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首页> 外文期刊>International Journal of Biometrics >How to handle missing data in robust multi-biometrics verification
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How to handle missing data in robust multi-biometrics verification

机译:如何在强大的多生物特征验证中处理丢失的数据

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摘要

Conventional multimodal biometrics systems usually do not account for missing modalities that is commonly encountered in real applications. In such cases, robust multimodal biometric verification is needed. In this paper, we present the criteria, fusion method and performance metrics of a robust multimodal biometrics verification system that verifies the client's identity at any condition of data missing. A novel adaptive Support Vector Machine (SVM) classification method is proposed for missing dimensional values. We argue that the usual performance metrics of false accept and false reject rates are insufficient yardsticks for robust verification and propose new metrics against which we benchmark our system.
机译:常规的多模式生物特征识别系统通常无法解决实际应用中经常遇到的缺失模式。在这种情况下,需要强大的多模式生物特征验证。在本文中,我们介绍了健壮的多模式生物特征验证系统的标准,融合方法和性能指标,该系统可以在任何数据丢失情况下验证客户的身份。针对缺失的维值,提出了一种新的自适应支持向量机(SVM)分类方法。我们认为,错误接受和错误拒绝率的常规性能指标不足以进行可靠的验证,因此提出了新的指标来对我们的系统进行基准测试。

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