4.6 Article

Toward Future Automatic Warehouses: An Autonomous Depalletizing System Based on Mobile Manipulation and 3D Perception

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 13, 页码 -

出版社

MDPI
DOI: 10.3390/app11135959

关键词

mobile manipulation; robot vision; industrial depalletizing

资金

  1. COORSA project (European Regional Development Fund POR-FESR 2014-2020, Research and Innovation of the Region Emilia-Romagna) [CUP E81F18000300009]

向作者/读者索取更多资源

This paper introduces a mobile manipulation platform designed for autonomous depalletizing tasks, which integrates machine vision, control, and mechanical components to increase flexibility and ease of deployment in industrial environments. The robot, equipped with a 3D in-hand vision system, detects and transports parcel boxes on a pallet, avoiding the cumbersome implementation of pick-and-place operations.
This paper presents a mobile manipulation platform designed for autonomous depalletizing tasks. The proposed solution integrates machine vision, control and mechanical components to increase flexibility and ease of deployment in industrial environments such as warehouses. A collaborative robot mounted on a mobile base is proposed, equipped with a simple manipulation tool and a 3D in-hand vision system that detects parcel boxes on a pallet, and that pulls them one by one on the mobile base for transportation. The robot setup allows to avoid the cumbersome implementation of pick-and-place operations, since it does not require lifting the boxes. The 3D vision system is used to provide an initial estimation of the pose of the boxes on the top layer of the pallet, and to accurately detect the separation between the boxes for manipulation. Force measurement provided by the robot together with admittance control are exploited to verify the correct execution of the manipulation task. The proposed system was implemented and tested in a simplified laboratory scenario and the results of experimental trials are reported.

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