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Fingerprint image synthesis based on statistical feature models

机译:基于统计特征模型的指纹图像合成

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摘要

Fingerprint image synthesis has received considerable attention because of its potential use in generating large databases to evaluate the performance of fingerprint recognition systems. Existing fingerprint synthesis algorithms (e.g., SFinGe) focus on rendering realistic fingerprint images, but the features (e.g., minutiae) in these fingerprints are formed in an uncontrollable manner. However, generating synthetic fingerprint images with specified features is more useful in developing, evaluating and optimizing fingerprint recognition systems by providing ground truth features in the synthesized images. In this paper, we propose a method to synthesize fingerprint images that retain prespecified features (i.e., singular points, orientation field, and minutiae). To obtain realistic fingerprints, these features are sampled from appropriate statistical models which are trained by using real fingerprints in public domain databases. We validate the proposed method by comparing the synthesized images with those generated by SFinGe and by investigating the match score distributions on synthesized and real fingerprint databases. Furthermore, the synthesized fingerprint images and their minutiae are used to evaluate the matching capabilities of two commercial off-the-shelf (COTS) fingerprint matchers.
机译:指纹图像合成已经引起了广泛的关注,因为它在生成大型数据库以评估指纹识别系统性能方面具有潜在的用途。现有的指纹合成算法(例如,SFinGe)集中于渲染真实的指纹图像,但是这些指纹中的特征(例如,细节)是以不可控制的方式形成的。然而,通过在合成图像中提供地面真实特征,生成具有指定特征的合成指纹图像在开发,评估和优化指纹识别系统中更为有用。在本文中,我们提出了一种方法来合成保留预定特征(即奇异点,方向场和细节)的指纹图像。为了获得逼真的指纹,这些特征是从适当的统计模型中取样的,这些模型通过使用公共领域数据库中的真实指纹进行训练。我们通过将合成图像与SFinGe生成的图像进行比较,并通过研究合成和真实指纹数据库上的匹配分数分布,来验证所提出的方法。此外,使用合成的指纹图像及其细节来评估两个商用现货(COTS)指纹匹配器的匹配能力。

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