基于深度学习技术和计算机视觉的视觉-人脸识别考勤监控系统

Harikrishnan J, Arya Sudarsan, Aravind Sadashiv, Remya Ajai A S
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引用次数: 28

摘要

如今,人工神经网络可以训练超过数十亿张图像,并且可以在瞬间相对容易和灵活地用于检测和识别人脸。这个概念被用于实现这个实时考勤和监控系统,可以原型和设置为行动。这种创新方法的一些主要应用包括在大学课堂上使用智能手机的单一快照模式进行面部考勤,进一步对实验室设施和工作场所进行实时面部识别监控,这可以将其设置为防止入侵者进入的第一道防线。用户友好的图形用户界面为运行这些由深度学习驱动的强大面部识别算法提供了灵活性和易用性。在运行实时监控算法时,我们达到了74%的最高识别准确率。这项工作是作为一个解决方案,缺乏一个强大的和用户友好的人脸识别考勤系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-Face Recognition Attendance Monitoring System for Surveillance using Deep Learning Technology and Computer Vision
Nowadays, Artificial Neural networks can be trained over several billion images and can be used to detect and recognize faces with relative ease and flexibility in an instant. This concept is used in the implementation of this real time attendance cum surveillance system that can be prototyped and set into action. Some of the major applications of this innovative method include face attendance using a single snap mode in smartphones for university classes, further real-time facial recognition surveillance of lab facilities and work places which can set this as a first line of defense against intruders from gaining access. The user-friendly graphical user interface provides flexibility and ease in running these powerful face recognition algorithms powered by deep-learning. We have achieved a maximum recognition accuracy of 74 percent while running the real time surveillance algorithm. This work was done as a solution to the absence of a robust and user friendly face recognition attendance system.
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