Capturing large intra-class variations of biometric data by template co-updating

A. Rattani, G. Marcialis, F. Roli
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引用次数: 27

Abstract

The representativeness of a biometric template gallery to the novel data has been recently faced by proposing ldquotemplate updaterdquo algorithms that update the enrolled templates in order to capture, and represent better, the subjectpsilas intra-class variations. Majority of the proposed approaches have adopted ldquoselfrdquo update technique, in which the system updates itself using its own knowledge. Recently an approach named template co-update, using two complementary biometrics to ldquoco-updaterdquo each other, has been introduced. In this paper, we investigate if template co-update is able to capture intra-class variations better than those captured by state of art self update algorithms. Accordingly, experiments are conducted under two conditions, i.e., a controlled and an uncontrolled environment. Reported results show that co-update can outperform ldquoselfrdquo update technique, when initial enrolled templates are poor representative of the novel data (uncontrolled environment), whilst almost similar performances are obtained when initial enrolled templates well represent the input data (controlled environment).
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通过模板协同更新捕获类内生物特征数据的大变化
最近,人们提出了ldquotemplate updaterdquo算法来解决生物特征模板库对新数据的代表性问题,该算法更新已登记的模板,以便更好地捕获和代表受试者的类内变化。大多数建议的方法都采用了ldquoselfrdquo更新技术,其中系统使用自己的知识更新自己。最近介绍了一种名为模板协同更新的方法,该方法利用两个互补的生物特征相互进行协同更新。在本文中,我们研究了模板协同更新是否能够比最先进的自更新算法更好地捕获类内变化。因此,实验是在两种条件下进行的,即受控环境和非受控环境。报告的结果表明,当初始注册模板对新数据的代表性较差(非受控环境)时,协同更新可以优于ldquoselfrdquo更新技术,而当初始注册模板很好地代表输入数据(受控环境)时,获得的性能几乎相似。
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