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A comparative study on handcrafted features v/s deep features for open-set fingerprint liveness detection

机译:手工制作特征的比较研究V / S深度特征,用于开放式指纹活动检测

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摘要

A fingerprint liveness detector is a pattern classifier that is used to distinguish a live finger from a fake (spoof) one in the context of an automated fingerprint recognition system. As liveness detectors or presentation attack detectors are vulnerable to presentation attacks, the security and reliability of fingerprint recognition are compromised. Presentation attack detection mechanisms rely on handcrafted or deep features to classify an image as live or spoof. In addition, to strengthen the security, fingerprint liveness detectors should be robust to presentation attacks fabricated using unknown fabrication materials or fingerprint sensors. In this paper, we conduct a comprehensive study on the impact of handcrafted and deep features from fingerprint images on the classification error rate of the fingerprint liveness detection task. We use LBP, LPQ and BSIF as handcrafted features and VGG-19 and Residual CNN as deep feature extractors for this study. As the problem is targeted as an open-set problem, the emphasis is on achieving better robustness and generalization capability. In our observation, handcrafted features outperformed their deep counterparts in two of the three cases under the within-dataset environment. In the cross-sensor environment, deep features obtained a better accuracy, and in the cross-dataset environment, handcrafted features obtained a lower classification error rate. (c) 2021 Elsevier B.V. All rights reserved.
机译:指纹活动探测器是一种模式分类器,用于将活手指与自动指纹识别系统的上下文中的一个人的一个区分开来区分。随着活性探测器或演示攻击探测器容易受到呈现攻击的影响,指纹识别的安全性和可靠性受到损害。演示文稿攻击检测机制依赖于手工制作或深度的功能将图像分类为直播或欺骗。此外,为了加强安全性,指纹活动探测器应坚固地使用未知的制造材料或指纹传感器制造的呈现攻击。在本文中,我们对指纹图像的手工和深度特征的影响进行了全面的研究,对指纹活动检测任务的分类错误率。我们使用LBP,LPQ和BSIF作为手工制作的功能和VGG-19和残留的CNN作为本研究的深度特征提取器。由于该问题的目标是作为开放式问题,因此重点是实现更好的稳健性和泛化能力。在我们的观察中,手工制作的功能在数据集内环境中三种情况下的两个案例中的两种情况表现优于他们的深度同行。在交叉传感器环境中,深度特征获得了更好的准确性,并且在交叉数据集环境中,手工制作功能获得了较低的分类误差率。 (c)2021 elestvier b.v.保留所有权利。

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