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Methods to Detect Road Features for Video-Based In-Vehicle Navigation Systems

机译:基于视频的车载导航系统的道路特征检测方法

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Understanding road features such as position and color of lane markings in a live video captured from a moving vehicle is essential in building video-based car navigation systems. In this article, the authors present a framework to detect road features in 2 difficult situations: (a) ambiguous road surface conditions (i.e., damaged roads and occluded lane markings caused by the presence of other vehicles on the road) and (b) poor illumination conditions (e.g., backlight, during sunset). Furthermore, to understand the lane number that a driver is driving on, the authors present a Bayesian network (BN) model, which is necessary to support more sophisticated navigation services for drivers such as recommending lane change at an appropriate time before turning left or right at the next intersection. In the proposed BN approach, evidence from (1) a computer vision engine (e.g., lane-color detection) and (2) a navigation database (e.g., the total number of lanes) was fused to more accurately decide the lane number. Extensive simulation results indicated that the proposed methods are both robust and effective in detecting road features for a video-based car navigation system.
机译:在构建基于视频的汽车导航系统时,了解道路特征(例如从行驶中的车辆捕获的实时视频中车道标记的位置和颜色)至关重要。在本文中,作者提出了一种框架来检测2种困难情况下的道路特征:(a)歧义的路面状况(即,道路上存在其他车辆造成的损坏的道路和封闭的车道标记)和(b)不良照明条件(例如,日落期间的背光)。此外,为了了解驾驶员正在行驶的车道号,作者提出了一种贝叶斯网络(BN)模型,该模型对于支持驾驶员更为复杂的导航服务是必要的,例如在向左或向右转弯之前的适当时间建议换道在下一个路口。在提出的BN方法中,融合了来自(1)计算机视觉引擎(例如,车道颜色检测)和(2)导航数据库(例如,车道总数)的证据,以更准确地确定车道号。大量的仿真结果表明,所提出的方法在基于视频的汽车导航系统的道路特征检测中既鲁棒又有效。

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