4.7 Article

Fast-HBNet: Hybrid Branch Network for Fast Lane Detection

Journal

IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
Volume 23, Issue 9, Pages 15673-15683

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2022.3145018

Keywords

Lane detection; Feature extraction; Semantics; Real-time systems; Detectors; Representation learning; Roads; Lane detection; hybrid branch network; hierarchical feature learning

Funding

  1. Natural Science Foundation of China [61972027]
  2. Beijing Municipal Natural Science Foundation [4212041]

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This paper proposes a novel lane detection network, Fast-HBNet, which exploits global semantic information and spatial contexts for lane detection. By employing compound transformation and the proposed hybrid branch network, diverse feature maps with different receptive fields and spatial contexts are extracted. A hierarchical feature learning module is designed to enhance the generalization ability of the detector. Experimental results demonstrate that Fast-HBNet outperforms other lane detectors in terms of both speed and accuracy.
As one of the fundamental visual tasks in the unmanned driving area, lane detection attracts increasing attention. In practical applications, lane points are very difficult to localize because they usually appear to be sparse and incomplete due to the influence of illumination and environment. Conventional lane detection methods rely on coarse features and carefully designed postprocessing to detect the lane lines. However, these methods are usually slow, and the stability and generalization ability are unsatisfactory. In this paper, we propose a novel lane detection network - Fast-HBNet(Fast-Hybrid Branch Network), which exploits both global semantic information and spatial contexts. To enlarge receptive fields and encode more detailed information, the compound transformation is employed and the proposed hybrid branch network extracts four diverse feature maps with different receptive fields and spatial contexts. Besides, we design a Hierarchical Feature Learning (HFL) module to learn lane features from the scale, channel, and spatial levels to enhance the generalization ability of our detector. These features are further selectively coalesced to generate unified lane feature maps with large receptive fields and rich detailed information. In other words, our network can encode the global semantic information from the high-resolution feature maps and the fine-grained details in the low-resolution feature maps. Experimental results conducted on the TuSimple (2017) and CULane [Pan et al. (2018)] datasets demonstrate that the proposed Fast-HBNet outperforms numerous state-of-the-art lane detectors in both speed and accuracy. Particularly, Fast-HBNet achieves an accuracy of 96.88% on the TuSimple dataset at a speed of 76 FPS.

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