Litcius/Paper detail

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

Giulio Schiavi, Paula Wulkop, G. Rizzi, Lionel Ott, Roland Siegwart, Jen Jen Chung

202314 citationsDOI

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%).

Topics & Concepts

AffordanceComputer scienceTask (project management)Pipeline (software)Closing (real estate)InferenceArtificial intelligenceHuman–computer interactionRobotControl (management)EngineeringLawSystems engineeringPolitical scienceProgramming languageRobot Manipulation and LearningReinforcement Learning in RoboticsRobotic Locomotion and Control