IMPLEMENTATION OF FACE RECOGNITION AND LIVENESS DETECTION SYSTEM USING TENSORFLOW.JS

Muhammad Basurah, W. Swastika, Oesman Hendra Kelana
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Abstract

Facial recognition is a popular biometric security system used to authenticate individuals based on their unique facial structure. However, this system is vulnerable to spoofing attacks where the attacker can bypass the system using fake representations of the user's face such as photos, statues or videos. Liveness detection is a method used to address this issue by verifying that the user is a real person and not a representation. This journal article focuses on the life sign method of liveness detection, which utilizes facial movements to confirm the user's existence. We implement the latest technology of artificial intelligence from TensorFlow.js using face-api.js and compare it with the GLCM algorithm. However, even with the life sign detection method, there is still a chance of bypassing the system if an attacker uses a video recording. To mitigate this, we propose the addition of an object detection system to detect the hardware used to show video recordings with ml5.js. Our face recognition and expression detection system, using the pre-trained model face-api.js, achieved an accuracy of 85% and 82.5%, respectively, and the object detection system built with ml5.js has high accuracy and is very effective for liveness detection. Our results indicate that face-api.js outperformed GLCM algorithm in detecting spoofing attempts.
使用tensorflow.js实现人脸识别和活体检测系统
面部识别是一种流行的生物识别安全系统,用于根据个人独特的面部结构对其进行身份验证。然而,这个系统很容易受到欺骗攻击,攻击者可以使用虚假的用户面部表示(如照片、雕像或视频)绕过系统。活体检测是一种用来解决这个问题的方法,通过验证用户是一个真实的人,而不是一个表象。这篇期刊文章关注的是活体检测的生命体征方法,它利用面部运动来确认用户的存在。我们使用face-api.js实现了TensorFlow.js中最新的人工智能技术,并将其与GLCM算法进行了比较。然而,即使使用生命信号检测方法,如果攻击者使用视频记录,仍然有机会绕过系统。为了缓解这种情况,我们建议添加一个对象检测系统来检测用于显示ml5.js视频记录的硬件。我们的人脸识别和表情检测系统,使用预训练模型face-api.js,准确率分别达到85%和82.5%,用ml5.js构建的物体检测系统,准确率高,对活体检测非常有效。我们的研究结果表明,face-api.js在检测欺骗企图方面优于GLCM算法。
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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