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Crowd behavior detection by statistical modeling of motion patterns

机译:通过运动模式统计建模的人群行为检测

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The governing behaviors of individuals in crowded places offer unique and difficult challenges, and limit the scope of conventional surveillance systems. In this paper, we investigate the crowd behaviors and localize the anomalies due to individual's abrupt dissipation. The novelty of the proposed approach can be described in three aspects. First, we introduce block-clips by sectioning the video segments into non-overlapping spatio-temporal patches to marginalize the arbitrarily complicated and dense flow field. Second, we treat the flow field in each block-clip as 2d distribution of samples and mixtures of Gaussian is used to parameterize it keeping generality of flow field intact. K-means algorithm is employed to initialize the mixture model and is followed by Expectation Maximization for optimization. These mixtures of Gaussian result in the distinct flow patterns precisely a sequence of dynamic patterns for each block-clip. Third, a bank of Conditional Random Field model is employed one for each block clip and is learned from the sequence of dynamic patterns and classifies each block-clip as normal and abnormal. We conduct experiment on two challenging benchmark crowd datasets PETS 2009 and University of Minnesota and results show that our method achieves higher recognition rates in detecting specific and overall crowd behaviors. In addition, the proposed approach shows dominating performance during the comparative analysis with similar approaches in crowd behavior detection.
机译:拥挤地方的个人的管理行为提供独特而困难的挑战,并限制传统监测系统的范围。在本文中,我们调查人群行为并由于个人突然耗散而定位异常。所提出的方法的新颖性可以在三个方面描述。首先,我们通过将视频段切断到非重叠的时空贴片中来引入块剪辑,以使任意复杂和致密的流场边缘化。其次,我们将每个块夹中的流场对待作为高斯的样本和混合物的2D分布用于参数化,其保持流场的完整性。 K-Means算法用于初始化混合模型,然后是期望最大化以进行优化。 Gaussian的这些混合物在不同的流动模式中恰好是每个块夹的动态模式序列。第三,将一组有条件的随机字段模型用于每个块剪辑,并且从动态模式的序列中学习,并将每个块剪辑分类为正常和异常。我们对两个具有挑战性的基准人群数据集2009和明尼苏达大学进行实验,结果表明,我们的方法在检测特定和整体人群行为方面取得了更高的识别率。此外,所提出的方法在比较分析期间占主导地位性能,在人群行为检测中具有相似的方法。

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