Sensors (Sep 2024)

An Underwater Crack Detection System Combining New Underwater Image-Processing Technology and an Improved YOLOv9 Network

  • Xinbo Huang,
  • Chenxi Liang,
  • Xinyu Li,
  • Fei Kang

DOI
https://doi.org/10.3390/s24185981
Journal volume & issue
Vol. 24, no. 18
p. 5981

Abstract

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Underwater cracks are difficult to detect and observe, posing a major challenge to crack detection. Currently, deep learning-based underwater crack detection methods rely heavily on a large number of crack images that are difficult to collect due to their complex and hazardous underwater environments. This study proposes a new underwater image-processing method that combines a novel white balance method and bilateral filtering denoising method to transform underwater crack images into high-quality above-water images with original crack features. Crack detection is then performed based on an improved YOLOv9-OREPA model. Through experiments, it is found that the new image-processing method proposed in this study significantly improves the evaluation indicators of new images, compared with other methods. The improved YOLOv9-OREPA also exhibits a significantly improved performance. The experimental results demonstrate that the method proposed in this study is a new approach suitable for detecting underwater cracks in dams and achieves the goal of transforming underwater images into above-water images.

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