With the rapid development of autonomous vehicles, there witnesses a booming demand for high-definition maps (HD maps) that provide reliable and robust prior information of static surroundings in autonomous driving scenarios. As one of the main high-level elements in the HD map, the road lane centerline is critical for downstream tasks, such as prediction and planning. Manually annotating lane centerline HD maps by human annotators is labor-intensive, expensive and inefficient, severely restricting the wide application and fast deployment of autonomous driving systems. Previous works seldom explore the centerline HD map mapping problem due to the complicated topology and severe overlapping issues of road centerlines. In this paper, we propose a novel method named CenterLineDet to create the lane centerline HD map automatically. CenterLineDet is trained by imitation learning and can effectively detect the graph of lane centerlines by iterations with vehicle-mounted sensors. Due to the application of the DETR-like transformer network, CenterLineDet can handle complicated graph topology, such as lane intersections. The proposed approach is evaluated on a large publicly available dataset Nuscenes, and the superiority of CenterLineDet is well demonstrated by the comparison results. This paper is accompanied by a demo video and a supplementary document that are available at \url{https://tonyxuqaq.github.io/projects/CenterLineDet/}.
翻译:随着自治车辆的迅速发展,出现了对高清晰地图(HD地图)的迅速需求,这些高清晰地图(HD地图)提供了在自主驾驶情景中静态环境的可靠和可靠的先前信息。作为HD地图中的主要高层次要素之一,公路航道中线对于下游任务至关重要,例如预测和规划。由人类助考员人工注列车中线HD中线地图是劳动密集型、昂贵和低效的,严重限制了自主驾驶系统的广泛应用和迅速部署。由于复杂的地形和道路中线的严重重叠问题,以往的工作很少探索中线HD地图绘图问题。在本文件中,我们提出了一个名为CenterLineDeet的新方法,以自动创建航道中线中线。CentreLineDemit通过模仿学习来培训并能够用车载传感器来有效检测列车中线中线的图。由于应用DTR-类似变压器网络,CentreLineDeint能够处理复杂的图形表象学问题,例如车道交叉点等。在大型公开的LineDeineDeut上评估了一种可公开获取的图像路路面文件,而显示的图路面的图和图中心的优则显示。