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User-Specific Fusion Using One-Class Classification for Multimodal Biometric Systems: Boundary Methods

机译:使用一类分类的多模式生物识别系统的用户特定融合:边界方法

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It has been previously shown that the matching performance of a multimodal biometric system can be improved by using user-specific fusion. The objective of this approach is to address the fact that some users are difficult to recognize using some biometric traits, while these traits are highly discriminant for others. Conventional two-class classification methods, when used to design user-specific fusion, often suffer from the problem of limited availability of training data, especially, those of genuine users. In this paper, we propose a user-specific fusion approach, making use of one-class classifiers, known as boundary methods, to avoid the aforementioned problem of the two-class classification approach. We also show that such an approach outperforms others, including the Sum of Scores, the standard SVM, and the one-class SVM, in experiments carried out on the BioSecure DS2 database.
机译:先前已经表明,可以通过使用用户特定的融合来改善多模式生物识别系统的匹配性能。该方法的目的是解决以下事实:某些用户难以使用某些生物特征进行识别,而这些特征则对其他特征具有很高的判别力。当用于设计用户特定的融合时,常规的两类分类方法经常遭受训练数据,尤其是真正用户的训练数据的可用性有限的问题。在本文中,我们提出了一种特定于用户的融合方法,该方法利用一类分类器(称为边界方法)来避免上述两类分类方法的问题。我们还显示,在BioSecure DS2数据库上进行的实验中,这种方法优于其他方法,包括分数总和,标准SVM和一类SVM。

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