城市环境中场景理解与三维地图相结合的车辆定位

Jiali Bao, Yanlei Gu, S. Kamijo
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引用次数: 7

摘要

准确的自定位是自动驾驶系统中的一个关键问题。自动驾驶汽车需要亚米级别的定位来进行运动规划。然而,在城市场景下,通用的全球导航卫星系统(GNSS)定位存在多路径和非视距(NLOS)等困难。立体视觉里程计通过对立体图像的自我运动进行跟踪,能够实现车辆的相对定位,但存在累积误差。三维地图是减少累积定位误差的有效工具。在本文中,我们提出通过立体摄像机实现场景理解,并进一步利用包含3D建筑和2D道路信息的城市模式地图来改进视觉里程计量。在我们的方案中,使用立体摄像机生成视觉里程计并重建建筑场景。累积的建筑场景形成局部的建筑地图。在粒子滤波中对三维建筑图生成的局部建筑图和正态分布变换(NDT)图进行融合。车道检测结果有助于校正内车道定位误差,并借助二维道路地图保持车道畅通。我们在东京的一桥地区进行了一系列的实验,那里有很多高楼大厦。实验结果表明,该方法可以有效地修正视觉里程计的累积误差,实现亚米级精度定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle positioning with the integration of scene understanding and 3D map in urban environment
Accurate self-localization is a critical problem in autonomous driving system. An autonomous vehicle requires sub-meter level positioning to make motion planning. However, in urban scenarios, the common Global Navigation Satellite System (GNSS) localization suffers from various difficulties as multipath and Non-Line-Of-Sight (NLOS). The Stereo visual odometry proves to be capable of localizing the vehicle relatively by tracking the ego motion of vehicle from stereo image pairs, but with cumulative error. 3D Map is an effective tool to reduce the cumulative positioning error. In this paper, we propose to realize scene understanding from stereo camera, and further utilize city mode map including 3D building and 2D road information to improve the visual odometry. In our proposal, stereo camera is applied to generate visual odometry and reconstruct the building scene. The accumulated building scenes form local building map. We integrate the local building map and Normal Distribution Transform (NDT) map generated from 3D building map in particle filter. Lane detection result helps to rectify the inner lane positioning error and keep lane with the aid of 2D road map. We conducted a series of experiments in Hitotsubashi area of Tokyo city where locates a lot of tall buildings. The result of experiments indicates that the accumulated error of visual odometry can be corrected by the proposed method and sub-meter accuracy localization is achieved.
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