Urban underground sewage pipelines often suffer from defects such as cracks, irregular joint misalignment, and stratified sedimentation blockages, which may lead to pipeline bursts, sewage overflow, and water pollution. Timely detection of abnormal defects in sewage pipelines is critical to ensuring public health and environmental sustainability. Vision-based sewage pipeline defect detection plays a crucial role in modern urban wastewater treatment systems. However, it still faces challenges such as limited feature extraction capabilities, insufficient multi-scale defect characterization, and poor positioning stability when dealing with low-contrast images and in environments with severe background interference. To address this issue, this study proposes an enhanced SAW-YOLOv8l model that integrates RT-DETR (real-time detection Transformer) with CNN (convolutional neural network) architecture. First, a C2fSCA module improves the long-distance feature extraction capability and localization precision. Second, an AIFI-PRBN module enhances global feature correlation through attention-mechanism-based intra-scale feature interaction and reduces computational complexity using lightweight techniques. Finally, an adaptive dynamic weighted loss function based on Wise-IoU (weighted intersection over union) further improves training convergence and robustness by balancing the gradient distribution of samples. Experiments on a mixed dataset comprising Sewer-ML and industrial images demonstrate that the SAW-YOLOv8l model achieved mAP@0. 5 of 86. 2% and precision of 84. 4%, which were improvements of 2. 4% and 6. 6% respectively over the baseline model, significantly enhancing the detection performance of abnormal defects in sewage pipelines.
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Linna Hu
Beijing University of Technology
H L Li
Nanjing Institute of Technology
Jiahao Guo
Jinling Institute of Technology
Sustainability
Nanjing Hydraulic Research Institute
Jinling Institute of Technology
Xinjiang Agricultural University
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Hu et al. (Wed,) studied this question.
synapsesocial.com/papers/69d8968f6c1944d70ce0813a — DOI: https://doi.org/10.3390/su18083685
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