4.7 Article

Learning-based object detection and localization for a mobile robot manipulator in SME production

Journal

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.rcim.2021.102229

Keywords

Object detection; Mobile manipulator; Localization; SME production

Funding

  1. European Union Regional Fund
  2. Department of Engineering at Aarhus University
  3. China Scholarship Council [201906080023]

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This research focuses on developing a deep learning-based 3D point cloud object detection solution for small and medium-sized enterprise (SME) production processes, using a collaborative mobile robot manipulator to automate production. By utilizing 3D point cloud technology to measure the shape and depth information of targeted objects and employing deep learning to handle uncertainty, successful automatic production experiments have been conducted.
Increasing research attention has been attracted to automatic production processes in small and mediumsized enterprises (SMEs) using collaborative robotic systems. In this work, we develop an object detection solution based on deep learning on 3D point clouds for a collaborative mobile robot manipulator to automate SME production. In this solution, a 3D point cloud technology is adopted to measure the shape and depth information of targeted objects in SME production, for instance, name tags production and plug-in charging. Deep learning is then employed to deal with the uncertainty in 3D detection, such as inconsistent light conditions and the irregular distribution and structural ambiguity of point clouds. A 2D camera is employed to calibrate the relative positions of the mobile manipulator to workstations. The mobile robot manipulator is equipped with cameras, an in-house developed adaptive gripper, and a learning-based computer vision system developed in this work. The principle and procedures of the proposed 3D object detection and 2D calibration are presented in detail. The automatic name tags production and plug-in charging experiments are conducted to validate the object detection, localization algorithms, and tools developed and employed in production cases using the mobile robot manipulator.

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