4.6 Article

Learning Pneumatic Non-Prehensile Manipulation With a Mobile Blower

期刊

IEEE ROBOTICS AND AUTOMATION LETTERS
卷 7, 期 3, 页码 8471-8478

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2022.3187833

关键词

Deep learning methods; reinforcement learning; mobile manipulation

类别

资金

  1. Princeton School of Engineering
  2. National Science Foundation [IIS-1815070, DGE-1656466]

向作者/读者索取更多资源

This study investigates pneumatic non-prehensile manipulation (i.e., blowing) as an efficient method for moving scattered objects into a target receptacle. Using a multi-frequency version of the spatial action maps framework in the context of deep reinforcement learning, the research tackles the challenges of adapting to unexpected changes, maintaining fine-grained control, and inferring long-range plans. Experimental results demonstrate that blowing achieves better performance than pushing and that the proposed policies improve performance over baselines. The study also shows that the system encourages emergent specialization between low-level fine-grained control and high-level planning.
We investigate pneumatic non-prehensile manipulation (i.e., blowing) as a means of efficiently moving scattered objects into a target receptacle. Due to the chaotic nature of aerodynamic forces, a blowing controller must i) continually adapt to unexpected changes from its actions, ii) maintain fine-grained control, since the slightest misstep can result in large unintended consequences (e.g., scatter objects already in a pile), and iii) infer long-range plans (e.g., move the robot to strategic blowing locations). We tackle these challenges in the context of deep reinforcement learning, introducing a multi-frequency version of the spatial action maps framework. This allows for efficient learning of vision-based policies that effectively combine high-level planning and low-level closed-loop control for dynamic mobile manipulation. Experiments show that our system learns efficient behaviors for the task, demonstrating in particular that blowing achieves better downstream performance than pushing, and that our policies improve performance over baselines. Moreover, we show that our system naturally encourages emergent specialization between the different subpolicies spanning low-level fine-grained control and high-level planning. On a real mobile robot equipped with a miniature air blower, we show that our simulation-trained policies transfer well to a real environment and can generalize to novel objects.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.6
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

暂无数据
暂无数据