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Robust person tracking in real scenarios with non-stationary background using a statistical computer vision approach

机译:使用统计计算机视觉方法在非平稳背景下的真实场景中进行可靠的人员跟踪

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This paper presents a novel approach to robust and flexible person tracking using an algorithm that combines two powerful stochastic modeling techniques: The first one is the technique of so-called Pseudo-2D Hidden Markov Models (P2DHMMs) used for capturing the shape of a person with an image frame, and the second technique is the well-known Kalman-filtering algorithm, that uses the output of the P2DHMM for tracking the person by estimation of a bounding box trajectory indicating the location of the person within the entire video sequence. Both algorithms are cooperating together in an optimal way, and with this cooperative feedback, the proposed approach even makes the tracking of persons possible in the presence of background motions, for instance caused by moving objects such as cars, or by camera operations as, for example, panning or zooming. We consider this as major advantage compared to most other tracking algorithms that are mostly not capable of dealing with background motion. Furthermore, the person to be tracked is not required to wear special equipment (e.g. sensors) or special clothing. We therefore believe that our proposed algorithm is among the first approaches capable of handling such a complex tracking problem. Our results are confirmed by several tracking examples in real scenarios, shown at the end of the paper and provided on the web server of our institute.
机译:本文提出了一种使用结合了两种强大的随机建模技术的算法进行鲁棒和灵活的人跟踪的新方法:第一种是用于捕获人形的所谓的伪2D隐马尔可夫模型(P2DHMM)技术第二种技术是众所周知的卡尔曼滤波算法,该算法使用P2DHMM的输出通过估计指示整个视频序列中人的位置的包围盒轨迹来跟踪人。两种算法都以一种最佳方式进行协作,并且借助这种协作反馈,所提出的方法甚至可以在存在背景运动的情况下对人员进行跟踪,例如运动物体(例如汽车)或相机操作(例如,例如,平移或缩放。与大多数其他无法处理背景运动的跟踪算法相比,我们认为这是主要优势。此外,被跟踪者不需要穿着特殊设备(例如传感器)或特殊衣服。因此,我们认为,我们提出的算法是能够处理这种复杂跟踪问题的首批方法之一。我们的结果通过真实场景中的几个跟踪示例得到了证实,这些示例显示在本文的末尾,并提供给我所的Web服务器。

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