Journal of South China University of Technology(Natural Science Edition) ›› 2025, Vol. 53 ›› Issue (9): 22-30.doi: 10.12141/j.issn.1000-565X.240609

• Computer Science & Technology • Previous Articles     Next Articles

Lane Line Detection Algorithm Based on Deep Learning

YUE Yongheng, ZHAO Zhihao   

  1. College of Civil Engineering and Transportation,Northeast Forestry University,Harbin 150040,Heilongjiang,China
  • Received:2024-12-30 Online:2025-09-25 Published:2025-04-27
  • About author:岳永恒(1973—),男,博士,副教授,主要从事交通安全、控制理论及应用研究。E-mail: yueyyh@126.com
  • Supported by:
    the Key R & D Program of Heilongjiang Province(JD22A014);the National Natural Science Foundation of China(62173107)

Abstract:

Aiming at the problem of lane detection accuracy of intelligent vehicles in complex scenes, this paper proposed a lane line detection algorithm which incorporates a multi-scale spatial attention mechanism and a path aggregation network (PANet). The algorithm first introduced the pre-anchored frame UFLD lane detection model and incorporated a feature pyramid enhancement module PANet with depthwise separable convolution to achieve multi-scale feature extraction of images. Next, a multi-scale spatial attention module was designed in the network framework and a SimAM lightweight attention mechanism was introduced to enhance the focusing ability on target features. Then, an adaptive feature fusion module was designed to perform cross-scale fusion of feature maps output from PANet by intelligently adjusting the fusion weights of feature maps at different scales, so as to effectively enhance the network’s ability to extract complex features. Finally, the application of TuSimple dataset detection proves that the proposed algorithm achieves a detection accuracy of 96.84%, representing a 1.02 percentage point improvement over the original algorithm, and outperforms conventional mainstream algorithms. Experimental results on the CULane dataset demonstrate that the proposed algorithm achieves an F1 score of 72.74%, outperfor-ming conventional mainstream methods with a 4.34 percentage point improvement over the baseline. Notably, it exhibits significant performance gains in extreme scenarios (e.g., strong illumination and shadows), confirming its superior detection capability in complex environments. In addition, the real-time test shows that the model infe-rence speed reaches 118 f/s, which meets the real-time demand of intelligent vehicles.

Key words: lane line detection, deep learning, multi-scale spatial attention module, adaptively feature fusion

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