Big Data Enabled Realtime Crowd Surveillance and Threat Detection Using Artificial Intelligence and Deep Learning

Aquib Hasware, Deepali Ujalambkar
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Abstract

In recent years, security precautions at public events have become increasingly important as a direct response to the growth in the number of disruptive actions. There are several various varieties of closed-circuit televisions that are employed to perform 24-hour surveillance of public areas and the people that live such areas. Every person in a socialised society with a population of 1.6 billion is subjected to imprinted pictures an average of 30 times each day. Since the entire participation of the community is required to safeguard public areas from the most unexpected and lethal of events, it is difficult to discern whether an incident is an exceptional or casual occurrence because continual monitoring of human data makes it difficult to distinguish the difference. Within the scope of this study, we propose a method for identifying potentially threatening actions within footage obtained from closed-circuit television systems. To accomplish this objective, we must first extract individual still frames from the video and then examine the actions of the people seen in those still frames. We have placed a significant amount of reliance on both machine learning and deep learning algorithms to make this a reality. To automate this process, we must first develop a training model that makes use of many photos and a "Convolution Neural Network" that makes use of the Tensor Flow Python package. This model must be created before we can move on to automating the process. Every frame from every video that is provided will be used to train an algorithm that will analyse the film and evaluate whether it contains suspicious content or merely everyday activities. If we conclude that the activity was suspicious, the next phase of the study will concentrate on locating any weapons that may have been concealed on the corpse.
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使用人工智能和深度学习实现大数据实时人群监视和威胁检测
近年来,公共活动的安全防范措施变得越来越重要,因为这是对破坏性行为数量增长的直接反应。有几种不同种类的闭路电视被用来对公共区域和居住在这些区域的人进行24小时监视。在一个拥有16亿人口的社会化社会中,每个人平均每天都会接触到30次带有烙印的图片。由于需要整个社区的参与来保护公共区域免受最意想不到和致命的事件的影响,因此很难辨别事件是例外事件还是偶然事件,因为对人类数据的持续监测使得很难区分两者之间的区别。在本研究的范围内,我们提出了一种方法来识别从闭路电视系统获得的镜头中潜在的威胁行为。为了实现这一目标,我们必须首先从视频中提取单个静止帧,然后检查在这些静止帧中看到的人的动作。我们在很大程度上依赖机器学习和深度学习算法来实现这一目标。为了使这个过程自动化,我们必须首先开发一个使用许多照片的训练模型和一个使用Tensor Flow Python包的“卷积神经网络”。必须先创建这个模型,然后我们才能继续自动化这个过程。提供的每个视频的每一帧都将用于训练一种算法,该算法将分析电影并评估它是否包含可疑内容或仅仅是日常活动。如果我们得出可疑的结论,下一阶段的研究将集中于找出可能藏在尸体上的武器。
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