Robust Nighttime Road Lane Line Detection using Bilateral Filter and SAGC under Challenging Conditions

S. Sultana, Boshir Ahmed
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引用次数: 10

Abstract

In the last two decades, Advanced Driver Assistance Systems (ADAS) has been one of the most actively conducted areas of studies for reducing traffic accidents. Road lane line detection is one of the essential modules of ADAS. Lots of advancement has been already done, but most of the recent papers did not consider the wide variability of challenging nighttime conditions. In this paper, a method to detect nighttime lane line under different challenging conditions proposed. This simple technique can reach the real-time computation for ADAS applications and at the same time, can handle multiple challenges at a time. In the beginning, Bilateral Filter has been used to reduce the noise while preserving the edges. Next, we choose an optimized threshold (OT) for the Canny edge detector, which can detect edges under a wide variability of nighttime illumination conditions. After that Region of Interest (ROI) is selected using an equilateral triangle-shaped mask which helps to reduce computation time and remove unwanted edges. After that, lines are extracted by Probabilistic Hough Transform (PHT). Finally, a robust technique Slope and Angle based Geometric Constraints (SAGC) is proposed to remove the non-lane lines extracted by PHT. SAGC reduce false detection significantly. Experimental results show that the average detection rate is 94.05%, and the average detection time is 26.11ms per frame which outperformed state-of-the-art method.
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具有挑战性条件下使用双边滤波器和SAGC的夜间道路车道线检测
在过去的二十年里,先进驾驶辅助系统(ADAS)一直是减少交通事故研究中最活跃的领域之一。道路车道线检测是ADAS系统的重要模块之一。已经取得了很多进展,但最近的大多数论文都没有考虑到具有挑战性的夜间条件的广泛可变性。本文提出了一种不同挑战条件下的夜间车道线检测方法。这种简单的技术可以达到ADAS应用的实时计算,同时可以同时处理多个挑战。在一开始,双边滤波器被用来减少噪声,同时保持边缘。接下来,我们为Canny边缘检测器选择一个优化的阈值(OT),它可以在夜间照明条件的广泛变化下检测边缘。然后使用等边三角形掩模选择感兴趣区域(ROI),这有助于减少计算时间并去除不需要的边缘。然后,通过概率霍夫变换(PHT)提取线条。最后,提出了一种基于斜率和角度的几何约束(SAGC)鲁棒技术来去除PHT提取的非车道线。SAGC显著减少误检。实验结果表明,该方法的平均检测率为94.05%,平均检测时间为26.11ms /帧,优于现有方法。
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ICCRD 2021 Preface Point Cloud Depth Map and Optical Image Registration Based on Improved RIFT Algorithm ICCRD 2021 Copyright Page ICCRD 2021 Cover Page Robust Nighttime Road Lane Line Detection using Bilateral Filter and SAGC under Challenging Conditions
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