An Advancement towards Efficient Face Recognition Using Live Video Feed: "For the Future"

J. Dhamija, T. Choudhury, Praveen Kumar, Y. Rathore
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引用次数: 27

Abstract

Image based or live video feed based face recognition is a very interesting field in research and applications. Various face recognition methods have been devised and applied over the past several years of technological development. Fields like security and surveillance have widely used face recognition over the years as people are very concerned as to identifying and catching criminals or people with mal intentions. Catching them without being able to promptly recognize and their faces has been a major problem. A person's facial features are dynamic and have variable appearances, which makes it a problem to be very accurate and fast in identification of a person. Not only this, security access controls through face recognizers makes it highly difficult for hackers and crackers to use a person's identity or data. The basic objective of this paper hence is to understand several pre-existing face detection and recognition algorithms and then provide a viable solution for live video based facial recognition with better accuracy, higher speed and efficiency so as to help develop a technology such which can help catch criminals promptly and as well as protect people's privacy and identity from hackers. Many facial databases have been considered so as to differentiate them in conditions of changes in poses, illuminations and emotions. Various other conditions to obstruct identification of faces are discussed later.
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使用实时视频馈送实现高效人脸识别的进展:“面向未来”
基于图像或实时视频的人脸识别是一个非常有趣的研究和应用领域。在过去几年的技术发展中,各种各样的人脸识别方法被设计和应用。多年来,安全和监视等领域广泛使用人脸识别技术,因为人们非常关心识别和抓捕罪犯或有不良意图的人。抓住他们而不能及时识别他们的脸一直是一个主要问题。一个人的面部特征是动态变化的,这就给快速准确地识别一个人带来了困难。不仅如此,通过面部识别的安全访问控制使得黑客和破解者很难使用一个人的身份或数据。因此,本文的基本目标是了解现有的几种人脸检测和识别算法,然后为基于实时视频的人脸识别提供更高精度,更高速度和效率的可行解决方案,从而帮助开发一种能够帮助及时捕获罪犯并保护人们隐私和身份免受黑客攻击的技术。为了在姿势、光照和情绪变化的条件下区分它们,我们考虑了许多面部数据库。后面将讨论妨碍人脸识别的各种其他条件。
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