River Flow Lane Detection and Kalman Filtering-Based B-Spline Lane Tracking

K. Lim, K. Seng, L. Ang
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引用次数: 30

Abstract

A novel lane detection technique using adaptive line segment and river flow method is proposed in this paper to estimate driving lane edges. A Kalman filtering-based B-spline tracking model is also presented to quickly predict lane boundaries in consecutive frames. Firstly, sky region and road shadows are removed by applying a regional dividing method and road region analysis, respectively. Next, the change of lane orientation is monitored in order to define an adaptive line segment separating the region into near and far fields. In the near field, a 1D Hough transform is used to approximate a pair of lane boundaries. Subsequently, river flow method is applied to obtain lane curvature in the far field. Once the lane boundaries are detected, a B-spline mathematical model is updated using a Kalman filter to continuously track the road edges. Simulation results show that the proposed lane detection and tracking method has good performance with low complexity.
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基于卡尔曼滤波的河道车道检测与b样条车道跟踪
提出了一种基于自适应线段法和河流流量法的车道检测方法。提出了一种基于卡尔曼滤波的b样条跟踪模型,用于快速预测连续帧内的车道边界。首先,采用区域分割法和道路区域分析分别去除天空区域和道路阴影;接下来,监测车道方向的变化,以便定义一个自适应线段,将区域划分为近场和远场。在近场中,采用一维霍夫变换逼近一对车道边界。在此基础上,采用河流法计算远场巷道曲率。一旦检测到车道边界,使用卡尔曼滤波器更新b样条数学模型以连续跟踪道路边缘。仿真结果表明,所提出的车道检测与跟踪方法具有较好的性能和较低的复杂度。
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