Chinese Optics, Volume. 16, Issue 3, 645(2023)
Lane detection based on dual attention mechanism
In order to improve the performance of lane detection algorithms under complex scenes like obstacles, we proposed a multi-lane detection method based on dual attention mechanism. Firstly, we designed a lane segmentation network based on a spatial and channel attention mechanism. With this, we obtained a binary image which shows lane pixels and the background region. Then, we introduced HNet which can output a perspective transformation matrix and transform the image to a bird’s eye view. Next, we did curve fitting and transformed the result back to the original image. Finally, we defined the region between the two-lane lines near the middle of the image as the ego lane. Our algorithm achieves a 96.63% accuracy with real-time performance of 134 FPS on the Tusimple dataset. In addition, it obtains 77.32% of precision on the CULane dataset. The experiments show that our proposed lane detection algorithm can detect multi-lane lines under different scenarios including obstacles. Our proposed algorithm shows more excellent performance compared with the other traditional lane line detection algorithms.
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Feng-lei REN, Hai-bo ZHOU, Lu YANG, Xin HE. Lane detection based on dual attention mechanism[J]. Chinese Optics, 2023, 16(3): 645
Category: Original Article
Received: Mar. 4, 2022
Accepted: --
Published Online: May. 31, 2023
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