Oct, 31, 2024

Vol.57 No.5

Editorial Office

Review

  • The Korean Society of Surface Science and Engineering
  • Volume 56(6); 2023
  • Article

Review

The Korean Society of Surface Science and Engineering 2023;56(6):353-370. Published online: Dec, 28, 2023

Trends in image processing techniques applied to corrosion detection and analysis

  • Beomsoo Kim, Jaesung Kwon, Jeonghyeon Yang*
    Department of Mechanical System Engineering, Gyeongsang National University, Tongyeong, Gyeongnam, 53064, Korea
Abstract

Corrosion detection and analysis is a very important topic in reducing costs and preventing disasters. Recently, image processing techniques have been widely applied to corrosion identification and analysis. In this work, we briefly introduces traditional image processing techniques and machine learning algorithms applied to detect or analyze corrosion in various fields. Recently, machine learning, especially CNN-based algorithms, have been widely applied to corrosion detection. Additionally, research on applying machine learning to region segmentation is very actively underway. The corrosion is reddish and brown in color and has a very irregular shape, so a combination of techniques that consider color and texture, various mathematical techniques, and machine learning algorithms are used to detect and analyze corrosion. We present examples of the application of traditional image processing techniques and machine learning to corrosion detection and analysis.

Keywords Corrosion, Color Models, Image Segmentation, Machine Learning