基于核化相关滤波器的城市混合交通多目标跟踪

Yuebin Yang, Guillaume-Alexandre Bilodeau
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引用次数: 27

摘要

近年来,核化相关滤波器跟踪器在视觉目标跟踪中取得了较好的性能和鲁棒性。另一方面,视觉跟踪器通常不用于多目标跟踪。在本文中,我们研究了像KCF这样的鲁棒视觉跟踪器如何改善多目标跟踪。由于KCF是一个快速跟踪器,许多KCF可以并行使用,并且仍然导致快速跟踪。我们构建了一个基于KCF和背景相减的多目标跟踪系统。结合KCF输出,利用背景减法提取运动目标,得到运动目标的尺度和大小,利用KCF进行数据关联,处理碎片和遮挡问题。因此,KCF和背景减法在每一帧都能相互帮助做出跟踪决策。有时KCF输出是最可信的(例如在遮挡期间),而在其他一些情况下,它是背景减法输出。为了验证我们系统的有效性,我们对来自标准数据集的四个城市交通视频进行了测试。结果表明,即使我们使用更简单的数据关联步骤,我们的方法也与最先进的跟踪器相竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Object Tracking with Kernelized Correlation Filters in Urban Mixed Traffic
Recently, the Kernelized Correlation Filters tracker (KCF) achieved competitive performance and robustness in visual object tracking. On the other hand, visual trackers are not typically used in multiple object tracking. In this paper, we investigate how a robust visual tracker like KCF can improve multiple object tracking. Since KCF is a fast tracker, many KCF can be used in parallel and still result in fast tracking. We built a multiple object tracking system based on KCF and background subtraction. Background subtraction is applied to extract moving objects and get their scale and size in combination with KCF outputs, while KCF is used for data association and to handle fragmentation and occlusion problems. As a result, KCF and background subtraction help each other to take tracking decision at every frame. Sometimes KCF outputs are the most trustworthy (e.g. during occlusion), while in some other cases, it is the background subtraction outputs. To validate the effectiveness of our system, the algorithm was tested on four urban traffic videos from a standard dataset. Results show that our method is competitive with state-of-the-art trackers even if we use a much simpler data association step.
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