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Thermal Features for Presentation Attack Detection in Hand Biometrics

机译:用于手部生物特征识别攻击检测的热功能

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This paper proposes a method for utilizing thermal features of the hand for the purpose of presentation attack detection (PAD) that can be employed in a hand biometrics system's pipeline. By envisaging two different operational modes of our system, and by employing a DCNN-based classifiers fine-tuned with a dataset of real and fake hand representations captured in both visible and thermal spectrum, we were able to bring two important deliverables. First, a PAD method operating in an open-set mode, capable of correctly discerning 100% of fake thermal samples, achieving Attack Presentation Classification Error Rate (APCER) and Bona-Fide Presentation Classification Error Rate (BPCER) equal to 0%, which can be easily implemented into any existing system as a separate component. Second, a hand biometrics system operating in a closed-set mode, that has PAD built right into the recognition pipeline, and operating simultaneously with the user-wise classification, achieving rank-1 recognition accuracy of up to 99.75%. We also show that thermal images of the human hand, in addition to liveness features they carry, can also improve classification accuracy of a biometric system, when coupled with visible light images. To follow the reproducibility guidelines and to stimulate further research in this area, we share the trained model weights, source codes, and a newly created dataset of fake hand representations with interested researchers.
机译:本文提出了一种利用手部的热特征进行演示攻击检测(PAD)的方法,该方法可以在手部生物识别系统的管道中使用。通过设想系统的两种不同操作模式,并使用基于DCNN的分类器进行了微调,该分类器通过在可见光谱和热光谱中捕获的真实和假手表示的数据集进行了微调,从而带来了两个重要的可交付成果。首先,在开放模式下运行的PAD方法能够正确识别100%的假热样本,达到的攻击表现分类错误率(APCER)和真实表现分类错误率(BPCER)等于0%,可以作为单独的组件轻松地实现到任何现有系统中。其次,以封闭模式运行的手持式生物识别系统,将PAD内置在识别管道中,并与用户分类同时运行,从而实现了最高19.75%的1级识别精度。我们还显示,与可见光图像结合使用时,人手的热图像除了具有人体活动特征之外,还可以提高生物识别系统的分类精度。为了遵循可重复性指南并激发对该领域的进一步研究,我们与感兴趣的研究人员共享训练有素的模型权重,源代码以及一个新创建的假手表示形式的数据集。

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