Review of Extreme Learning Machines for the Identification and Classification of Fingerprint Databases

Diego Martínez, David Zabala-Blanco, Roberto Ahumada-García, César A. Azurdia-Meza, Marco J. Flores-Calero, Pablo Palacios-Játiva
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Abstract

The fingerprint is one of the most popular and used biometric traits for the identification of people, due to its bio-invariant characteristic, precision, and easy acquisition. One of the stages in the identification of fingerprints is classification, this has the objective of reducing the search times and the computational cost in the databases. Currently, there are several academic publications with methods based on convolutional neural networks (CNN) by using fingerprint images as inputs, which have excellent performance in terms of classification; however, these studies have a very high computational cost, and they require high-performance computing, which is not accessible to everyone. This work will be carefully reviewed proposals for fingerprint identifiers and classifiers by employing extreme learning machines (ELM). The methods proposed by the authors will be analyzed, and these will be compared in terms of the overall performance with the different classifiers considered by the authors in their respective works. In this sense, research works with different types of ELM are considered to see the advantages and disadvantages that they present with each other and to verify how they can contribute to reducing the penetration rate of fingerprint databases. The latter is very important since improving the penetration rate implies reducing search times and computational complexity in fingerprint databases.
指纹数据库识别与分类的极限学习机研究进展
指纹具有生物不变性、精度高、采集方便等特点,是目前应用最广泛的人体识别特征之一。指纹识别的一个重要环节是分类,其目的是减少指纹在数据库中的搜索次数和计算量。目前,已有多篇学术论文采用基于卷积神经网络(CNN)的方法,将指纹图像作为输入,在分类方面表现优异;然而,这些研究的计算成本非常高,并且需要高性能的计算,这并不是每个人都能做到的。这项工作将通过使用极限学习机(ELM)仔细审查指纹识别器和分类器的建议。本文将对作者提出的方法进行分析,并将这些方法与作者在各自作品中考虑的不同分类器的整体性能进行比较。从这个意义上说,我们考虑了不同类型的ELM的研究工作,以了解它们相互呈现的优点和缺点,并验证它们如何有助于降低指纹数据库的渗透率。后者非常重要,因为提高渗透率意味着减少指纹数据库的搜索次数和计算复杂度。
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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