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Monocular visual localization using road structural features

机译:利用道路结构特征进行单眼视觉定位

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Precise localization is an essential issue for autonomous driving applications, where GPS-based systems are challenged to meet requirements such as lane-level accuracy. This paper introduces a new visual-based localization approach in dynamic traffic environments, focusing on and exploiting properties of structured roads like straight roads or intersections. Such environments show several line segments on lane markings, curbs, poles, building edges, etc., which demonstrate the road's longitude, latitude and vertical directions. Based on this observation, we define a Road Structural Feature (RSF) as sets of segments along three perpendicular axes together with feature points. At each video frame, the proper road structure (or multiple road structures in case of an intersection) is predicted based on the geometric information given by a 2D map. The RSF is then detected from line segments and points extracted from the image, and used to estimate the pose of the vehicle. Experiments are conducted using video streams collected on major roads in downtown Beijing, which are structured and with intense dynamic traffic. GPS/IMU data have been collected and synchronized with the video streams as a reference in validation. The results show good performance compared with that of a more traditional visual odometry method. Future work will be addressed on using visual approach to improve GPS localization accuracy.
机译:对于自动驾驶应用来说,精确的定位是一个至关重要的问题,在这些应用中,基于GPS的系统面临着满足车道级精度等要求的挑战。本文介绍了一种在动态交通环境中基于可视化的新定位方法,重点研究并利用了结构化道路(如直路或交叉路口)的属性。这样的环境在车道标记,路缘,杆子,建筑物边缘等上显示了几个线段,这些线段显示了道路的经度,纬度和垂直方向。基于此观察,我们将道路结构特征(RSF)定义为沿着三个垂直轴的路段集以及特征点。在每个视频帧处,基于2D地图给出的几何信息,可以预测适当的道路结构(或在有交叉路口的情况下为多个道路结构)。然后,从从图像中提取的线段和点中检测出RSF,并将其用于估算车辆的姿态。实验是使用北京市区主要道路上收集的视频流进行的,这些视频流结构合理且动态交通繁忙。已收集GPS / IMU数据并将其与视频流同步,以作为验证的参考。与更传统的视觉里程计方法相比,结果显示出良好的性能。未来的工作将涉及使用视觉方法来提高GPS定位精度。

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