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CANet: Curved Guide Line Network with Adaptive Decoder for Lane Detection

About

Lane detection is challenging due to the complicated on road scenarios and line deformation from different camera perspectives. Lots of solutions were proposed, but can not deal with corner lanes well. To address this problem, this paper proposes a new top-down deep learning lane detection approach, CANET. A lane instance is first responded by the heat-map on the U-shaped curved guide line at global semantic level, thus the corresponding features of each lane are aggregated at the response point. Then CANET obtains the heat-map response of the entire lane through conditional convolution, and finally decodes the point set to describe lanes via adaptive decoder. The experimental results show that CANET reaches SOTA in different metrics. Our code will be released soon.

Zhongyu Yang, Chen Shen, Wei Shao, Tengfei Xing, Runbo Hu, Pengfei Xu, Hua Chai, Ruini Xue• 2023

Related benchmarks

TaskDatasetResultRank
Lane DetectionCULane (test)
F1 Score (Total)79.86
268
Lane DetectionTuSimple (test)
Accuracy96.76
250
Lane DetectionCurveLanes
F1 Score87.87
23
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