Improving facial recognition accuracy by applying liveness monitoring technique

A. Asaduzzaman, A. Mummidi, M. Mridha, F. Sibai
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引用次数: 3

Abstract

In a typical transmission control protocol and Internet protocol (TCP/IP) suite, there are several ways, such as using photograph, three-dimensional (3D) model, and video clip of a valid user to mock the facial recognition. Studies show that there has been significant improvement in detecting photograph and 3D model spoofing. However, there is no such improvement in detecting video spoofing. Recent studies suggest that liveness monitoring using the facial features has potential to improve security, especially in biometric systems. In this paper, a liveness monitoring technique is introduced to assist facial recognition. In the proposed system, an eye blinking pattern is used through a real-time generic web-camera. An eye blinking password system using ultrasonic range sensing module is developed for liveness detection of the users. The system is tested by conducting experiments using 15 valid users and 100 different user appearances. According to the experimental results, the proposed system achieves 99% face recognition accuracy and 99% liveliness detection performance.
应用活体监测技术提高人脸识别准确率
在典型的传输控制协议和Internet协议(TCP/IP)套件中,有几种方法,如使用照片、三维(3D)模型和有效用户的视频剪辑来模拟面部识别。研究表明,该方法在检测照片和3D模型欺骗方面有了显著的改进。然而,在检测视频欺骗方面没有这样的改进。最近的研究表明,使用面部特征进行动态监测有可能提高安全性,特别是在生物识别系统中。本文介绍了一种辅助人脸识别的动态监测技术。在提出的系统中,通过实时通用网络摄像头使用眨眼模式。研制了一种基于超声波测距模块的眨眼密码系统,用于对用户进行活体检测。系统通过使用15个有效用户和100种不同的用户外观进行实验来测试。实验结果表明,该系统实现了99%的人脸识别准确率和99%的活度检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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