segmentation, we further align skill trajectories and hence leverage time as a powerful inductive bias. Third, we present a method to automatically detect relevant task parameters per skill from visual observations. Our approach enables learning complex manipulation tasks from just five demonstrations while using only RGB-D observations. Extensive experimental evaluations on RLBench demonstrate that our approach achieves state-of-the-art performance with 20-fold improved sample efficiency. Our policies generalize across different environments, object instances, and object positions, while the learned skills are reusable.
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来源期刊
IEEE Robotics and Automation Letters
IEEE Robotics and Automation Letters Computer Science-Computer Science Applications
CiteScore
9.60
自引率
15.40%
发文量
1428
期刊介绍: The scope of this journal is to publish peer-reviewed articles that provide a timely and concise account of innovative research ideas and application results, reporting significant theoretical findings and application case studies in areas of robotics and automation.
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