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Unsupervised Pixel-level Road Defect Detection via Adversarial Image-to-Frequency Transform

conference contribution
posted on 2024-11-03, 13:29 authored by Jongmin Yu, Du Yong KimDu Yong Kim, Younkwan Lee, Moongu Jeon
In the past few years, the performance of road defect detection has been remarkably improved thanks to advancements in various studies on computer vision and deep learning. Although large-scale and well-annotated datasets enhance the performance of detecting road defects to some extent, it is still challengeable to derive a model which can perform reliably for various road conditions in practice, because it is intractable to construct a dataset considering diverse road conditions and defect patterns. To end this, we propose an unsupervised approach to detect road defects, using Adversarial Image-to-Frequency Transform (AIFT). AIFT adopts the unsupervised manner and adversarial learning in deriving the defect detection model, so AIFT does not require annotations for road defects. We evaluate the efficiency of AIFT using GAPs384 dataset, Cracktree200 dataset, CRACK500 dataset, and CFD dataset. The experimental results demonstrate that the proposed approach detects various road detects, and it outperforms existing state-of-the-art approaches.

History

Number

9304843

Start page

1708

End page

1713

Total pages

6

Outlet

IEEE Intelligent Vehicles Symposium, Proceedings

Name of conference

19 October 2020-13 November 2020

Publisher

IEEE

Place published

United States

Language

English

Copyright

© 2020 IEEE.

Former Identifier

2006106356

Esploro creation date

2023-04-28

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