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A Robust Lane Detection Method Based on Vanishing Point Estimation Using the Relevance of Line Segments

机译:基于线段相关性的基于消失点估计的鲁棒车道检测方法

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摘要

In this paper, a robust lane detection method based on vanishing point estimation is proposed. Estimating a vanishing point can be helpful in detecting lanes, because parallel lines converge on the vanishing point in a projected 2-D image. However, it is not easy to estimate the vanishing point correctly in an image with a complex background. Thus, a robust vanishing point estimation method is proposed that uses a probabilistic voting procedure based on intersection points of line segments extracted from an input image. The proposed voting function is defined with line segment strength that represents relevance of the extracted line segments. Next, candidate line segments for lanes are selected by considering geometric constraints. Finally, the host lane is detected by using the proposed score function, which is designed to remove outliers in the candidate line segments. Also, the detected host lane is refined by using inter-frame similarity that considers location consistency of the detected host lane and the estimated vanishing point in consecutive frames. Furthermore, in order to reduce computational costs in the vanishing point estimation process, a method using a lookup table is proposed. Experimental results show that the proposed method efficiently estimates the vanishing point and detects lanes in various environments.
机译:提出了一种基于消失点估计的鲁棒车道检测方法。估计消失点有助于检测车道,因为平行线会聚在投影的2D图像中的消失点上。但是,在背景复杂的图像中正确估计消失点并不容易。因此,提出了一种鲁棒的消失点估计方法,该方法使用基于从输入图像中提取的线段的交点的概率投票程序。提议的投票功能由线段强度定义,线段强度表示提取的线段的相关性。接下来,通过考虑几何约束来选择车道的候选线段。最后,使用建议的评分功能检测主机车道,该评分功能旨在消除候选线段中的异常值。另外,通过使用考虑了检测到的主机道的位置一致性和连续帧中的估计消失点的帧间相似度来精炼检测到的主机道。此外,为了减少消失点估计处理中的计算成本,提出了一种使用查找表的方法。实验结果表明,该方法可以有效地估计消失点并检测各种环境下的车道。

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