ELA - an exit lane assistant for adaptive cruise control and navigation systems

S. Hold, S. Görmer, A. Kummert, M. Meuter, Stefan Müller-Schneiders
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引用次数: 12

Abstract

This paper presents a new application, the Exit Lane Assistant (ELA), based on a novel and robust vision-based classifier of lane boundary types. Using the knowledge that the exit lane is separated by a special lane boundary type from the other lanes, the intention of leaving the motorway can be recognized by classifying the type of the crossed lane boundaries. Therefore, lane markings are detected at predefined vertical coordinates in the image, so-called scanlines. The detection results, lane marking detected or not detected, are saved into a one-dimensional time-series for each scanline and lane boundary. Based on a Fourier analysis of the set of time series, features are extracted and compared with the theoretic values for the different boundary types using a nearest-neighbor classifier. The lane boundary type is determined fusing the classification results of each scanline based on their confidence. The exit lane ist finally recognized by a rule-based fusion with a digital map.
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ELA -自适应巡航控制和导航系统的出口车道助手
本文提出了一种新的应用——出口车道辅助(ELA),它基于一种新颖的、鲁棒的基于视觉的车道边界类型分类器。利用出口车道被一种特殊的车道边界类型与其他车道隔开的知识,通过对穿过的车道边界类型进行分类,可以识别出驶离高速公路的意图。因此,车道标记是在图像中预定义的垂直坐标处检测到的,即所谓的扫描线。检测结果(检测到或未检测到车道标记)保存为每个扫描线和车道边界的一维时间序列。在对时间序列集进行傅里叶分析的基础上,提取不同边界类型的特征,并使用最近邻分类器与理论值进行比较。基于置信度,融合各扫描线的分类结果确定车道边界类型。出口车道列表最终被基于规则的数字地图融合识别。
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