Lane Detection Under Adverse Conditions Based on Dual Color Space

Nima Zarbakht, J. Zou
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引用次数: 5

Abstract

A high level of situational awareness is essential to an advanced driver assistance system. One of the most important duties of such a system is the detection of lane markings on the road and to distinguish them from the road and other objects such as shadows, traffic, etc. A robust lane detection algorithm is critical to a lane departure warning system. It must determine the relative lane position reliably and rapidly using captured images. The available literature provides some methods to solve problems associated with adverse conditions such as precipitation, glare and blurred lane markings. However, the reliability of these methods can be adversely affected by the lighting conditions. In this paper, a new method is proposed that combines two distinct color spaces to reduce interference in a pre-processing step. The method is adaptive to different lighting situations. The directional gradient is used to detect the lane marking edges. The method can detect lane markings with different complexities imposed by shadows, rain, reflection, strong sources of light such as headlights and tail lights.
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基于双颜色空间的不利条件下车道检测
高水平的态势感知对于先进的驾驶员辅助系统至关重要。这种系统最重要的职责之一是检测道路上的车道标记,并将它们与道路和其他物体(如阴影、交通等)区分开来。鲁棒的车道检测算法是车道偏离预警系统的关键。它必须利用捕获的图像可靠、快速地确定相对车道位置。现有的文献提供了一些方法来解决与不利条件有关的问题,如降水、眩光和模糊的车道标记。然而,这些方法的可靠性会受到光照条件的不利影响。本文提出了一种结合两个不同颜色空间的方法来减少预处理步骤中的干扰。该方法可适应不同的照明情况。方向梯度用于检测车道标记边缘。该方法可以检测由阴影、雨水、反射、强光源(如前灯和尾灯)施加的不同复杂性的车道标记。
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