Litcius/Paper detail

LHA-Net: A Lightweight and High-Accuracy Network for Road Surface Defect Detection

Gang Li, Cheng Zhang, Min Li, Delong Han, Mingle Zhou

2024IEEE Transactions on Intelligent Vehicles11 citationsDOI

Abstract

Road surface defect detection can effectively reduce maintenance costs, which is a critical component in road structural health monitoring. However, existing methods often face challenges in the heavy computational parameters and high-accuracy detection, limiting their practical applicability in resource-constrained industrial settings. To alleviate this gap, we propose a Lightweight and High-accuracy Network (LHA-Net) for road surface defect detection, consisting of three sub-networks for feature extraction, feature fusion, and detection head. First, the proposed Direction-guided Global Feature-Aware Module (DGFM) and the proposed Heterokernel Local Feature-Aware Module (HLFM) are used in the feature extraction sub-net to extract global and local features while minimizing network parameters. Second, we propose an Asymptotically Weighted Aggregation Mechanism (AWAM) in the feature fusion sub-net, which efficiently merges detailed and semantic features through asymptotic multi-scale fusion and weighted fusion at multiple stages. Third, we propose a Lightweight Decoupling Head (LDH) in the detection head sub-net to extract target location and category information by emphasizing defect details in horizontal and vertical dimensions. Finally, to improve the generalizability, we propose the RDD-CC dataset extension of RDD2022 using road images collected by automobiles in China. Compared with the well-established lightweight YOLOv8n, LHA -Net achieves comparable or superior [email protected] scores with gains of +0.8%, +0.5%, and +0.3% on RDD-CC, RDD-SCM, and RDD-SCD datasets, respectively. Remarkably, LHA-Net does so with only 2.5M parameters (reduced by 16%) and 5.6 GFLOPs (reduced the computational load by 30%). The code and datasets are available at <uri xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">https://github.com/ZCZST01/LHA-Net</uri> .

Topics & Concepts

Net (polyhedron)Surface (topology)Computer scienceEnvironmental scienceGeometryMathematicsInfrastructure Maintenance and MonitoringIndustrial Vision Systems and Defect DetectionSurface Roughness and Optical Measurements