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Robust Lane Sensing and Departure Warning under Shadows and Occlusions

机译:阴影和遮挡下的稳健车道感应和离场警告

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摘要

A prerequisite for any system that enhances drivers' awareness of road conditions and threatening situations is the correct sensing of the road geometry and the vehicle's relative pose with respect to the lane despite shadows and occlusions. In this paper we propose an approach for lane segmentation and tracking that is robust to varying shadows and occlusions. The approach involves color-based clustering, the use of MSAC for outlier removal and curvature estimation, and also the tracking of lane boundaries. Lane boundaries are modeled as planar curves residing in 3D-space using an inverse perspective mapping, instead of the traditional tracking of lanes in the image space, i.e., the segmented lane boundary points are 3D points in a coordinate frame fixed to the vehicle that have a depth component and belong to a plane tangent to the vehicle's wheels, rather than 2D points in the image space without depth information. The measurement noise and disturbances due to vehicle vibrations are reduced using an extended Kalman filter that involves a 6-DOF motion model for the vehicle, as well as measurements about the road's banking and slope angles. Additional contributions of the paper include: (i) the comparison of textural features obtained from a bank of Gabor filters and from a GMRF model; and (ii) the experimental validation of the quadratic and cubic approximations to the clothoid model for the lane boundaries. The results show that the proposed approach performs better than the traditional gradient-based approach under different levels of difficulty caused by shadows and occlusions.
机译:任何能够增强驾驶员对道路状况和危险状况的意识的系统的前提条件是,尽管存在阴影和遮挡,也要正确感知道路的几何形状以及车辆相对于车道的相对姿态。在本文中,我们提出了一种用于车道分割和跟踪的方法,该方法对于变化的阴影和遮挡具有鲁棒性。该方法涉及基于颜色的聚类,使用MSAC进行离群值去除和曲率估计以及跟踪车道边界。车道边界被建模为使用反向透视映射的3D空间中的平面曲线,而不是图像空间中传统的车道跟踪,即,分段的车道边界点是固定在车辆上的坐标系中的3D点,具有深度分量,并且属于与车轮相切的平面,而不是没有深度信息的图像空间中的2D点。使用扩展的卡尔曼滤波器可减少由于车辆振动引起的测量噪声和干扰,该滤波器涉及车辆的6自由度运动模型,以及有关道路坡度和倾斜角的测量。该论文的其他贡献包括:(i)从一组Gabor滤波器和GMRF模型获得的纹理特征的比较; (ii)对车道边界的回旋曲线模型的二次方和三次方近似进行实验验证。结果表明,在阴影和遮挡引起的不同难度下,该方法的性能优于传统的基于梯度的方法。

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