This paper presents the details of a collaborative robot cell assembled with off-the-shelf components designed for random bin-picking and robotic assembly applications. The proposed work investigates the benefits of combining an advanced RGB-D vision system and deep learning policies with a collaborative robot for the assembly of a mobile phone. An optimised version of YOLO is used to detect the arbitrarily placed components of the mobile phone on the working space. In order to overcome the challenges of grasping the various components of the mobile phone, a multi-gripper switching strategy is implemented using suction and multiple fingertips. Finally, the preliminary experiments performed with the proposed robot cell demonstrate that the increased learning capabilities of the robot achieve high performance in identifying the respective components of the mobile phone, grasping them accurately and performing the final assembly successfully.


    Access

    Download


    Export, share and cite



    Title :

    A Collaborative Robot Cell for Random Bin-picking based on Deep Learning Policies and a Multi-gripper Switching Strategy



    Publication date :

    2020-11-19


    Remarks:

    Olesen , A S , Gergaly , B B , Ryberg , E A , Thomsen , M R & Chrysostomou , D 2020 , ' A Collaborative Robot Cell for Random Bin-picking based on Deep Learning Policies and a Multi-gripper Switching Strategy ' , Procedia Manufacturing , vol. 51 , pp. 3-10 . https://doi.org/10.1016/j.promfg.2020.10.002



    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English



    Classification :

    DDC:    629




    Investigating Collaborative Robot Gripper Configurations for Simple Fabric Pick and Place Tasks

    Djuric, Ana / Wang, Bowen / Kalami, Hamed et al. | SAE Technical Papers | 2019



    Vision based learning of gripper trajectories for a robot arm

    Paeschke,M.M. / Pauli,J. / Christian-Albrechts-Univ.zu Kiel,DE | Automotive engineering | 1997


    Picking robot

    WANG JIN / YU WENHUA / MOU JUNXIN | European Patent Office | 2023

    Free access