论文标题
多模式路缘检测和过滤
Multi-modal curb detection and filtering
论文作者
论文摘要
对道路边界的可靠知识对于自动驾驶汽车导航至关重要。我们根据摄像机语义和密集的激光点云的融合提出了一种强大的路缘检测和过滤技术。通过融合多个激光元以进行鲁棒特征检测来收集LiDAR点云。相机语义基于修改的高效网络体系结构,该体系结构是通过板载Fisheye摄像机收集的标记数据训练的。点云与最接近的路缘段通过$ L_2 $ -Norm分析进行了通过Fisheye模型投影投影到图像空间后。接下来,使用无监督密度的空间聚类将所选点聚类以检测不同的路缘区域。由于在连续帧中检测到新的路缘点,因此使用时间到达的限制与现有的路缘簇相关联。如果没有发现可及性约束,则从这些新点形成了新的路缘群集。这样可以确保我们可以在路段中发现多个路缘,如果它们在传感器的视野中,则可以检测到多个车道。最后,将Delaunay过滤用于离群拆卸,并将其性能与传统的基于RANSAC的过滤进行比较。使用来自商业地图供应商获得的地面真相路缘点的高清图进行了对拟议解决方案的客观评估。拟议的系统已证明,能够在复杂的城市道路场景中检测到任何方向的路缘,其中包括直路,弯曲的道路和与交通岛的交叉路口。
Reliable knowledge of road boundaries is critical for autonomous vehicle navigation. We propose a robust curb detection and filtering technique based on the fusion of camera semantics and dense lidar point clouds. The lidar point clouds are collected by fusing multiple lidars for robust feature detection. The camera semantics are based on a modified EfficientNet architecture which is trained with labeled data collected from onboard fisheye cameras. The point clouds are associated with the closest curb segment with $L_2$-norm analysis after projecting into the image space with the fisheye model projection. Next, the selected points are clustered using unsupervised density-based spatial clustering to detect different curb regions. As new curb points are detected in consecutive frames they are associated with the existing curb clusters using temporal reachability constraints. If no reachability constraints are found a new curb cluster is formed from these new points. This ensures we can detect multiple curbs present in road segments consisting of multiple lanes if they are in the sensors' field of view. Finally, Delaunay filtering is applied for outlier removal and its performance is compared to traditional RANSAC-based filtering. An objective evaluation of the proposed solution is done using a high-definition map containing ground truth curb points obtained from a commercial map supplier. The proposed system has proven capable of detecting curbs of any orientation in complex urban road scenarios comprising straight roads, curved roads, and intersections with traffic isles.