Assessment of Synthetically Generated Mated Samples from Single Fingerprint Samples Instances

Simon Kirchgasser, Christof Kauba, A. Uhl
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引用次数: 3

Abstract

The availability of biometric data (here fingerprint samples) is a crucial requirement in all areas of biometrics. Due to recent changes in cross-border regulations (GDPR) sharing and accessing biometric sample data has become more difficult. An alternative way to facilitate a sufficient amount of test data is to synthetically generate biometric samples, which has its limitations. One of them is the generated data being not realistic enough and a more common one is that most free solutions are not able to generate mated samples, especially for fingerprints. In this work we propose a multi-level methodology to assess synthetically generated fingerprint data in terms of their similarity to real fingerprint samples. Furthermore, we present a generic approach to extend an existing synthetic fingerprint generator to be able to produce mated samples on the basis of single instances of non-mated ones which is then evaluated using the aforementioned multi-level methodology.
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单个指纹样本实例合成的配对样本评估
生物特征数据(这里是指纹样本)的可用性在生物特征学的所有领域都是至关重要的要求。由于最近跨境法规(GDPR)的变化,共享和访问生物识别样本数据变得更加困难。另一种促进获得足够数量测试数据的方法是合成生成生物识别样本,这有其局限性。其中之一是生成的数据不够真实,更常见的是大多数免费解决方案无法生成匹配的样本,特别是对于指纹。在这项工作中,我们提出了一种多层次的方法来评估合成指纹数据与真实指纹样本的相似性。此外,我们提出了一种通用的方法来扩展现有的合成指纹发生器,使其能够在非配对样本的单个实例的基础上产生配对样本,然后使用上述多级方法进行评估。
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