首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Early warning system: From face recognition by surveillance cameras to social media analysis to detecting suspicious people
【24h】

Early warning system: From face recognition by surveillance cameras to social media analysis to detecting suspicious people

机译:预警系统:从监控摄像机的人脸识别到社交媒体分析,以检测可疑人物

获取原文
获取原文并翻译 | 示例
       

摘要

Surveillance security cameras are increasingly deployed in almost every location for monitoring purposes, including watching people and their actions for security purposes. For criminology, images collected from these cameras are usually used after an incident occurs to analyze who could be the people involved. While this usage of the cameras is important for a post crime action, there exists the need for real time monitoring to act as an early warning to prevent or avoid an incident before it occurs. In this paper, we describe the development and implementation of an early warning system that recognizes people automatically in a surveillance camera environment and then use data from various sources to identify these people and build their profile and network. The current literature is still missing a complete workflow from identifying people/criminals from a video surveillance to building a criminal information extraction framework and identifying those people and their interactions with others We train a feature extraction model for face recognition using convolutional neural networks to get a good recognition rate on the Chokepoint dataset collected using surveillance cameras. The system also provides the function to record people appearance in a location, such that unknown people passing through a scene excessive number of times (above a threshold decided by a security expert) will then be further analyzed to collect information about them. We implemented a queue based system to record people entrance. We try to avoid missing relevant individuals passing through as in some cases it is not possible to add every passing person to the queue which is maintained using some cache handling techniques. We collect and analyze information about unknown people by comparing their images from the cameras to a list of social media profiles collected from Facebook and intelligent services archives. After locating the profile of a person, traditional news and other social media platforms are crawled to collect and analyze more information about the identified person. The analyzed information is then presented to the analyst where a list of keywords and verb phrases are shown. We also construct the person's network from individuals mentioned with him/her in the text. Further analysis will allow security experts to mark this person as a suspect or safe. This work shows that building a complete early warning system is feasible to tackle and identify criminals so that authorities can take the required actions on the spot. (C) 2019 Elsevier B.V. All rights reserved.
机译:监控安全摄像机几乎越来越多地部署在每个地点以进行监测目的,包括观察人和他们的安全目的。对于犯罪学,在发生事件后通常使用从这些摄像机收集的图像分析谁可以成为所涉及的人。虽然相机的使用对于犯罪行动是重要的,但需要实时监测需要作为预警以防止或避免发生之前的事件。在本文中,我们描述了一个早期预警系统的开发和实施,可以在监控相机环境中自动识别人,然后使用来自各种来源的数据来识别这些人并构建其配置文件和网络。目前的文献仍然缺少从视频监控中识别人/罪犯的完整工作流程,以建立犯罪信息提取框架并​​识别与其他人的互动,我们使用卷积神经网络训练面部识别的特征提取模型获得使用监控摄像机收集的ChokePoint DataSet上的良好识别率。该系统还提供了在某个位置记录人们的功能,使得通过场景过度的未知人员(以上阈值以安全专家决定的阈值)进一步分析以收集有关它们的信息。我们实现了一个基于队列的系统来记录人入口。我们尽量避免缺少相关的个人,因为在某些情况下,无法将每个传递人添加到使用一些缓存处理技术维护的队列中。通过将它们的图像与来自Facebook和智能服务档案馆收集的社交媒体档案列表进行比较,通过将其图像进行比较来收集和分析有关未知人员的信息。在找到一个人的个人资料之后,传统新闻和其他社交媒体平台逐渐爬行,收集和分析有关所确定的人的更多信息。然后将分析的信息呈现给分析师,其中显示了关键字和动词短语的列表。我们还在文本中与他/她提到的个人构建了该人的网络。进一步的分析将允许安全专家将此人称为可疑或安全。这项工作表明,建立完整的预警系统是可行的,可以解决和识别犯罪分子,以便当局可以在现场采取所需的行动。 (c)2019 Elsevier B.v.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号