Real-time vehicle and lane detection with embedded hardware

J. Kaszubiak, M. Tornow, R. Kuhn, B. Michaelis, C. Knoeppel
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引用次数: 24

Abstract

For autonomously acting robots and driver assistance systems powerful optical stereo sensor systems are required. Object positions and environmental conditions have to be acquired in real-time. In this paper an algorithm based on a hardware-software co-design is applied. A depth-map is generated with a hierarchical detection method. A depth-histogram is generated by using the density distribution of the disparity in the depth-map. It is used for object detection. The object clustering can be accomplished without calculation of 3D-points, due to the almost identical mapping of the objects over the whole distance, within the histogram. A lane detection is applied by using a Hough transform. The suitability at night and the detection of small objects like bikers is proven.
实时车辆和车道检测与嵌入式硬件
对于自主行动的机器人和驾驶辅助系统,需要强大的光学立体传感器系统。物体位置和环境条件必须实时获取。本文采用了一种基于软硬件协同设计的算法。采用层次检测方法生成深度图。利用深度图中视差的密度分布生成深度直方图。它用于目标检测。由于直方图内整个距离的对象映射几乎相同,因此无需计算3d点即可完成对象聚类。利用霍夫变换进行车道检测。在夜间的适用性和小物体的检测,如骑自行车的证明。
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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