Vehicle detection and tracking using Mean Shift segmentation on semi-dense disparity maps

S. Lefebvre, S. Ambellouis
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引用次数: 29

Abstract

This paper describes an original joint obstacle detection and tracking method based on a Mean Shift algorithm and semi-dense disparity maps. The semi-dense disparity maps are computed with a local 1D fuzzy scanline stereo matching approach. Each map is associated to a confidence map that is used to remove bad matches. The Mean Shift algorithm is applied to simultaneously extract each vehicle and track the 3D points belonging to the same vehicle along the sequence. We show that several vehicles can be efficiently detected and that a semi-dense disparity map is sufficient to reach an accurate segmentation even when occlusions occur. This paper presents some results on real image sequences acquired in the context of Advanced Driver Assistance Systems.
在半密集视差地图上使用Mean Shift分割的车辆检测和跟踪
本文提出了一种新颖的基于Mean Shift算法和半密集视差图的联合障碍物检测与跟踪方法。采用局部一维模糊扫描线立体匹配方法计算半密集视差图。每个映射都与一个置信度映射相关联,该置信度映射用于删除不良匹配项。采用Mean Shift算法同时提取每辆车,并沿序列跟踪属于同一辆车的三维点。我们证明了几种车辆可以有效地检测到,并且即使发生遮挡,半密集的视差图也足以达到准确的分割。本文给出了在高级驾驶辅助系统背景下获取的真实图像序列的一些结果。
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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