Team Delft's Robot Winner of the Amazon Picking Challenge 2016
October 18, 2016 Β· Declared Dead Β· π Robot Soccer World Cup
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Authors
Carlos Hernandez, Mukunda Bharatheesha, Wilson Ko, Hans Gaiser, Jethro Tan, Kanter van Deurzen, Maarten de Vries, Bas Van Mil, Jeff van Egmond, Ruben Burger, Mihai Morariu, Jihong Ju, Xander Gerrmann, Ronald Ensing, Jan Van Frankenhuyzen, Martijn Wisse
arXiv ID
1610.05514
Category
cs.RO: Robotics
Citations
161
Venue
Robot Soccer World Cup
Last Checked
4 months ago
Abstract
This paper describes Team Delft's robot, which won the Amazon Picking Challenge 2016, including both the Picking and the Stowing competitions. The goal of the challenge is to automate pick and place operations in unstructured environments, specifically the shelves in an Amazon warehouse. Team Delft's robot is based on an industrial robot arm, 3D cameras and a customized gripper. The robot's software uses ROS to integrate off-the-shelf components and modules developed specifically for the competition, implementing Deep Learning and other AI techniques for object recognition and pose estimation, grasp planning and motion planning. This paper describes the main components in the system, and discusses its performance and results at the Amazon Picking Challenge 2016 finals.
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