综合质量措施对生物特征样本匹配的影响

Krzysztof Kryszczuk, J. Richiardi, A. Drygajlo
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引用次数: 17

摘要

生物特征匹配涉及两个生物特征数据样本的比较。在实际应用中,相对于在受控条件下获得的类似样品的标称质量,一个或两个样品的质量可能会降低。现有技术已经表明,在这种情况下,将质量信息集成到生物特征匹配过程中可以显著提高生物特征匹配器的分类性能。为了方便这样的整合,来自两个比较的生物特征样本的质量测量通常合并为一个质量分数。在本文中,我们分析了这样做的优点。我们从模式分类的角度重新审视了这个问题,并表明与将质量度量映射到一个质量分数的系统相比,使用单个质量度量作为单独的分类特征通常会导致生物识别系统的优越性能。利用合成数据和真实生物特征数据库,以人脸、指纹和多模态匹配为例,为这一说法提供了实验支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of combining quality measures on biometric sample matching
Biometric matching involves a comparison of two biometric data samples. In practical applications, one or both of the samples may be of degraded quality, in respect to the nominal quality of similar samples acquired in controlled conditions. It has been shown in prior art that in such situations, the integration of quality information into the process of bio-metric matching can lead to significantly improved classification performance of the biometric matcher. To facilitate such an integration, quality measures originating from both compared biometric samples are usually combined into one quality score. In this paper, we analyze the merit of doing so. We revisit the problem from a pattern classification perspective, and show that using individual quality measures as separate classification features frequently leads to a superior performance of a biometric system in comparison with the system in which quality measures are mapped into one quality score. We provide experimental support of this claim using synthetic data, as well as real biometric database, on the examples of face, fingerprint and multi-modal matching.
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