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A survey on minutiae-based palmprint feature representations, and a full analysis of palmprint feature representation role in latent identification performance

机译:对基于细节的掌纹特征表示进行的调查,并全面分析了掌纹特征表示在潜在识别性能中的作用

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摘要

Latent palmprint identification is a crucial element for both law enforcement and integrated automated fingerprint identification systems because approximately 30% of the imprints found in a crime scene originate from a human's palms. To find the person whom the palmprint belongs to, forensic experts use systems that automatically compare the imprints found, called latent, against thousands of potential palmprints.Identification systems rely on features obtained from the palmprint, and different feature representations to include discriminative information. However, there is no consensus as to which representation allows for a better matching between latent palmprints, and those with a known identity. Furthermore, evaluating the identification performance when matching palmprints obtained when using different representations has not been done fairly. The current manner of evaluating palmprint identification methods uses different datasets, performance measures, and does not allow to discern the contributions of the feature representation and the methods for matching the palmprints. In this study, we have reviewed those features used for latent palmprint identification, and also we propose an evaluation methodology that allows for a fair comparison of minutiae-based features.Using our methodology, we evaluated each representation performing more than 5 billion comparisons. Our experiments are done using a dataset that includes information about the matching minutiae according to an expert. We aim with our results to provide a baseline for new research in latent palmprint identification feature representations, allowing for a fair comparison of newly developed representations in the future, which would enhance the whole latent palmprint identification methods. For this purpose, we also publicly provide our dataset, methodology implementation, and the feature representations implementation tested in our experiments. (C) 2019 The Authors. Published by Elsevier Ltd.
机译:潜在的掌纹识别对于执法和集成的自动指纹识别系统都是至关重要的元素,因为在犯罪现场发现的大约30%的烙印来自人的手掌。为了找到掌纹的人,法医专家使用自动将发现的印记(称为潜像)与成千上万个潜在掌纹进行比较的系统。识别系统依赖于从掌纹中获得的特征以及不同的特征表示来包含判别信息。但是,关于哪种表示方式可以更好地匹配潜在手掌和具有已知身份的手掌之间没有共识。此外,还没有公平地评估当匹配使用不同表示形式获得的掌纹时的识别性能。当前评估掌纹识别方法的方式使用不同的数据集,性能指标,并且不允许辨别特征表示的贡献和与掌纹匹配的方法。在这项研究中,我们回顾了用于潜在掌纹识别的那些特征,并提出了一种评估方法,可以公平地比较基于细节的特征。使用我们的方法,我们评估了执行超过50亿次比较的每个表示形式。根据专家的说法,我们的实验是使用包含有关匹配细节的信息的数据集完成的。我们的结果旨在为潜在掌纹识别特征表示的新研究提供基准,以便将来对新开发的表示形式进行公平比较,这将增强整个潜在掌纹识别方法。为此,我们还公开提供了在实验中测试过的数据集,方法学实现和特征表示实现。 (C)2019作者。由Elsevier Ltd.发布

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  • 来源
    《Expert Systems with Application》 |2019年第10期|30-44|共15页
  • 作者单位

    Tecnol Monterrey, Sch Sci & Engn, Ave Carlos Lazo 100, Mexico City 01389, DF, Mexico;

    Tecnol Monterrey, Sch Sci & Engn, Carretera Lago Guadalupe Km 3-5, Atizapan De Zaragoza 52926, Estado De Mexic, Mexico;

    Tecnol Monterrey, Sch Sci & Engn, Carretera Lago Guadalupe Km 3-5, Atizapan De Zaragoza 52926, Estado De Mexic, Mexico;

    Tecnol Monterrey, Sch Sci & Engn, Via Atlixcayotl 2301, Puebla 72453, Mexico;

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