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Few-experiential learning system of robotic picking task with selective dual-arm grasping
Authors:Shingo Kitagawa  Kentaro Wada  Shun Hasegawa  Kei Okada  Masayuki Inaba
Affiliation:1. Graduate School of Information Science and Technology, The University of Tokyo, Bunkyo-ku, Tokyo, Japan s-kitagawa@jsk.imi.i.u-tokyo.ac.jp;3. Dyson Robotics Laboratory, Imperial College London, South Kensington, London, UK;4. Graduate School of Information Science and Technology, The University of Tokyo, Bunkyo-ku, Tokyo, Japan
Abstract:Recently, robots are introduced to warehouses and factories for automation and are expected to execute dual-arm manipulation as human does and to manipulate large, heavy and unbalanced objects. We focus on target picking task in the cluttered environment and aim to realize a robot picking system which the robot selects and executes proper grasping motion from single-arm and dual-arm motion. In this paper, we propose a few-experiential learning-based target picking system with selective dual-arm grasping. In our system, a robot first learns grasping points and object semantic and instance label with automatically synthesized dataset. The robot then executes and collects grasp trial experiences in the real world and retrains the grasping point prediction model with the collected trial experiences. Finally, the robot evaluates candidate pairs of grasping object instance, strategy and points and selects to execute the optimal grasping motion. In the experiments, we evaluated our system by conducting target picking task experiments with a dual-arm humanoid robot Baxter in the cluttered environment as warehouse.
Keywords:Manipulation learning  grasping  dual-arm manipulation
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