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Iterative residual policy: For goal-conditioned dynamic manipulation of deformable objects

Cheng Chi, Benjamin Burchfiel, Eric Cousineau, Siyuan Feng, Shuran Song

2023The International Journal of Robotics Research16 citationsDOI

Abstract

This paper tackles the task of goal-conditioned dynamic manipulation of deformable objects. This task is highly challenging due to its complex dynamics (introduced by object deformation and high-speed action) and strict task requirements (defined by a precise goal specification). To address these challenges, we present Iterative Residual Policy (IRP), a general learning framework applicable to repeatable tasks with complex dynamics. IRP learns an implicit policy via delta dynamics—instead of modeling the entire dynamical system and inferring actions from that model, IRP learns delta dynamics that predict the effects of delta action on the previously observed trajectory. When combined with adaptive action sampling, the system can quickly optimize its actions online to reach a specified goal. We demonstrate the effectiveness of IRP on two tasks: whipping a rope to hit a target point and swinging a cloth to reach a target pose. Despite being trained only in simulation on a fixed robot setup, IRP is able to efficiently generalize to noisy real-world dynamics, new objects with unseen physical properties, and even different robot hardware embodiments, demonstrating its excellent generalization capability relative to alternative approaches.

Topics & Concepts

Computer scienceTask (project management)GeneralizationAction (physics)Artificial intelligenceTrajectoryObject (grammar)ResidualRobotRopeSystem dynamicsDynamics (music)Point (geometry)AlgorithmEngineeringQuantum mechanicsAstronomyMathematicsMathematical analysisGeometrySystems engineeringPhysicsAcousticsRobot Manipulation and LearningReinforcement Learning in RoboticsSoft Robotics and Applications
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