基于图最小切算法的生物特征模板更新:人脸验证案例研究

A. Rattani, G. Marcialis, F. Roli
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引用次数: 34

摘要

当输入数据表现出类内变化时,生物识别系统的性能很差,这些变化不能很好地由登记的模板集表示。模板更新技术最近遇到了这个问题。大多数提出的技术都可以看作是ldquoself-updaterdquo方法,因为系统使用相同模板提供的识别结果来更新自己的模板。但是,这种方法只能将输入数据ldquonearrdquo利用到当前模板中,导致ldquolocalrdquo模板优化,即只利用与当前模板非常相似的输入样本进行更新。针对这一问题,本文提出了一种基于图最小切算法的模板全局优化方法。该方法可以通过分析系统运行过程中收集的输入数据的底层结构来更新模板。这是通过在登记数据和输入数据之间使用成对相似性度量绘制的图来实现的。以该方法在人脸验证中的应用为例,对该方法进行了研究。报告的结果表明,与最先进的自我更新技术相比,所提出的技术是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biometric template update using the graph mincut algorithm : A case study in face verification
A biometric system provides poor performances when the input data exhibit intra-class variations which are not well represented by the enrolled template set. This problem has been recently faced by template update techniques. The majority of the proposed techniques can be regarded as ldquoself-updaterdquo methods, as the system updates its own templates using the recognition results provided by the same templates. However, this approach can only exploit the input data ldquonearrdquo to the current templates resulting in ldquolocalrdquo template optimization, namely, only input samples very similar to the current templates are exploited for update. To address this issue, this paper proposes a ldquoglobalrdquo optimization of templates based on the graph mincut algorithm. The proposed approach can update templates by analysing the underlying structure of input data collected during the systempsilas operation. This is achieved by a graph drawn using a pair-wise similarity measure between enrolled and input data. Investigation of this novel template update technique has been done by its application to face verification, as a case study. The reported results show the effectiveness of the proposed technique in comparison to state of art self-update techniques.
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