Litcius/Paper detail

Total Singulation With Modular Reinforcement Learning

Iason Sarantopoulos, Marios Kiatos, Zoe Doulgeri, Sotiris Malassiotis

2021IEEE Robotics and Automation Letters25 citationsDOIOpen Access PDF

Abstract

Prehensile robotic grasping of a target object in clutter is challenging because, in such conditions, the target touches other objects, resulting to the lack of collision free grasp affordances. To address this problem, we propose a modular reinforcement learning method which uses continuous actions to totally singulate the target object from its surrounding clutter. A high level policy selects between pushing primitives, which are learned separately. Prior knowledge is effectively incorporated into learning, through action primitives and feature selection, increasing sample efficiency. Experiments demonstrate that the proposed method considerably outperforms the state-of-the-art methods in the singulation task. Furthermore, although training is performed in simulation the learned policy is robustly transferred to a real environment without a significant drop in success rate. Finally, singulation tasks in different environments are addressed by easily adding a new primitive and by retraining only the high level policy.

Topics & Concepts

Reinforcement learningModular designComputer scienceAffordanceArtificial intelligenceGRASPTask (project management)Object (grammar)ClutterMachine learningHuman–computer interactionEngineeringRadarProgramming languageSystems engineeringOperating systemTelecommunicationsRobot Manipulation and LearningSoft Robotics and ApplicationsMuscle activation and electromyography studies