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Robust lane detection amp; tracking based on novel feature extraction and lane categorization

机译:基于新颖特征提取和车道分类的鲁棒车道检测与跟踪

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In this paper, we introduce a robust lane detection and tracking algorithm to cope with complex scenarios and to decrease the effect of thresholds. For lane feature extraction, an extension to the symmetrical local threshold (SLT) is proposed to improve the feature map and obtain orientation information. Then, while creating a Hough accumulator, obtained orientation information is used to decrease computational complexity (≈ 60 times) and acquire a clearer accumulator. The left and right lanes are categorized by applying a mask on the Hough accumulator, which leads to low computational complexity and reduced sensitivity to thresholding. To quantify the new feature map, we used ground truth lane markings from the RoMa Datasets and the optimum true positive (TP) to positive (P) ratio increased from 69% to 86% on average, compared to the SLT. The successful lane detection rate calculated from more than 10K frames is, 96.2%, demonstrating the robustness of the system.
机译:在本文中,我们介绍了一种强大的车道检测和跟踪算法来应对复杂的场景,并降低阈值的效果。对于车道特征提取,提出了对对称局部阈值(SLT)的扩展来改进特征图并获得方向信息。然后,在创建Hough累加器的同时,获得的取向信息用于降低计算复杂度(≈60次)并获取更清晰的累加器。左侧和右侧通道通过在霍夫蓄能器上应用掩模来分类,这导致计算复杂性低,并且对阈值化的灵敏度降低。为了量化新的特征图,我们使用来自ROMA数据集的地面真相车道标记,与SLT相比,与阳性的最佳真正阳性(P)比率从69%增加到86%。从10k帧计算的成功车道检测率为96.2%,展示了系统的稳健性。

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