On Analysis of Face Liveness Detection Mechanisms via Deep Learning Models

Syed Zoofa Rufai, A. Selwal, Deepika Sharma
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引用次数: 1

Abstract

In recent times, susceptibility of face recognition system to spoofing attacks has received a significant attention from research community. These attacks simply involve presenting an artifact (i.e., video replay, print photo or fabricated mask)to the sensor component and have shown to be capable of deceiving face recognition (FR) systems. The design of an anti-deception method that is termed as face spoof detector is a challenging task that aims to reveal a fake user seeking to mislead the verification system. In this study, we present an analysis of state-of-the-art face spoofing attack discernment techniques along with a taxonomy. A focused survey of face anti-spoofing via deep learning-based methods with special emphasis on latest trends in deep learning techniques is expounded. Additionally, a comparative summary of benchmark face-anti-spoofing datasets employed for various data-driven models is also illustrated. We offer a brief overview of various evaluation protocols for measuring the effectiveness of FASDD approaches. The presented study investigates several key challenges that are open to researchers for further progression in this active field of FLD. Our analysis clearly advocates that among all, accuracy of FLD algorithms in cross-material scenario is still a challenging task. The training overhead of deep convolutional neural networks (CNN) deployed as anti-spoofing detectors demonstrates comparatively better accuracy with an additional training overhead.
基于深度学习模型的人脸动态检测机制分析
近年来,人脸识别系统对欺骗攻击的易感性受到了研究界的广泛关注。这些攻击仅仅涉及向传感器组件提供一个工件(即视频回放、打印照片或制作的掩膜),并且已经证明能够欺骗面部识别(FR)系统。设计一种被称为人脸欺骗检测器的反欺骗方法是一项具有挑战性的任务,其目的是揭露试图误导验证系统的虚假用户。在这项研究中,我们提出了最先进的人脸欺骗攻击识别技术的分析以及分类。重点介绍了基于深度学习的人脸防欺骗方法,重点阐述了深度学习技术的最新发展趋势。此外,还比较总结了用于各种数据驱动模型的基准人脸抗欺骗数据集。我们提供了衡量FASDD方法有效性的各种评估协议的简要概述。本研究调查了几个关键的挑战,这些挑战对研究人员在这个活跃的FLD领域的进一步发展是开放的。我们的分析清楚地表明,其中,跨材料场景下FLD算法的准确性仍然是一个具有挑战性的任务。深度卷积神经网络(CNN)部署作为反欺骗检测器的训练开销在额外的训练开销下显示出相对更好的准确性。
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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