Traffic Lane Line Classification System by Real-time Image Processing

Huang Chingting, Hu Zhuqi, S. Tateno
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引用次数: 1

Abstract

The traffic safety has been a major concern in recent years. One of the effective approaches to prevent the traffic accident is to develop advanced driver assistance systems which can alarm driver in dangerous situation. In fact, changing lane or overtaking another vehicle is one of the most dangerous driving behaviors. Therefore, it is important for drivers to recognize current lane line types to take proper actions. However, classification systems proposed so far can only distinguish up to five types of lane lines, such as dashed and solid. Hence, the existing road classification systems are not suitable if there are more types of lane lines on the road. In this paper, an improved method is proposed to classify more lane line types by real-time image processing. In order to increase the detection accuracy of lane line types, the image stitching method is applied to reduce the misjudgment caused by blocked lane lines. A set of features about pixel distribution is utilized in the classifier to distinguish more than five lane line types. Furthermore, the results of experiments which are carried out in real road driving show high accuracy of the proposed classification method under the various situations.
基于实时图像处理的交通车道线分类系统
近年来,交通安全一直是人们关注的主要问题。开发先进的驾驶员辅助系统是预防交通事故发生的有效途径之一。事实上,改变车道或超车是最危险的驾驶行为之一。因此,对于驾驶员来说,识别当前的车道线类型以采取适当的行动是很重要的。然而,目前提出的分类系统最多只能区分五种类型的车道线,如虚线和实线。因此,当道路上的车道线种类较多时,现有的道路分类系统就不适用了。本文提出了一种改进的方法,通过实时图像处理来分类更多的车道线类型。为了提高车道线类型的检测精度,采用图像拼接的方法减少车道线被遮挡造成的误判。在分类器中利用一组关于像素分布的特征来区分五种以上的车道线类型。此外,在实际道路驾驶中进行的实验结果表明,所提出的分类方法在各种情况下都具有较高的准确率。
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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