基于OpenCV和Django的银行访问监控系统的设计与实现

R. K. Madhusudhana, G. Kiranmayi
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引用次数: 1

摘要

本文介绍了一种基于web的银行门禁监控系统。银行系统在社会中扮演着非常重要的角色。作为提供安全程序的一部分,有必要对进入银行的人员进行监控。传统的监控系统只记录视频,对进入的人员不进行识别。本文利用计算机视觉技术实现了一个识别进入银行的人员的系统。随着图像处理算法的不断发展,人工智能的计算机视觉学科通过教计算机理解和解释视觉环境,开启了一个新的时代。本项目提出了一种利用人脸检测来跟踪进入银行的人员的有效方法。对员工和客户的图像进行特征提取。系统中创建并存储了银行员工和客户的人脸图像数据库。采用HAAR特征提取和级联分类器的Viola jones算法进行人脸检测。将检测到的人脸特征与现有数据库进行比较,并将其分类为员工、客户和未知。人脸识别后,信息显示在网页上,并注明输入日期和时间。此网页在银行出现保安漏洞时非常有用。人脸检测算法是在Linux操作系统的树莓派处理器上使用OpenCV实现的。
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Design and implementation of access monitoring system for banks using OpenCV and Django
This paper presents a system which configures a web- based access monitoring system for banks. The banking system plays a very significant role in society. There is a need for monitoring the people entering the bank as a part of the procedure for providing security. The traditional monitoring system only records the video, it does not recognize the people entering. This work implements a system for recognizing the people entering the bank using a computer vision technology. With the ongoing development of image processing algorithms, the computer vision discipline of artificial intelligence launching a new era by teaching computers to comprehend and interpret the visual environment. This project proposes an efficient way to keep track of the people entering the banks using face detection. Feature extraction of the images of the employees and the customers is done. The database of the face images of employees of the bank and customers is created and stored in the system. Viola jones algorithm which uses HAAR feature extraction and cascade classifiers is used for the face detection. The face features detected is compared with the existing database and classified as employee, customer and unknown. After the face recognition the information is displayed in a webpage with date and time of entry. This webpage can be very useful in case of Security breach in banks. The face detection algorithm is implemented using OpenCV on a Raspberry pi processor with Linux operating system.
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