Integration of Deep Learning and Collaborative Robot for Assembly Tasks

Author:

Mendez Enrico1ORCID,Ochoa Oscar1ORCID,Olivera-Guzman David1ORCID,Soto-Herrera Victor Hugo1ORCID,Luna-Sánchez José Alfredo1ORCID,Lucas-Dophe Carolina1ORCID,Lugo-del-Real Eloina1ORCID,Ayala-Garcia Ivo Neftali1ORCID,Alvarado Perez Miriam1ORCID,González Alejandro1ORCID

Affiliation:

1. Tecnologico de Monterrey, School of Engineering and Sciences, Santiago de Querétaro 76130, Querétaro, Mexico

Abstract

Human–robot collaboration has gained attention in the field of manufacturing and assembly tasks, necessitating the development of adaptable and user-friendly forms of interaction. To address this demand, collaborative robots (cobots) have emerged as a viable solution. Deep Learning has played a pivotal role in enhancing robot capabilities and facilitating their perception and understanding of the environment. This study proposes the integration of cobots and Deep Learning to assist users in assembly tasks such as part handover and storage. The proposed system includes an object classification system to categorize and store assembly elements, a voice recognition system to classify user commands, and a hand-tracking system for close interaction. Tests were conducted for each isolated system and for the complete application as used by different individuals, yielding an average accuracy of 91.25%. The integration of Deep Learning into cobot applications has significant potential for transforming industries, including manufacturing, healthcare, and assistive technologies. This work serves as a proof of concept for the use of several neural networks and a cobot in a collaborative task, demonstrating communication between the systems and proposing an evaluation approach for individual and integrated systems.

Funder

Tecnologico de Monterrey, Vicerrectory of Research and Technology Transfer

Publisher

MDPI AG

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