基于主成分追踪背景建模的车辆自动计数方法

Jorge Quesada, P. Rodríguez
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引用次数: 35

摘要

在主动交通管理和自动路线规划等应用中,估计交通视频序列中存在的车辆数量是一个常见的任务。目前有几种车辆计数方法,如粒子滤波或前灯检测等。虽然主成分追踪(PCP)被认为是视频背景建模的最先进技术,但它以前还没有被用于这项任务。这主要是因为现有的PCP算法大多是批处理方法,计算成本高,不适合实时车辆计数。在本文中,我们提出使用一种新的基于pcp的增量算法来实时估计俯视交通视频序列中存在的车辆数量。我们针对几个具有挑战性的数据集测试了我们的方法,在性能和速度方面取得了与最先进的方法相媲美的结果:在计算通过虚拟门的车辆时,平均准确率为98%,在估计场景中存在的车辆总数时,平均准确率为91%,处理时间高达26 fps。
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Automatic vehicle counting method based on principal component pursuit background modeling
Estimating the number of vehicles present in traffic video sequences is a common task in applications such as active traffic management and automated route planning. There exist several vehicle counting methods such as Particle Filtering or Headlight Detection, among others. Although Principal Component Pursuit (PCP) is considered to be the state-of-the-art for video background modeling, it has not been previously exploited for this task. This is mainly because most of the existing PCP algorithms are batch methods and have a high computational cost that makes them unsuitable for real-time vehicle counting. In this paper, we propose to use a novel incremental PCP-based algorithm to estimate the number of vehicles present in top-view traffic video sequences in real-time. We test our method against several challenging datasets, achieving results that compare favorably with state-of-the-art methods in performance and speed: an average accuracy of 98% when counting vehicles passing through a virtual door, 91% when estimating the total number of vehicles present in the scene, and up to 26 fps in processing time.
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