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An ensemble of fingerprint matching algorithms based on cylinder codes and mtriplets for latent fingerprint identification

机译:基于气缸码的指纹匹配算法的集合,用于潜在指纹识别的MTRIPLE

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摘要

Automatic latent fingerprint identification is beneficial during forensic investigations. Usually, latent fingerprint identification algorithms are used to find a subset of similar fingerprints from those previously captured on databases, which are finally examined by latent examiners. Yet, the identification rate achieved by latent fingerprint identification algorithms is far from those obtained by latent examiners. One approach for improving identification rates is the fusion of the match scores computed with fingerprint matching algorithms using a supervised classification algorithm. This approach fuses the results provided by different lower-level algorithms to improve them. Thus, we propose a fusion of fingerprint matching algorithms using a supervised classifier. Our proposal starts with two different local matching algorithms. We substitute their global matching algorithms with another independent of the local matching, creating two lower-level algorithms for fingerprint matching. Then, we combine the output of these lower-level algorithms using a supervised classifier. Our proposal achieves higher identification rates than each lower-level algorithm and their fusion using traditional approaches for most of the rank values and reference databases. Moreover, our fusion algorithm reaches a Rank-1 identification rate of 74.03% and 71.32% matching the 258 samples in the NIST SD27 database against 29,257 and 100,000 references, the two largest reference databases employed in our experiments.
机译:在法医调查中,自动潜在指纹识别是有益的。通常,潜在的指纹识别算法用于从先前捕获的数据库中找到类似指纹的子集,最终由潜在审查员检查。然而,通过潜在指纹识别算法实现的识别率远远远非由潜在审查员获得的识别率。一种提高识别率的方法是使用监督分类算法使用指纹匹配算法计​​算的匹配分数的融合。这种方法使不同的较低级别算法提供的结果融合以改善它们。因此,我们建议使用监督分类器融合指纹匹配算法。我们的提案从两个不同的本地匹配算法开始。我们将全局匹配算法与另一个独立的本地匹配替换,为指纹匹配创建两个较低级别的算法。然后,我们使用监督分类器结合这些较低级别算法的输出。我们的提案比每个较低级别的算法和它们的融合使用传统方法来实现更高的识别率,以及大多数秩值和参考数据库。此外,我们的融合算法达到了74.03%的秩1识别率,71.32%匹配了NIST SD27数据库中的258个样本,而是我们实验中使用的两个最大参考数据库。

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