| Title |
Fad-Net: Automated Framework For Steel Surface Defect Detection In Urban Infrastructure Health Monitoring |
| ID_Doc |
26074 |
| Authors |
Wang N.; Chen Y.; Li W.; Zhang L.; Tian J. |
| Year |
2025 |
| Published |
Big Data and Cognitive Computing, 9, 6 |
| DOI |
http://dx.doi.org/10.3390/bdcc9060158 |
| Abstract |
Steel plays a fundamental role in modern smart city development, where its surface structural integrity is decisive for operational safety and long-term sustainability. While deep learning approaches show promise, their effectiveness remains limited by inadequate receptive field adaptability, suboptimal feature fusion strategies, and insufficient sensitivity to small defects. To overcome these limitations, we propose FAD-Net, a deep learning framework specifically designed for surface defect detection in steel materials within urban infrastructure. The network incorporates three key innovations: The RFCAConv module, which leverages dynamic receptive field construction and coordinate attention mechanisms to enhance feature representation for defects with long-range spatial dependencies and low-contrast characteristics. The MSDFConv module, employing multi-scale dilated convolutions with optimized dilation rates to preserve fine details while expanding the receptive field. An Auxiliary Head that introduces hierarchical supervision to improve the detection of small-scale defects. Experiments on the GC10-DET dataset showed that FAD-Net achieved 5.0% higher mAP@0.5 than baseline models. Cross-dataset validation with NEU and RDD2022 further confirmed its robustness. These results demonstrate FAD-Net’s effectiveness for automated infrastructure health monitoring. © 2025 by the authors. |
| Author Keywords |
automated visual inspection; detection head; dilated convolution; receptive field; smart city infrastructure |