Multi-lane detection in urban driving environments using conditional random fields

Junhwa Hur, Seung-Nam Kang, S. Seo
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引用次数: 101

Abstract

Over the past few decades, the need has arisen for multi-lane detection algorithms for use in vehicle safety-related applications. In this paper we propose a new multi-lane detection algorithm that works well in urban situations. This algorithm detects four lane marks, including driving lane marks and adjacent lane marks. Conventional research assumes that lanes are parallel. In contrast, our approach does not require this assumption, thus enabling the algorithm to manage various non-parallel lane situations, such as are found at intersections, in splitting lanes, and in merging lanes. To detect multi-lane marks successfully in the absence of parallelism, we adopt Conditional Random Fields (CRFs), which are strong models for solving multiple association tasks. We show that CRFs are very effective tools for multi-lane detection because they find an optimal association of multiple lane marks in complex and challenging urban road situations. Through simulations, and by using video sequences with 752-480 resolution and Caltech Lane Datasets with runtime rates of 30 fps, we verify that our algorithm successfully detects non-parallel lanes as well as parallel lanes appearing in urban streets.
基于条件随机场的城市驾驶环境多车道检测
在过去的几十年里,对多车道检测算法的需求已经出现,用于车辆安全相关的应用。在本文中,我们提出了一种新的多车道检测算法,可以很好地应用于城市环境。该算法检测四种车道标记,包括行驶车道标记和相邻车道标记。传统研究假设车道是平行的。相比之下,我们的方法不需要这个假设,从而使算法能够管理各种非平行车道的情况,例如在交叉路口、车道分割和车道合并中发现的情况。为了在没有并行性的情况下成功检测多车道标记,我们采用了条件随机场(CRFs),这是解决多关联任务的强大模型。研究表明,CRFs是非常有效的多车道检测工具,因为它可以在复杂和具有挑战性的城市道路情况下找到多个车道标记的最佳关联。通过模拟,并使用752-480分辨率的视频序列和运行速率为30 fps的加州理工学院车道数据集,我们验证了我们的算法成功地检测到城市街道上出现的非平行车道和平行车道。
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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