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WLR-Net: An Improved YOLO-V7 With Edge Constraints and Attention Mechanism for Water Leakage Recognition in the Tunnel

Junxin Chen, Xu Xu, Gwanggil Jeon, David Camacho, Ben‐Guo He

2024IEEE Transactions on Emerging Topics in Computational Intelligence24 citationsDOI

Abstract

Water leakage recognition plays a significant role in ensuring the safety of shield tunnel lining. However, current models cannot meet the engineering requirements because the tunnel environment is complex. In this concern, a one-stage deep learning model is developed for water leakage recognition. First, we design an attention module to reduce background noise interference. Second, an edge refinement algorithm is proposed to refine the mask of water leakage region. Furthermore, a mixed data augmentation is developed to enhance the robustness of model. Experimental results indicate an average precision (AP) is up to 60%, and a recognition speed is 26 frames per second (FPS). This determines that our proposed network is lightweight and has advantages over peer methods.

Topics & Concepts

Leakage (economics)Enhanced Data Rates for GSM EvolutionMechanism (biology)Computer scienceNet (polyhedron)Artificial intelligenceEnvironmental sciencePhysicsMathematicsGeometryEconomicsQuantum mechanicsMacroeconomicsFire Detection and Safety SystemsGeophysical Methods and ApplicationsWater Systems and Optimization
WLR-Net: An Improved YOLO-V7 With Edge Constraints and Attention Mechanism for Water Leakage Recognition in the Tunnel | Litcius