基于高清地图的城市场景动态障碍物跟踪

Yuxiao Li, Can Wang, Zhilong Su, Shengcai Duan, Xinyu Wu
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引用次数: 1

摘要

高清地图的应用可以在城市场景中实现厘米级的定位,深度学习的发展在点云动态障碍物识别方面取得了很大的突破。这些技术使得基于高清地图的障碍物检测与跟踪在现代智慧城市场景中得以有效实现。与以往单纯基于视觉的障碍物检测和跟踪方法不同,利用高清地图可以提供高精度的定位,降低点云分类的难度。激光雷达的应用也解决了动态检测中的尺度问题。本文提出了一种新的多摄像头激光雷达点云图,并在高速公路上以正常速度完成了该地图,取得了满意的效果。同时,我们还找到了传统卡尔曼滤波、匈牙利算法和当前深度学习的鲁棒组合来解决动态障碍物跟踪和检测问题。实验结果表明,该系统能够有效地解决城市场景中地图生成和目标跟踪的特殊问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Obstacle Tracking Based On High-Definition Map In Urban Scene
The application of High-Definition map can realize centimeter-level position in urban scenes, the development of deep learning has made great breakthrough in the point cloud dynamic obstacle recognition. All these technologies make obstacle detection and tracking based on High-Definition map effectively realize in the modern smart city scene. It is different from the previous obstacle detection and tracking methods based purely on vision the using of High-Definition map can provide high-precision positioning and reduce the difficulty of point cloud classification. The using of lidar also solves the problem of up-to-scale in dynamic detection. In this paper, we put forward a new Multi-camera Lidar Point Cloud Map, we complete the map at normal speed on the highway and get a satisfactory result. At the same time, we also find a robust combination of traditional kalman filter, Hungary algorithm and current deep learning to solve dynamic obstacle tracking and detection. The experimental results show that our system can effectively complete the special problem of generating map and target tracking on urban scene.
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