Public Place Crowd Transaction Monitoring System

Zhize Wang
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Abstract

Currently, the phenomenon of abnormal movement in public spaces by groups is becoming increasingly prominent, leading to issues concerning public flow and safety. The escalating problems of high crowd density, the presence of controlled dangerous items, and unexpected group activities highlight the necessity for timely detection in public settings. Timely identification of such scenarios will facilitate prompt responses and assistance from relevant government departments. Exploring how artificial intelligence technology can aid urban management personnel in effectively detecting abnormal group behaviors is crucial. Having the ability to swiftly and efficiently evacuate crowds in emergency situations holds significant practical importance. This paper employs deep learning methodologies to assist urban management personnel in efficiently monitoring crowd density and detecting abnormal behaviors. The aim is to maintain crowd density within reasonable limits and enable rapid and effective crowd evacuation in emergency situations. Detection of abnormal group behaviors typically involves methods based on global features, extracting feature patterns like optical flow from entire video segments and constructing corresponding histograms. Given that automatic classification of crowd patterns involves sudden and abnormal changes, a novel method is proposed to extract motion "textures" from dynamic STV (Space-Time Volume) blocks formed from real-time video streams.
公共场所人群交易监控系统
当前,公共场所的群体异常移动现象日益突出,引发了有关公共流动和安全的问题。高密度人群、管制危险物品、突发群体活动等问题的不断升级,凸显了在公共场所及时发现的必要性。及时发现此类情况将有助于相关政府部门迅速做出反应和提供帮助。探索人工智能技术如何帮助城市管理人员有效检测异常群体行为至关重要。具备在紧急情况下迅速有效疏散人群的能力具有重要的现实意义。本文采用深度学习方法,帮助城市管理人员有效监控人群密度并检测异常行为。目的是将人群密度保持在合理范围内,并在紧急情况下实现快速有效的人群疏散。异常群体行为的检测通常采用基于全局特征的方法,从整个视频片段中提取光流等特征模式,并构建相应的直方图。鉴于人群模式的自动分类涉及突然和异常的变化,我们提出了一种新方法,从实时视频流形成的动态 STV(时空卷)块中提取运动 "纹理"。
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