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Detection of unusual optical flow patterns by multilevel hidden Markov models

机译:通过多级隐马尔可夫模型检测异常光流模式

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摘要

The analysis of motion information is one of the main tools for the understanding of complex behaviors in video. However, due to the quality of the optical flow of low-cost surveillance camera systems and the complexity of motion, new robust image-processing methods are required to generate reliable higher-level information. In our novel approach there is no need for tracking objects (vehicles, pedestrians) in order to recognize anomalous motion, but dense optical flow information is used to construct mixtures of Gaussians, which are analyzed temporally. We create a multilevel model, where low-level states of non-overlapping image regions are modeled by continuous hidden Markov models (HMMs). From low-level HMMs we compose high-level HMMs to analyze the occurrence of the low-level states. The processing of large numbers of data in traditional HMMs can result in a precision problem due to the multiplication of low probability values. Thus, besides introducing new motion models, we incorporate a scaling technique into the mathematical model of HMMs to avoid precision problems and to get an effective tool for the analysis of large numbers of motion vectors. We illustrate the use of our models with real-life traffic videos.
机译:运动信息分析是了解视频中复杂行为的主要工具之一。但是,由于低成本监视摄像机系统的光流质量和运动的复杂性,需要新的鲁棒的图像处理方法来生成可靠的高级信息。在我们的新颖方法中,无需为了识别异常运动而跟踪对象(车辆,行人),而是使用密集的光流信息来构造高斯混合信号,并对其进行时间分析。我们创建了一个多级模型,其中不重叠图像区域的低级状态由连续的隐马尔可夫模型(HMM)建模。我们从低级HMM组成高级HMM,以分析低级状态的发生。由于低概率值的乘积,在传统HMM中处理大量数据可能会导致精度问题。因此,除了引入新的运动模型之外,我们还将定标技术纳入HMM的数学模型中,以避免精度问题,并获得了用于分析大量运动矢量的有效工具。我们通过实际交通视频演示了我们模型的使用。

著录项

  • 来源
    《Optical engineering》 |2010年第1期|p.017201.1-017201.11|共11页
  • 作者

    Akos Utasi; Laszlo Czuni;

  • 作者单位

    Hungarian Academy of Sciences Computer and Automation Research Institute Kende u. 13-17 Budapest, H-1111, Hungary;

    University of Pannonia Department of Electrical Engineering and Information Systems Egyetem u. 10 Veszprem H-8200, Hungary;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    unusual-event detection; mixture of Gaussians; hidden Markov models;

    机译:异常事件检测;高斯混合体;隐藏的马尔可夫模型;

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