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When Data Goes Missing: Methods for Missing Score Imputation inBiometric Fusion

机译:当数据丢失时:丢失分数避免的方法无力融合

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While fusion can be accomplished at multiple levels in a multibiometric system, score level fusion is commonly used as it offers a good trade-off between fusion complexity and data availability. However, missing scores affect the implementation of several biometric fusion rules. While there are several techniques for handling missing data, the imputation scheme -which replaces missing values with predicted values - is preferred since this scheme can be followed by a standard fusion scheme designed for complete data. This paper compares the performance of three imputation methods: Imputation via Maximum Likelihood Estimation (MLE), Multiple Imputation (MI) and Random Draw Imputation through Gaussian Mixture Model estimation (RD GMM). A novel method called Hot-deck GMM is also introduced and exhibits markedly better performance than the other methods because of its ability to preserve the local structure of the score distribution. Experiments on the MSU dataset indicate the robustness of the schemes in handling missing scores at various missing data rates.
机译:虽然融合可以在多学时系统中的多个级别完成,但是常用级别融合通常使用,因为它在融合复杂性和数据可用性之间提供了良好的权衡。但是,缺少的分数会影响几种生物识别融合规则的实现。虽然有几种用于处理缺失数据的技术,但是替换缺货方案 - 替换具有预测值的缺失的值 - 是优选的,因为该方案可以跟随设计用于完整数据的标准融合方案。本文比较了三种估算方法的性能:通过高斯混合模型估计(RD GMM),通过最大似然估计(MI),多重归纳(MI)和随机绘制归档的估算。还引入了一种新的方法,介绍了热甲板GMM的方法,并且表现出比其他方法显着更好的性能,因为它能够保留分数分布的局部结构。 MSU数据集的实验指出了在各种缺失数据速率处理缺失分数方面的鲁棒性。

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