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Fingerprint Presentation Attack Detection utilizing Time-Series, Color Fingerprint Captures

机译:利用时间序列,彩色指纹捕获功能进行指纹演示攻击检测

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Fingerprint capture systems can be fooled by widely accessible methods to spoof the system using fake fingers, known as presentation attacks. As biometric recognition systems become more extensively relied upon at international borders and in consumer electronics, presentation attacks are becoming an increasingly serious issue. A robust solution is needed that can handle the increased variability and complexity of spoofing techniques. This paper demonstrates the viability of utilizing a sensor with time-series and color-sensing capabilities to improve the robustness of a traditional fingerprint sensor and introduces a comprehensive fingerprint dataset with over 36,000 image sequences and a state-of-the-art set of spoofing techniques. The specific sensor used in this research captures a traditional gray-scale static capture and a time-series color capture simultaneously. Two different methods for Presentation Attack Detection (PAD) are used to assess the benefit of a color dynamic capture. The first algorithm utilizes Static-Temporal Feature Engineering on the fingerprint capture to generate a classification decision. The second generates its classification decision using features extracted by way of the Inception V3 CNN trained on ImageNet. Classification performance is evaluated using features extracted exclusively from the static capture, exclusively from the dynamic capture, and on a fusion of the two feature sets. With both PAD approaches we find that the fusion of the dynamic and static feature-set is shown to improve performance to a level not individually achievable.
机译:指纹捕获系统可能会被广泛使用的方法所欺骗,以使用假手指欺骗系统,这被称为“展示攻击”。随着生物识别系统在国际边界和消费电子产品中越来越广泛地被依赖,呈现攻击正变得日益严重。需要一种鲁棒的解决方案,该解决方案可以应对欺骗性技术不断增加的可变性和复杂性。本文演示了利用具有时间序列和颜色感应功能的传感器来提高传统指纹传感器的鲁棒性的可行性,并介绍了具有36,000多个图像序列和最先进的欺骗功能的综合指纹数据集技术。本研究中使用的特定传感器同时捕获传统的灰度静态捕获和时序彩色捕获。呈现攻击检测(PAD)的两种不同方法用于评估颜色动态捕获的好处。第一种算法在指纹捕获中利用静态时态特征工程来生成分类决策。第二种方法使用通过ImageNet上训练的Inception V3 CNN提取的特征来生成其分类决策。使用仅从静态捕获中提取的特征,仅从动态捕获中提取的特征以及两个特征集的融合来评估分类性能。通过这两种PAD方法,我们发现动态和静态功能集的融合可将性能提高到无法单独实现的水平。

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