Lane detection is a critical function for autonomous driving. With the recent development of deep learning and the publication of camera lane datasets and benchmarks, camera lane detection networks (CLDNs) have been remarkably developed. Unfortunately, CLDNs rely on camera images which are often distorted near the vanishing line and prone to poor lighting condition. This is in contrast with Lidar lane detection networks (LLDNs), which can directly extract the lane lines on the bird's eye view (BEV) for motion planning and operate robustly under various lighting conditions. However, LLDNs have not been actively studied, mostly due to the absence of large public lidar lane datasets. In this paper, we introduce KAIST-Lane (K-Lane), the world's first and the largest public urban road and highway lane dataset for Lidar. K-Lane has more than 15K frames and contains annotations of up to six lanes under various road and traffic conditions, e.g., occluded roads of multiple occlusion levels, roads at day and night times, merging (converging and diverging) and curved lanes. We also provide baseline networks we term Lidar lane detection networks utilizing global feature correlator (LLDN-GFC). LLDN-GFC exploits the spatial characteristics of lane lines on the point cloud, which are sparse, thin, and stretched along the entire ground plane of the point cloud. From experimental results, LLDN-GFC achieves the state-of-the-art performance with an F1- score of 82.1%, on the K-Lane. Moreover, LLDN-GFC shows strong performance under various lighting conditions, which is unlike CLDNs, and also robust even in the case of severe occlusions, unlike LLDNs using the conventional CNN. The K-Lane, LLDN-GFC training code, pre-trained models, and complete development kits including evaluation, visualization and annotation tools are available at https://github.com/kaist-avelab/k-lane.
翻译:通道探测是自主驾驶的关键功能。 随着最近的深层次学习和公布相机航道数据集和基准,相机航道探测网(CLDNs)已经得到显著发展。 不幸的是,Ns依赖在消失线附近经常被扭曲的相机图像,而且很容易出现光质差的情况。这与Lidar航道探测网(LLLDNs)形成对照,它可以直接提取鸟类眼部(BEV)的航道线,进行运动规划,并在各种照明条件下进行强有力的运行。然而,LLLDNNs没有得到积极研究,这主要是由于缺少大型的公共利达尔航道数据集(K-LDN),我们引入了KAISST-Lane(K-Lane),世界第一和最大的公共城市公路和高速公路数据集。KLL-LNC有超过15公里的框,并包含在各种道路和交通条件下,例如,多层闭路路/整个路段,多层闭路路段,公路、连续和夜路段、合并(Ccrowing and crowing case case case case) 并使用LDLDLDLDLDRDs deal 的基线网络网络。我们提供了Gral deals deal deal deal deal dede 的基线网络网络的运行运行运行的运行的进度,在LDs deal deal deal deal deal deal deal deal deal deal dealdaldal deal ex ex ex ladaldal deals ladaldaldaldaldald.