AUTOMATIC DETECTION OF DEFECTS IN RAILWAY TRACKS USING COMPUTER VISION

Authors

  • Matheus Sousa Barroso Universidade CEUMA
  • Jonathan Araujo Queiroz UFMA

DOI:

https://doi.org/10.51891/rease.v10i11.17227

Keywords:

Artificial Intelligence. Computer Vision. Machine Learning, Railway Tracks. Defect Detection. Defect Classification. Railway Maintenance.

Abstract

Artificial Intelligence has proven to be a promising tool in the field of computer vision. This work proposes the development of a solution using Machine Learning techniques to detect surface defects in railway tracks. Based on a dataset obtained through track images, a model will be developed to identify defects, aiming to enhance safety and efficiency in railway maintenance. Preliminary results show that a classification model was created with satisfactory evaluation metrics, highlighting the potential of this application to assist in railway inspections.

Author Biographies

Matheus Sousa Barroso, Universidade CEUMA

Discente, Universidade CEUMA. 

 

Jonathan Araujo Queiroz, UFMA

Graduado em Matemática (UFMA), especialista em Métodos Estatísticos Aplicados (UEMA), mestre (UFMA),  doutor (UFMA) e pós-doutorado em Engenharia Elétrica (UFMA). 

Published

2024-11-29

How to Cite

Barroso, M. S., & Queiroz, J. A. (2024). AUTOMATIC DETECTION OF DEFECTS IN RAILWAY TRACKS USING COMPUTER VISION. Revista Ibero-Americana De Humanidades, Ciências E Educação, 10(11), 7616–7629. https://doi.org/10.51891/rease.v10i11.17227