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Fingerprint Presentation Attack Detection Based on Local Features Encoding for Unknown Attacks

机译:基于本地特征编码未知攻击的指纹呈现攻击检测

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摘要

Fingerprint-based biometric systems have experienced a large development in the past. In spite of many advantages, they are still vulnerable to attack presentations (APs). Therefore, the task of determining whether a sample stems from a live subject (i.e., bona fide) or from an artificial replica is a mandatory requirement which has recently received a considerable attention. Nowadays, when the materials for the fabrication of the Presentation Attack Instruments (PAIs) have been used to train the Presentation Attack Detection (PAD) methods, the PAIs can be successfully identified in most cases. However, current PAD methods still face difficulties detecting PAIs built from unknown materials and/or unknown recepies, or acquired using different capture devices. To tackle this issue, we propose a new PAD technique based on three image representation approaches combining local and global information of the fingerprint. By transforming these representations into a common feature space, we can correctly discriminate bona fide from attack presentations in the aforementioned scenarios. The experimental evaluation of our proposal over the LivDet 2011 to 2019 databases, yielded error rates outperforming the top state-of-the-art results by up to 72% in the most challenging scenarios. In addition, the best representation achieved the best results in the LivDet 2019 competition (overall accuracy of 96.17%).
机译:FingerPrint的生物识别系统过去经历了大型发展。尽管有许多优势,但它们仍然容易受到攻击演示(APS)。因此,确定样品是否从直播主题(即真正的“或人工复制品中源于一个强制性要求,该任务是最近得到了相当长的关注的强制性要求。如今,当用于制造呈现攻击仪器(PAI)的材料已经用于训练呈现攻击检测(PAD)方法,可以在大多数情况下成功识别PAI。然而,当前焊盘方法仍然面临从未知材料和/或未知回收的PAI或使用不同捕获设备获取的PAI的困难。为了解决这个问题,我们提出了一种基于三个图像表示方法,组合指纹本地和全局信息的三种图像表示方法。通过将这些表示转换为常见的特征空间,我们可以正确地在上述方案中从攻击演示中判断真正的竞争。我们在2011年Livdet 2011年到2019年数据库的提案的实验评估,因此在最具挑战性方案中,最终最先进的结果优于最先进的结果。此外,最佳代表在Livdet 2019年竞争中获得了最佳结果(整体准确性为96.17%)。

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