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Main Authors: Barros, Daniel, Fraga-Lamas, Paula, Fernandez-Carames, Tiago M., Lopes, Sergio Ivan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.23377
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author Barros, Daniel
Fraga-Lamas, Paula
Fernandez-Carames, Tiago M.
Lopes, Sergio Ivan
author_facet Barros, Daniel
Fraga-Lamas, Paula
Fernandez-Carames, Tiago M.
Lopes, Sergio Ivan
contents The Industry 5.0 paradigm focuses on industrial operator well-being and sustainable manufacturing practices, where humans play a central role, not only during the repetitive and collaborative tasks of the manufacturing process, but also in the management of the factory floor assets. Human factors, such as ergonomics, safety, and well-being, push the human-centric smart factory to efficiently adopt novel technologies while minimizing environmental and social impact. As operations at the factory floor increasingly rely on collaborative robots (CoBots) and flexible manufacturing systems, there is a growing demand for redundant safety mechanisms (i.e., automatic human detection in the proximity of machinery that is under operation). Fostering enhanced process safety for human proximity detection allows for the protection against possible incidents or accidents with the deployed industrial devices and machinery. This paper introduces the design and implementation of a cost-effective thermal imaging Safety Sensor that can be used in the scope of Industry 5.0 to trigger distinct safe mode states in manufacturing processes that rely on collaborative robotics. The proposed Safety Sensor uses a hybrid detection approach and has been evaluated under controlled environmental conditions. The obtained results show a 97% accuracy at low computational cost when using the developed hybrid method to detect the presence of humans in thermal images.
format Preprint
id arxiv_https___arxiv_org_abs_2410_23377
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Cost-Effective Thermal Imaging Safety Sensor for Industry 5.0 and Collaborative Robotics
Barros, Daniel
Fraga-Lamas, Paula
Fernandez-Carames, Tiago M.
Lopes, Sergio Ivan
Robotics
The Industry 5.0 paradigm focuses on industrial operator well-being and sustainable manufacturing practices, where humans play a central role, not only during the repetitive and collaborative tasks of the manufacturing process, but also in the management of the factory floor assets. Human factors, such as ergonomics, safety, and well-being, push the human-centric smart factory to efficiently adopt novel technologies while minimizing environmental and social impact. As operations at the factory floor increasingly rely on collaborative robots (CoBots) and flexible manufacturing systems, there is a growing demand for redundant safety mechanisms (i.e., automatic human detection in the proximity of machinery that is under operation). Fostering enhanced process safety for human proximity detection allows for the protection against possible incidents or accidents with the deployed industrial devices and machinery. This paper introduces the design and implementation of a cost-effective thermal imaging Safety Sensor that can be used in the scope of Industry 5.0 to trigger distinct safe mode states in manufacturing processes that rely on collaborative robotics. The proposed Safety Sensor uses a hybrid detection approach and has been evaluated under controlled environmental conditions. The obtained results show a 97% accuracy at low computational cost when using the developed hybrid method to detect the presence of humans in thermal images.
title A Cost-Effective Thermal Imaging Safety Sensor for Industry 5.0 and Collaborative Robotics
topic Robotics
url https://arxiv.org/abs/2410.23377