How synthetic fingerprints can improve pre-selection of mcc pairs using local quality measures

M. H. Izadi, A. Drygajlo
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引用次数: 3

Abstract

A major source of errors in fingerprint recognition systems is poor quality of fingerprints. Local quality of fingerprints plays an important role in these systems to ensure high recognition performance. Recently an improved fingerprint matching method is proposed to use minutiae information encoded by Minutia Cylinder-Code (MCC) together with cylinder quality measures as local quality measures associated to each MCC descriptor. In this paper, we present our work where we have taken the advantage of a varying quality data set of synthetic fingerprint images in order to improve the pre-selection of MCC pairs using local quality measures. Since ground truth minutiae information is available for the synthetic fingerprints, we could create a large set of genuine/impostor minutiae as well as genuine/impostor MCC pairs. Subsequently a 2-class (genuine vs. impostor) classification model is proposed to modify the local similarity scores using two quality related local features, namely the cylinder quality measures and the number of extracted minutiae in the cylinders. Our experiments on synthetic and real data show that the local similarity scores modified through the proposed approach improve the pre-selection as well as global matching performance.
合成指纹如何利用本地质量指标改善mcc配对的预选
指纹识别系统误差的主要来源是指纹质量差。在这些系统中,指纹局部质量是保证高识别性能的重要因素。近年来提出了一种改进的指纹匹配方法,该方法将细微柱码(Minutia cylinder code, MCC)编码的细微信息与圆柱体质量度量作为与每个MCC描述符关联的局部质量度量。在本文中,我们介绍了我们的工作,我们利用不同质量的合成指纹图像数据集的优势,以改善MCC对的预选使用局部质量措施。由于地面真实细节信息可用于合成指纹,我们可以创建大量的真品/冒名顶替者细节以及真品/冒名顶替者MCC对。随后,提出了一个2类(正品vs.冒牌货)分类模型,使用两个与质量相关的局部特征,即圆柱体质量度量和圆柱体中提取的细节数量,来修改局部相似性分数。我们在合成数据和真实数据上的实验表明,通过该方法修正的局部相似度分数提高了预选择和全局匹配性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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