Less Data for Face and Iris Biometric Traits: An Approximation for Feature Extraction

Sercan Aygïn, G. Çavuş, Ece Olcay Gïneş
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引用次数: 1

Abstract

Biometrics applications have been emerging since the evaluations on the sensors. From fingerprint to iris of the human being, several biometric traits have been used in many security applications. Biometric e-passports use embedded biometric data for person identification. As the data consumption rate increases, a huge amount of data processing need occurs. In the 2020s, it is forecasted that a person will be consuming data almost half of terabytes per day. This is the motivation of approximations in data which helps to reduce the computation load and data storage overhead. In this research, a previously proposed pixel value comparison based operator within a window in image processing namely Relational Bit Operator (RBO) will be revisited by measuring its data approximation property. The less data versus accuracy tradeoff over biometric traits of face and iris is going to be tested. Having used both of the face and iris datasets allows us to see how much it deviates from ideal classification results when there is used the approximate biometric features. Moreover, the proposed method has an underlying motivation on the data occurrence, thus an ease of use for data reduction is emphasized. Therefore, the purpose of this paper is to build a clear understanding of biometrics to have the methods that treat limited data storage. Following sections start with the introduction, continues with motivation, methods, system details, tests and end up with a conclusion.
人脸和虹膜生物特征的较少数据:特征提取的近似方法
自对传感器进行评估以来,生物识别技术的应用不断涌现。从人类的指纹到虹膜,许多生物特征已被应用于许多安全领域。生物识别电子护照使用嵌入式生物识别数据进行身份识别。随着数据消耗量的增加,需要进行大量的数据处理。据预测,在21世纪20年代,一个人每天将消耗近一半tb的数据。这就是数据中近似值的动机,它有助于减少计算负载和数据存储开销。在本研究中,先前提出的基于图像处理窗口内像素值比较的算子即关系比特算子(RBO)将通过测量其数据近似特性来重新审视。较少的数据和准确性权衡面部和虹膜的生物特征将被测试。同时使用人脸和虹膜数据集可以让我们看到当使用近似生物特征时,它与理想分类结果的偏差有多大。此外,所提出的方法具有数据发生的潜在动机,因此强调了数据约简的易用性。因此,本文的目的是建立对生物识别的清晰认识,以获得处理有限数据存储的方法。下面的部分从介绍开始,接着是动机、方法、系统细节、测试,最后是结论。
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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