Learning Agent-Aware Affordances for Closed-Loop Interaction with Articulated Objects.

Giulio Schiavi*   Paula Wulkop*   Giuseppe Rizzi   Lionel Ott   Roland Siegwart   Jen Jen Chung1
* equal contribution

Authors are with the Autonomous Systems Lab, ETH Zurich, Switzerland.
1Also with the School of ITEE, The University of Queensland, Australia.

This paper was accepted at the 2023 IEEE International Conference on Robotics and Automation (ICRA).

You can find more information here: [Paper] [Code]

Abstract

Interactions with articulated objects are a challenging but important task for mobile robots. To tackle this challenge, we propose a novel closed-loop control pipeline, which integrates manipulation priors from affordance estimation with sampling-based whole-body control. We introduce the concept of agent-aware affordances which fully reflect the agent’s capabilities and embodiment and we show that they outperform their state-of-the-art counterparts which are only conditioned on the end-effector geometry. Additionally, closed-loop affordance inference is found to allow the agent to divide a task into multiple non-continuous motions and recover from failure and unexpected states. Finally, the pipeline is able to perform long-horizon mobile manipulation tasks, i.e. opening and closing an oven, in the real world with high success rates (opening: 71%, closing: 72%).

Video


Citation

Please cite our paper as:

@misc{schiavi2022learning,
  title={Learning Agent-Aware Affordances for Closed-Loop Interaction with Articulated Objects},
  author={Giulio Schiavi and Paula Wulkop and Giuseppe Rizzi and Lionel Ott and Roland Siegwart and Jen Jen Chung},
  year={2022},
}

Acknowledgment

This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 101017008 (Harmony).