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Fingerprint indexing and matching: An integrated approach

机译:指纹索引和匹配:一种集成方法

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Large scale fingerprint recognition systems have been deployed worldwide not only in law enforcement but also in many civilian applications. Thus, it is of great value o identify a query fingerprint in a large background finger-print database both effectively and efficiently based on indexing strategies. The published indexing algorithms do not meet the requirements, especially at low penetrate rates, because of the difficulty in extracting reliable minutiae and other features in low quality fingerprint images. We propose a Convolutional Neural Network (ConvNet) based fingerprint indexing algorithm. An orientation field dictionary is learned to align fingerprints in a unified coordinate system and a large longitudinal fingerprint database, where each finger has multiple impressions over time, is used to train the ConvNet. Experimental results on NIST SD4 and NIST SD14 show that the proposed approach outperforms state-of-the-art fingerprint indexing techniques reported in the literature. Further indexing results on an augmented gallery set of 250K rolled prints demonstrate the scalability of the proposed algorithm. At a penetrate rate of 1%, a score-level fusion of the proposed indexing and a state-of-the-art COTS SDK provides 97.8% rank-1 identification accuracy with a 100-fold reduction in the search space.
机译:大规模的指纹识别系统已不仅在执法领域而且在许多民用领域中已在世界范围内部署。因此,基于索引策略有效且高效地识别大型背景指纹数据库中的查询指纹具有很大的价值。由于难以提取低质量指纹图像中的可靠细节和其他特征,因此公开的索引算法无法满足要求,尤其是在低穿透率的情况下。我们提出了一种基于卷积神经网络(ConvNet)的指纹索引算法。学习了方向字段字典,以在统一坐标系中对齐指纹,并使用大型纵向指纹数据库(其中每个手指随时间推移具有多次压印)来训练ConvNet。在NIST SD4和NIST SD14上的实验结果表明,提出的方法优于文献中报道的最新指纹索引技术。在250K卷筒印刷的增强画廊集上的进一步索引结果证明了所提出算法的可伸缩性。以1%的渗透率,提议的索引和最新的COTS SDK的得分级融合可提供97.8%的rank-1识别精度,而搜索空间减少了100倍。

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