Image capture module for industrial process monitoring based on Industry 4.0 technologies

Authors

  • Onell Hernández Ramírez Universidad de Matanzas
  • Ramón Quiza Sardiñas Universidad de Matanzas
  • Yanelys Cuba Arana Universidad de Matanzas
  • Marcelino Rivas Santana Universidad de Matanzas

Keywords:

digital image processing, Industry 4.0, industrial monitoring, MQTT protocol

Abstract

This work is aimed at the implementation of an image capture and preprocessing module for industrial process monitoring. This module is part of a lightweight, open and intelligent monitoring architecture based on Industry 4.0 technologies. Both open hardware components and software tools were used to implement the module. The transmission was implemented over MQTT protocol. Various preprocessing techniques were included, such as Gaussian filtering, transformation to HVS space, color segmentation, region of interest extraction, rotation and scaling. In the case study used to test the performance of the module, it showed effectiveness and efficiency in performing the corresponding tasks.

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Published

2024-03-31

How to Cite

Hernández Ramírez, O. ., Quiza Sardiñas, R. ., Cuba Arana, Y., & Rivas Santana, M. . (2024). Image capture module for industrial process monitoring based on Industry 4.0 technologies. Revista Cubana De Transformación Digital, 5(1), e245:1–9. Retrieved from https://rctd.uic.cu/rctd/article/view/245