CVAILGMar 4, 2022

Rethinking Efficient Lane Detection via Curve Modeling

arXiv:2203.02431v2202 citationsh-index: 26Has Code
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This addresses efficient and accurate lane detection for autonomous driving systems, representing a novel approach but with incremental improvements in specific datasets.

The paper tackles lane detection in RGB images by proposing a parametric Bézier curve-based method that avoids heuristics and anchors, achieving state-of-the-art performance on the LLAMAS benchmark with high speed (>150 FPS) and small model size (<10M).

This paper presents a novel parametric curve-based method for lane detection in RGB images. Unlike state-of-the-art segmentation-based and point detection-based methods that typically require heuristics to either decode predictions or formulate a large sum of anchors, the curve-based methods can learn holistic lane representations naturally. To handle the optimization difficulties of existing polynomial curve methods, we propose to exploit the parametric Bézier curve due to its ease of computation, stability, and high freedom degrees of transformations. In addition, we propose the deformable convolution-based feature flip fusion, for exploiting the symmetry properties of lanes in driving scenes. The proposed method achieves a new state-of-the-art performance on the popular LLAMAS benchmark. It also achieves favorable accuracy on the TuSimple and CULane datasets, while retaining both low latency (> 150 FPS) and small model size (< 10M). Our method can serve as a new baseline, to shed the light on the parametric curves modeling for lane detection. Codes of our model and PytorchAutoDrive: a unified framework for self-driving perception, are available at: https://github.com/voldemortX/pytorch-auto-drive .

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