Kalman Particle Filter for lane recognition on rural roads

H. Loose, U. Franke, C. Stiller
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引用次数: 93

Abstract

Despite the availability of lane departure and lane keeping systems for highway assistance, unmarked and winding rural roads still pose challenges to lane recognition systems. To detect an upcoming curve as soon as possible, the viewing range of image-based lane recognition systems has to be extended. This is done by evaluating 3D information obtained from stereo vision or imaging radar in this paper. Both sensors deliver evidence grids as the basis for road course estimation. Besides known Kalman Filter approaches, Particle Filters have recently gained interest since they offer the possibility to employ cues of a road, which can not be described as measurements needed for a Kalman Filter approach. We propose to combine both principles and their benefits in a Kalman Particle Filter. The comparison between the results gained from this recently published filter scheme and the classical approaches using real world data proves the advantages of the Kalman Particle Filter.
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卡尔曼粒子滤波在农村道路车道识别中的应用
尽管有车道偏离和车道保持系统来辅助高速公路,但没有标记和蜿蜒的农村道路仍然对车道识别系统构成挑战。为了尽快发现即将到来的弯道,基于图像的车道识别系统的观察范围必须扩大。这是通过评估从立体视觉或成像雷达获得的三维信息来完成的。这两种传感器都提供证据网格作为道路航向估计的基础。除了已知的卡尔曼滤波方法,粒子滤波最近也引起了人们的兴趣,因为它们提供了使用道路线索的可能性,而道路线索不能被描述为卡尔曼滤波方法所需的测量。我们建议在卡尔曼粒子滤波中结合这两种原理及其优点。将本文提出的滤波方案与经典滤波方法的结果进行比较,证明了卡尔曼粒子滤波的优越性。
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