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On the Effectiveness of Laser Speckle Contrast Imaging and Deep Neural Networks for Detecting Known and Unknown Fingerprint Presentation Attacks

机译:关于激光散斑对比度成像和深神经网络检测已知和未知指纹呈现攻击的有效性

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Fingerprint presentation attack detection (FPAD) is becoming an increasingly challenging problem due to the continuous advancement of attack techniques, which generate "realistic-looking" fake fingerprint presentations. Recently, laser speckle contrast imaging (LSCI) has been introduced as a new sensing modality for FPAD. LSCI has the interesting characteristic of capturing the blood flow under the skin surface. Toward studying the importance and effectiveness of LSCI for FPAD, we conduct a comprehensive study using different patch-based deep neural network architectures. Our studied architectures include 2D and 3D convo-lutional networks as well as a recurrent network using long short-term memory (LSTM) units. The study demonstrates that strong FPAD performance can be achieved using LSCI. We evaluate the different models over a new large dataset. The dataset consists of 3743 bona fide samples, collected from 335 unique subjects, and 218 presentation attack samples, including six different types of attacks. To examine the effect of changing the training and testing sets, we conduct a 3-fold cross validation evaluation. To examine the effect of the presence of an unseen attack, we apply a leave-one-attack out strategy. The FPAD classification results of the networks, which are separately optimized and tuned for the temporal and spatial patch-sizes, indicate that the best performance is achieved by LSTM.
机译:指纹呈现攻击检测(FPAD)由于攻击技术的不断推进,这是一种日益挑战性的问题,它产生了“现实看”假指纹演示。最近,引入了激光斑点对比度成像(LSCI)作为FPAD的新感测模式。 LSCI具有捕获皮肤表面下的血液流动的有趣特征。研究LSCI对FPAD的重要性和有效性,我们使用基于不同补丁的深神经网络架构进行了全面的研究。我们研究的架构包括2D和3D追随液网络以及使用长短期内存(LSTM)单元的经常性网络。该研究表明,使用LSCI可以实现强大的FPAD性能。我们通过新的大型数据集进行评估不同的型号。 DataSet由3743个Bona Fide样本组成,从335个独特的主题中收集,以及218个演示攻击样本,包括六种不同类型的攻击。要检查改变培训和测试集的效果,我们进行了3倍的交叉验证评估。为了检查存在看不见的攻击的效果,我们申请休假一攻击策略。网络的FPAD分类结果,用于时间和空间补丁大小的单独优化和调整,表明LSTM实现了最佳性能。

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