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Detection of Moving Objects from a Moving Platform in Urban Scenes

机译:从城市场景中的移动平台检测移动物体的移动物体

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Moving object detection in urban scenes is important for the guidance of autonomous vehicles, robot navigation, and monitoring. In this paper moving objects are automatically detected using three sequential frames and tracked over a longer period. To this extend we modify the plane+parallax, fundamental matrix, and trifocal tensor algorithms to operate on three sequential frames automatically, and test their ability to detect moving objects in challenging urban scenes. Frame-to-frame correspondences are established with the use of SIFT keys. The keys that are consistently matched over three frames are used by the algorithms to distinguish between static objects and moving objects. The tracking of keys for the detected moving objects increases their reliability over time, which is quantified by our results. To evaluate the three different algorithms, we manually segment the moving objects in real world data and report the fraction of true positives versus false positives. Results show that the plane+parallax method performs very well on our datasets and we prove that our modification to this method outperforms the original method. The proposed combination of the advanced plane+parallax method with the trifocal tensor method improves on the moving object detection and their tracking for one of the four video sequences.
机译:在城市场景中移动物体检测对于自主车辆,机器人导航和监控的指导至关重要。在本文中,使用三个顺序帧自动检测移动物体,并在更长的时间段内跟踪。为了实现这一扩展,我们修改平面+视差,基本矩阵和三焦点张量算法,自动在三个连续帧上运行,并测试它们在具有挑战性的城市场景中检测移动物体的能力。使用SIFT键建立帧到帧对应关系。算法使用始终匹配三个帧的键来区分静态对象和移动物体。检测到的移动对象的键跟踪随着时间的推移而增加了它们的可靠性,这通过我们的结果量化。为了评估三种不同的算法,我们手动将移动物体分段为现实世界数据,并报告真正的阳性的分数与误报。结果表明,平面+视差方法对我们的数据集进行非常好,我们证明我们对该方法的修改优于原始方法。提出的先进平面+视差方法与三焦点张量方法的组合改善了移动物体检测及其对四个视频序列之一的跟踪。

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