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Autori principali: Silva, José, Coelho, Pedro, Saraiva, Luzia, Vaz, Paulo, Martins, Pedro, López Rivero, Alfonso José
Natura: Recurso digital
Lingua:inglese
Pubblicazione: Zenodo 2024
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Accesso online:https://doi.org/10.3390/app14051850
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author Silva, José
Coelho, Pedro
Saraiva, Luzia
Vaz, Paulo
Martins, Pedro
López Rivero, Alfonso José
author_facet Silva, José
Coelho, Pedro
Saraiva, Luzia
Vaz, Paulo
Martins, Pedro
López Rivero, Alfonso José
contents <p>Effective quality control is crucial in industrial manufacturing for influencing efficiency, product dependability, and customer contentment. In the constantly changing landscape of industrial production, conventional inspection methods may fall short, prompting the need for inventive approaches to enhance precision and productivity. In this study, we investigate the application of smart glasses for real-time quality inspection during assembly processes. Our key innovation involves combining smart glasses’ video feed with a server-based image recognition system, utilizing the advanced YOLOv8 model for accurate object detection. This integration seamlessly merges mixed reality (MR) with cutting-edge computer vision algorithms, offering immediate visual feedback and significantly enhancing defect detection in terms of both speed and accuracy. Carried out in a controlled environment, our research provides a thorough evaluation of the system’s functionality and identifies potential improvements. The findings highlight that MR significantly elevates the efficiency and reliability of traditional inspection methods. The synergy of MR and computer vision opens doors for future advancements in industrial quality control, paving the way for more streamlined and dependable manufacturing ecosystems.</p>
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spellingShingle Validating the Use of Smart Glasses in Industrial Quality Control: A Case Study
Silva, José
Coelho, Pedro
Saraiva, Luzia
Vaz, Paulo
Martins, Pedro
López Rivero, Alfonso José
quality inspection; smart manufacturing; object detection; computer vision
<p>Effective quality control is crucial in industrial manufacturing for influencing efficiency, product dependability, and customer contentment. In the constantly changing landscape of industrial production, conventional inspection methods may fall short, prompting the need for inventive approaches to enhance precision and productivity. In this study, we investigate the application of smart glasses for real-time quality inspection during assembly processes. Our key innovation involves combining smart glasses’ video feed with a server-based image recognition system, utilizing the advanced YOLOv8 model for accurate object detection. This integration seamlessly merges mixed reality (MR) with cutting-edge computer vision algorithms, offering immediate visual feedback and significantly enhancing defect detection in terms of both speed and accuracy. Carried out in a controlled environment, our research provides a thorough evaluation of the system’s functionality and identifies potential improvements. The findings highlight that MR significantly elevates the efficiency and reliability of traditional inspection methods. The synergy of MR and computer vision opens doors for future advancements in industrial quality control, paving the way for more streamlined and dependable manufacturing ecosystems.</p>
title Validating the Use of Smart Glasses in Industrial Quality Control: A Case Study
topic quality inspection; smart manufacturing; object detection; computer vision
url https://doi.org/10.3390/app14051850