OC-SVM用于多生物特征评分融合的实验研究

Nassim Abbas, Messaoud Bengherabi, Elhocine Boutellaa
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引用次数: 1

摘要

不同的单一生物识别系统在其输出中携带冗余和互补的信息。与其他融合方案相比,将不同系统的匹配分数串联在一个特征向量中以提供给分类器可以提供开发更有效的系统的机会。在这项工作中,我们研究了基于分类器的生物特征评分融合的性能。为此,采用了一类支持向量机(OC-SVM)分类器,因为在生物识别系统的一般情况下,数据高度不平衡或只能从单一类别中获得。实验是在著名的NIST-multimodal分区的BSSRI数据库上进行的,并使用真实接受和错误接受标准报告结果。实验结果表明,OC-SVM与标准的两类SVM分类器以及其他分数融合方案相比具有较好的有效性。
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Experimental investigation of OC-SVM for multibiometric score fusion
Different single biometric systems carry in their outputs redundant and complementary information. The concatenation of match scores from various systems in a single feature vector to feed the classifiers can provide an opportunity to develop more efficient system compared to other fusion schemes. In this work, we investigate the performance of classifier based biometric score fusion. For this purpose, the One-Class SVM (OC-SVM) classifier is employed since, in the general case of biometric systems, the data are highly unbalanced or available from only a single class. Experiments are conducted on the well known NIST-multimodal partition of the BSSRI database and results are reported using genuine acceptance and false acceptance criteria. The obtained results show the effectiveness of the OC-SVM compared to the standard two-class SVM classifier as well as to other score fusion schemes.
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