Road Boundary Detection in Challenging Scenarios

M. Helala, K. Pu, F. Qureshi
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引用次数: 14

Abstract

This paper presents a new approach for automatic road detection in traffic cameras. The technique proposed here detects the dominant road boundary and estimates the vanishing point in images captured by traffic cameras under a wide range of lighting and environmental conditions, e.g., in images of unlit highways captured at night, etc. The approach starts by segmenting the traffic scene into a number of superpixel regions. The contours of these regions are used to generate a large number of edges which are organized into clusters of co-linearly similar sets using hierarchical bottom up clustering. A confidence level is assigned to each cluster using a statistical approach and the best clusters are chosen. Pairs of clusters with high confidence levels are then ranked and filtered according to image perspective and activity. The top ranked pair is selected as the road boundary. The proposed technique is tested on a real world dataset collected from the Ontario 401 traffic surveillance system. Experimental results demonstrate a distinct speedup and improvement in accuracy of the proposed technique in detecting the dominant road boundary in challenging scenarios compared to the state of the art Gabor filter based technique.
挑战性场景下的道路边界检测
本文提出了一种新的交通摄像机道路自动检测方法。本文提出的技术在各种照明和环境条件下检测交通摄像机拍摄的图像中的主要道路边界并估计消失点,例如在夜间拍摄的无照明高速公路图像等。该方法首先将交通场景分割成多个超像素区域。这些区域的轮廓被用来生成大量的边缘,这些边缘被组织成共线性相似集的簇,使用分层自下而上聚类。使用统计方法为每个集群分配置信水平,并选择最佳集群。然后根据图像视角和活动对具有高置信度的群集进行排序和过滤。选择排名靠前的一对作为道路边界。该技术在安大略省401交通监控系统收集的真实数据集上进行了测试。实验结果表明,与基于Gabor滤波器的先进技术相比,所提出的技术在具有挑战性的场景中检测主要道路边界的速度和准确性有明显的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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