Self-supervised learning approach for automatic sewer defect detection
DOI:
https://doi.org/10.71573/qqaxgx55Keywords:
sewer defect detection, asset management, artificial intelligence, self-supervised learningAbstract
Automated sewer defect detection has advanced through deep learning, particularly supervised methods using CCTV images, but based on large annotated datasets. This study proposes a semi- supervised learning (SSL) approach to reduce the dependency on annotations. The method includes two stages: self-supervised pre-training on unlabelled images using SwAV (Swapping Assignments between multiple Views of the same Image), followed by fine-tuning on labelled images for multi-label image classification. Experiments on the Sewer-ML dataset show that both ImageNet-pre-trained models -supervised and SwAV- outperform models trained from scratch on 1.04 million images, achieving higher F1-scores with just 13k labelled samples. The proposed SSL approach achieves 64.22% precision, 66.06% recall, and a 65.13% F1 score, surpassing the fully supervised baseline. Additionally, scaling up the pre-training dataset further enhances performance. These findings underscore the importance of ImageNet initialization and highlight self-supervised learning as an accurate, scalable, and cost-effective alternative to supervised methods, particularly in data-scarce scenarios.
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Copyright (c) 2026 Tugba Yildizli, Tianlong Jia, Jeroen Langeveld, Riccardo Taormina (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.


