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首页> 外文期刊>Journal of Networks >Pedestrian Motion Tracking and Crowd Abnormal Behavior Detection Based on Intelligent Video Surveillance
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Pedestrian Motion Tracking and Crowd Abnormal Behavior Detection Based on Intelligent Video Surveillance

机译:行人运动跟踪和人群异常基于智能视频行为检测监测

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Pedestrian tracking and detection of crowd abnormal activity under dynamic and complex background using Intelligent Video Surveillance (IVS) system are beneficial for security in public places. This paper presents a pedestrian tracking method combing Histogram of Oriented Gradients (HOG) detection and particle filter. This method regards the particle filter as the tracking framework, identifies the target area according to the result of HOG detection and modifies particle sampling constantly. Our method can track pedestrians in dynamic backgrounds more accurately compared with the traditional particle filter algorithms. Meanwhile, a method to detect crowd abnormal activity is also proposed based on a model of crowd features using Mixture of Gaussian (MOG). This method calculates features of crowd-interest points, then establishes the crowd features model using MOG, conducts self-adaptive updating and detects abnormal activity by matching the input feature with model distribution. Experiments show our algorithm can efficiently detect abnormal velocity and escape panic in crowds with a high detection rate and a relatively low false alarm rate.
机译:行人跟踪和检测的人群在动态和复杂的异常活动使用智能视频监控的背景(IVS)系统的安全有益公共场所。跟踪方法结合面向的柱状图梯度(猪)检测和粒子滤波。该方法作为粒子滤波跟踪框架,确定了目标区域根据猪检测和的结果不断修改粒子采样。可以跟踪行人在动态背景更多准确地与传统的粒子过滤算法。提出了基于人群异常活动使用混合的人群特征的模型高斯(MOG)。crowd-interest点,然后建立了使用MOG人群特性模型,进行自适应更新和检测异常活动通过与模型匹配的输入特性分布。有效地检测异常速度和逃避恐慌与高检测率和人群相对较低的误警率。

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