Jiayu ZhangLiang HuangYujian Guan
To address the challenges of low accuracy and limited real-time efficiency in detecting subsurface defects within concrete structures, this study proposes an enhanced YOLOv5 model integrated with an Efficient Channel Attention (ECA) mechanism for automated ground-penetrating radar (GPR) defect detection. A Deep Convolutional Generative Adversarial Network (DCGAN)-based augmentation strategy is introduced to mitigate class imbalance, synthesizing realistic minority-class defect samples while preserving wave scattering characteristics. A specialized dataset encompassing diverse defect types was constructed to reflect real-world concrete inspection scenarios. The proposed YOLOv5 + ECA model was rigorously evaluated against other attention-enhanced variants and the baseline YOLOv5. Experimental results demonstrate that ECA's channel-specific feature recalibration significantly improves detection accuracy, achieving the highest mean average precision, while maintaining real-time inference speeds suitable for unmanned aerial vehicle (UAV)-mounted deployment. This work advances the precision and efficiency of infrastructure health monitoring, offering a robust solution for subsurface defect diagnosis in concrete structures such as tunnel linings and bridge decks.
Prashant KumarSupraja BatchuS. Narayana SwamyKota Solomon Raju
Muhammad Ikhsan RoslanZaidah IbrahimZalilah Abd Aziz
Pawde Shraddha ShivajiraoPatil ShailajaBhosale Snehal
Tamal DasAsfak AliArunanshu S. KuarSheli Sinha ChaudhuriNonso Nnamoko
Emanuele VivoliMarco BertiniLorenzo Capineri