Shabana Habib, Altaf Hussain, Muhammad Islam, Sheroz Khan, Waleed Albattah
{"title":"Towards Efficient Detection and Crowd Management for Law Enforcing Agencies","authors":"Shabana Habib, Altaf Hussain, Muhammad Islam, Sheroz Khan, Waleed Albattah","doi":"10.1109/CAIDA51941.2021.9425076","DOIUrl":null,"url":null,"abstract":"each year more than two million Muslims from around the world come to perform Hajj in Makah. It is considered the world's largest recorded human gathering during any worshiping event. Safety makes one of the main concerns with regards to managing such large crowds for ensuring that stampedes and other similar overcrowding accidents are avoided. For this purpose, 5000 cameras are installed around the holy sites for monitoring purposes. Due to the continuous nature of surveillance systems in generating video data, it is almost impossible to efficiently and accurately monitor an event of this size in real-time. Analyzing such huge data has required a lot of human resources. Therefore, there is a great need for advanced intelligent techniques to automatically count and manage such large crowds. In order to create an advanced intelligent system that contributes to crowds counting and managing through the surveillance system. In this paper, we propose an accurate computer vision-based approach to crowd management using Convolutional Neural Network (CNN). Our proposed framework is three folds. In the first fold, our own dataset for pilgrim detection is created, covering both sparse and dense crowds. In the second fold, a Faster-RCNN object detection model is trained to detect and count the number of pilgrims. In the third fold, utilizing the resources efficiently the surveillance system has used frame differencing technique to differentiate between motion and static video frames. Only in the case of some sort of motion, we will pass these frames to the pilgrims counting model to tell us about the number of pilgrims in the video. When the number of pilgrims counting is exceeded from the pre-defined threshold the system will automatically trigger the alarm pointing the camera to the location to inform the concerned authorities to take action appropriate measures. Along with that, only the dense crowd will be monitored by law enforcement and for better management. Our experiments show that Faster Region CNN (Faster RCNN) is suitable for accurate detection when compared with other state-of-art crowd management techniques so far reported.","PeriodicalId":272573,"journal":{"name":"2021 1st International Conference on Artificial Intelligence and Data Analytics (CAIDA)","volume":"4 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-04-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"7","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2021 1st International Conference on Artificial Intelligence and Data Analytics (CAIDA)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/CAIDA51941.2021.9425076","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 7
Abstract
each year more than two million Muslims from around the world come to perform Hajj in Makah. It is considered the world's largest recorded human gathering during any worshiping event. Safety makes one of the main concerns with regards to managing such large crowds for ensuring that stampedes and other similar overcrowding accidents are avoided. For this purpose, 5000 cameras are installed around the holy sites for monitoring purposes. Due to the continuous nature of surveillance systems in generating video data, it is almost impossible to efficiently and accurately monitor an event of this size in real-time. Analyzing such huge data has required a lot of human resources. Therefore, there is a great need for advanced intelligent techniques to automatically count and manage such large crowds. In order to create an advanced intelligent system that contributes to crowds counting and managing through the surveillance system. In this paper, we propose an accurate computer vision-based approach to crowd management using Convolutional Neural Network (CNN). Our proposed framework is three folds. In the first fold, our own dataset for pilgrim detection is created, covering both sparse and dense crowds. In the second fold, a Faster-RCNN object detection model is trained to detect and count the number of pilgrims. In the third fold, utilizing the resources efficiently the surveillance system has used frame differencing technique to differentiate between motion and static video frames. Only in the case of some sort of motion, we will pass these frames to the pilgrims counting model to tell us about the number of pilgrims in the video. When the number of pilgrims counting is exceeded from the pre-defined threshold the system will automatically trigger the alarm pointing the camera to the location to inform the concerned authorities to take action appropriate measures. Along with that, only the dense crowd will be monitored by law enforcement and for better management. Our experiments show that Faster Region CNN (Faster RCNN) is suitable for accurate detection when compared with other state-of-art crowd management techniques so far reported.
每年有200多万来自世界各地的穆斯林来到麦加进行朝觐。这被认为是世界上有记录的在任何礼拜活动中最大的人类集会。在管理如此庞大的人群以确保避免踩踏和其他类似的过度拥挤事故时,安全是主要问题之一。为此目的,在圣地周围安装了5000个摄影机,以便进行监测。由于监控系统产生视频数据的连续性,几乎不可能高效、准确地实时监控如此大规模的事件。分析如此庞大的数据需要大量的人力资源。因此,非常需要先进的智能技术来自动计数和管理如此庞大的人群。为了创建一个先进的智能系统,有助于通过监控系统进行人群统计和管理。在本文中,我们提出了一种基于卷积神经网络(CNN)的精确计算机视觉的人群管理方法。我们提出的框架有三层。在第一个折叠中,我们创建了自己的朝圣者检测数据集,涵盖了稀疏和密集的人群。在第二部分中,训练了一个Faster-RCNN对象检测模型来检测和计数朝圣者的数量。在第三方面,系统利用帧差技术对动态视频帧和静态视频帧进行区分,有效地利用资源。只有在某种运动的情况下,我们才会将这些帧传递给朝圣者计数模型,以告诉我们视频中朝圣者的数量。当朝圣者人数超过预先设定的阈值时,系统会自动触发警报,将摄像头指向该地点,通知有关当局采取适当措施。与此同时,只有密集的人群才会受到执法部门的监控,并得到更好的管理。我们的实验表明,与目前报道的其他最先进的人群管理技术相比,Faster Region CNN (Faster RCNN)适合于准确的检测。