论文标题

在人群中跟踪具有挑战性:根据身体特征分析人群

Tracking in Crowd is Challenging: Analyzing Crowd based on Physical Characteristics

论文作者

Miti, Constantinou, Zatte, Demetriou, Gondal, Siraj Sajid

论文摘要

目前,人们的安全已成为不同地方的一个非常重要的问题,包括地铁站,大学,大学,机场,购物中心和广场,城市广场。因此,考虑情报事件检测系统是更多,紧急需要的。开发事件检测方法是为了智能地识别异常行为,因此公众可以尽快采取行动以防止不必要的活动。由于不同领域的人群密度很高,因此问题非常具有挑战性。这些问题之一是遮挡,由于该图1所示,个人跟踪和分析变得不可能。其次,更具挑战性的是对人群中个体行为的正确表示。我们考虑了一种应对这些挑战的新方法。考虑到跟踪的挑战,我们将完整的框架分为较小的斑块,并提取运动模式以证明每个单独的贴片中的运动。为此,我们的工作考虑了KLT Corners作为合并功能,以描述移动区域并通过考虑光流方法跟踪这些功能。要嵌入运动模式,我们将贴片中所有运动信息的分布开发和考虑为高斯分布,并将高斯模型的参数作为我们的运动模式描述符。

Currently, the safety of people has become a very important problem in different places including subway station, universities, colleges, airport, shopping mall and square, city squares. Therefore, considering intelligence event detection systems is more and urgently required. The event detection method is developed to identify abnormal behavior intelligently, so public can take action as soon as possible to prevent unwanted activities. The problem is very challenging due to high crowd density in different areas. One of these issues is occlusion due to which individual tracking and analysis becomes impossible as shown in Fig. 1. Secondly, more challenging is the proper representation of individual behavior in the crowd. We consider a novel method to deal with these challenges. Considering the challenge of tracking, we partition complete frame into smaller patches, and extract motion pattern to demonstrate the motion in each individual patch. For this purpose, our work takes into account KLT corners as consolidated features to describe moving regions and track these features by considering optical flow method. To embed motion patterns, we develop and consider the distribution of all motion information in a patch as Gaussian distribution, and formulate parameters of Gaussian model as our motion pattern descriptor.

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