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Stereo visual odometry in urban environments based on detecting ground features

机译:基于检测地面特征的城市环境中的立体视觉里程表

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摘要

Autonomous vehicles rely on the accurate estimation of their pose, speed and direction of travel to perform basic navigation tasks. Although GPSs are very useful, they have some drawbacks in urban applications that affect their accuracy. Visual odometry is an alternative or complementary method because provides the ego motion of the vehicle with enough accuracy and uses a sensor already available in some vehicles for other tasks, so no extra sensor is needed. In this paper, a new method is proposed that detects and tracks features available on the surface of the ground, due to the texture of the road or street and road markings. This way it is assured only static points are taken into account in order to obtain the relative movement between images. A Kalman filter improves the estimations and the Ackermann steering restriction is applied so the vehicle follows a constrained trajectory, which improves the camera displacement estimation obtained from a PnP algorithm. Some results and comparisons in real urban environments are shown in order to demonstrate the good performance of the algorithm. They show the method is able to estimate the linear and angular speeds of the vehicle with high accuracy as well as its ability to follow the real trajectory drove by the vehicle along long paths within a minimum error. (C) 2016 Elsevier B.V. All rights reserved.
机译:自主车辆依靠对其姿势,速度和行进方向的准确估计来执行基本的导航任务。尽管GPS非常有用,但它们在城市应用中仍存在一些缺点,影响其准确性。视觉测距法是一种替代方法或补充方法,因为它可以使车辆的自我运动具有足够的准确性,并使用某些车辆中已经可用的传感器来完成其他任务,因此不需要额外的传感器。在本文中,由于道路或街道的纹理以及道路标记,提出了一种新方法,该方法可以检测并跟踪地面上可用的特征。这样可以确保仅考虑静态点,以便获得图像之间的相对运动。卡尔曼滤波器改善了估计值,并应用了阿克曼转向限制,因此车辆遵循约束的轨迹,从而改善了从PnP算法获得的摄像机位移估计值。展示了在实际城市环境中的一些结果和比较,以证明该算法的良好性能。他们表明,该方法能够以很高的精度估算车辆的线速度和角速度,并且能够在最小误差内跟随车辆沿着长路径行驶的真实轨迹。 (C)2016 Elsevier B.V.保留所有权利。

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