CLRNetV2: A Faster and Stronger Lane Detector.

Tu Zheng, Yifei Huang, Yang Liu, Binbin Lin, Zheng Yang, Deng Cai, Xiaofei He
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Abstract

Lane is critical in the vision navigation system of intelligent vehicles. Naturally, the lane is a traffic sign with high-level semantics, whereas it owns the specific local pattern which needs detailed low-level features to localize accurately. Using different feature levels is of great importance for accurate lane detection, but it is still under-explored. On the other hand, current lane detection methods still struggle to detect complex dense lanes, such as Y-shape or fork-shape. In this work, we present Cross Layer Refinement Network aiming at fully utilizing both high-level and low-level features in lane detection. In particular, it first detects lanes with high-level semantic features and then performs refinement based on low-level features. In this way, we can exploit more contextual information to detect lanes while leveraging local-detailed features to improve localization accuracy. We present Fast-ROIGather to gather global context, which further enhances the representation of lane features. To detect dense lanes accurately, we propose Correlation Discrimination Module (CDM) to discriminate the correlation of dense lanes, enabling nearly cost-free high-quality dense lane prediction. In addition to our novel network design, we introduce LineIoU loss which regresses lanes as a whole unit to improve localization accuracy. Experiments demonstrate our approach significantly outperforms the state-of-the-art lane detection methods.

CLRNetV2:一种更快更强的车道检测器。
车道是智能汽车视觉导航系统的关键。车道自然是一个具有高级语义的交通标志,而车道本身具有特定的局部模式,需要详细的底层特征才能准确定位。使用不同的特征级别对于准确的车道检测非常重要,但目前还没有得到充分的研究。另一方面,目前的车道检测方法仍然难以检测到复杂的密集车道,如y形或叉形车道。在这项工作中,我们提出了跨层细化网络,旨在充分利用车道检测中的高级和低级特征。特别是,它首先检测具有高级语义特征的车道,然后根据低级特征进行细化。通过这种方式,我们可以利用更多的上下文信息来检测车道,同时利用局部细节特征来提高定位精度。我们提出了Fast-ROIGather来收集全局上下文,这进一步增强了车道特征的表示。为了准确地检测密集车道,我们提出了相关判别模块(CDM)来判别密集车道的相关性,实现了几乎不需要成本的高质量密集车道预测。除了我们新颖的网络设计外,我们还引入了lineou损失,它将车道作为一个整体回归,以提高定位精度。实验表明,我们的方法明显优于最先进的车道检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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