一种自适应混合指纹匹配的局部特征向量

Manh Hoang Tran, Tan Nghia Duong, Duc Minh Nguyen, Quang Hieu Dang
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引用次数: 13

摘要

本文介绍了一种混合指纹匹配算法,该算法分为两个阶段:局部特征匹配阶段和融合阶段。在前一阶段,指纹中的每个细节由一个局部特征向量表示,该局部特征向量是由其周围固定半径内的相邻细节特征构建的。根据与中心细节的空间关系定义每个相邻细节的特征,并用于匹配任务。介绍了两个相邻特征点的自适应匹配条件和两个中心特征点之间的局部相似度的计算方法。后一阶段基于对匹配细节执行多次比对,以产生两个指纹之间的最终匹配分数。在2002指纹验证大赛(FVC2002)中使用的公共数据库上进行的大量实验证明,我们提出的算法与一些知名技术和FVC2002前5名的参与者相比,准确性有了很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A local feature vector for an adaptive hybrid fingerprint matcher
In this paper, we introduce a hybrid fingerprint matcher which consists of two stages: local minutiae matching stage and consolidation stage. In the former stage, each minutia in the fingerprint is represented by a local feature vector which is built from the features of the neighboring minutiae within a fixed-radius circle around it. The features of each neighboring minutia are defined according to the spatial relationship with the central minutia and used for matching task. New calculation methods of the adaptive matching conditions for two neighboring minutiae and the local similarity score between two central minutiae are introduced. The latter stage performs multiple alignments based on the pairs of matching minutiae to produce the final matching score between two fingerprints. Extensive experiments over a public database used in Fingerprint Verification Competition 2002 (FVC2002) prove a considerable improvement in accuracy of our proposed algorithm against some well-known techniques and Top 5 participants of FVC2002.
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