Development of crowd detection warning system based on deep convolutional neural network using CCTV

Muhammad Nurwidya Ardiansyah, Marifa Kurniasari, Muhammad Dzulfiqar Amien, Danang Wijaya, P. Setialana
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Abstract

The 2019 corona virus (Covid-19) pandemic is a global problem for now. One way to deal with the spread of the corona virus is to maintain a distance of at least one meter and stay away from crowds. Therefore, a crowd detection warning system based on a deep convolutional neural network (deep CNN) was developed using CCTV. The development of this system was carried out using the NVIDIA Jetson Nano microcontroller as the computing hardware. Crowd object detection uses the OpenCV library, the YOLOv3-Tiny algorithm, and the euclidean distance method to calculate the distance between 'person' objects. Based on the tests carried out on function and performance, the results obtained that this crowd detection warning system can detect 'person' objects with an accuracy rate of 92.79. In addition, this system has also been able to detect several types of colors from objects so that warning messages can be given more specifically on the color of the clothes of the 'person' in the detected crowd.
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基于深度卷积神经网络的CCTV人群检测预警系统的开发
目前,2019冠状病毒(Covid-19)大流行是一个全球性问题。应对冠状病毒传播的一种方法是保持至少一米的距离,远离人群。因此,利用CCTV开发了一种基于深度卷积神经网络(deep CNN)的人群检测预警系统。本系统的开发采用NVIDIA Jetson Nano微控制器作为计算硬件。人群对象检测使用OpenCV库、YOLOv3-Tiny算法和欧几里得距离法计算“人”对象之间的距离。通过对功能和性能的测试,结果表明该人群检测预警系统能够检测出“人”物体,准确率为92.79。此外,该系统还能够从物体中检测出几种颜色,这样就可以更具体地根据被检测人群中“人”的衣服颜色发出警告信息。
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