Real-time lane markings recognition based on seed-fill algorithm

A. Ali, H. A. Hussein
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引用次数: 5

Abstract

Road markings express the rules for the road while catching the upcoming road layout. These rules are applied to driving scenarios by real drivers who are known to Highway driving manuals. However, autonomous driving vehicles must read the roads in the same way that real drivers do. In this paper, the problem of automatically reading the road markings is addressed. A new approach for lane classification using the onboard camera is presented. As an initial step, the road boundaries are detected using the Hough transform model. The region of interest (ROI) is divided into two sub-regions. Hough Transform is applied to each of the sub-regions independently. The computational time required for lane detection is improved in this way. After that, adaptive smoothing and some processing steps are added to reduce the noise while still making the close edge's apart. Then, Seed fill algorithm is applied to the lanes location to identify the lane markings types. This method is able to recognize five types of lane markings such as: dashed, solid, double solid, dashed-solid and solid-dashed. The method is applied to a large set of video sequences with various situations and showed that the accuracy is over 95%.
基于种子填充算法的车道标记实时识别
道路标线表示道路规则,同时捕捉即将到来的道路布局。这些规则由公路驾驶手册中已知的真实驾驶员应用于驾驶场景。然而,自动驾驶汽车必须像真正的司机一样读取道路信息。本文主要研究道路标志的自动读取问题。提出了一种利用车载摄像头进行车道分类的新方法。作为第一步,使用霍夫变换模型检测道路边界。感兴趣区域(ROI)分为两个子区域。霍夫变换分别应用于每个子区域。这样可以提高车道检测所需的计算时间。之后,自适应平滑和一些处理步骤,以减少噪音,同时仍然使近边缘的分开。然后,将种子填充算法应用于车道位置,识别车道标记类型;该方法能够识别五种类型的车道标记:虚线、实线、双实线、虚线-实线和实线-虚线。将该方法应用于各种情况下的大量视频序列,准确率达到95%以上。
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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