Lane detection in complex scenes based on end-to-end neural network
- URL: http://arxiv.org/abs/2010.13422v1
- Date: Mon, 26 Oct 2020 08:46:35 GMT
- Title: Lane detection in complex scenes based on end-to-end neural network
- Authors: Wenbo Liu, Fei Yan, Kuan Tang, Jiyong Zhang, Tao Deng
- Abstract summary: Lane detection is a key problem to solve the division of derivable areas in unmanned driving.
We propose an end-to-end network to lane detection in a variety of complex scenes.
Our network was tested on the CULane database and its F1-measure with IOU threshold of 0.5 can reach 71.9%.
- Score: 10.955885950313103
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The lane detection is a key problem to solve the division of derivable areas
in unmanned driving, and the detection accuracy of lane lines plays an
important role in the decision-making of vehicle driving. Scenes faced by
vehicles in daily driving are relatively complex. Bright light, insufficient
light, and crowded vehicles will bring varying degrees of difficulty to lane
detection. So we combine the advantages of spatial convolution in spatial
information processing and the efficiency of ERFNet in semantic segmentation,
propose an end-to-end network to lane detection in a variety of complex scenes.
And we design the information exchange block by combining spatial convolution
and dilated convolution, which plays a great role in understanding detailed
information. Finally, our network was tested on the CULane database and its
F1-measure with IOU threshold of 0.5 can reach 71.9%.
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