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A reduced multivariate polynomial model for multimodal biometrics and classifiers fusion

机译:用于多峰生物识别和分类器融合的简化多元多项式模型

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摘要

The multivariate polynomial model provides an effective way to describe complex nonlinear input-output relationships since it is tractable for optimization, sensitivity analysis, and prediction of confidence intervals. However, for high-dimensional and high-order problems, multivariate polynomial regression becomes impractical due to its huge number of product terms. This is especially true for the case of a full interaction model. In this paper, we propose a reduced multivariate polynomial model to circumvent the dimensionality problem with some compromise in its approximation capability. In multimodal biometrics and many classifiers fusion applications, as individual classifiers to be combined would have attained a certain level of classification accuracy, this reduced multivariate polynomial model can be used to combine these classifiers in the next level of classification taking their outputs as the inputs to the reduced multivariate polynomial model. The model is first applied to a well-known pattern classification problem to illustrate its classification capability. The reduced multivariate polynomial model is then applied to combine two biometric verification systems with improved receiver operating characteristics performance as compared to an optimal weighing method and a few commonly used classifiers.
机译:多元多项式模型提供了一种描述复杂的非线性输入-输出关系的有效方法,因为它对于优化,灵敏度分析和置信区间的预测很容易处理。但是,对于高维和高阶问题,多元多项式回归由于其乘积项数量众多而变得不切实际。对于完整的交互模型,情况尤其如此。在本文中,我们提出了一个简化的多元多项式模型来规避维数问题,但其逼近能力有所妥协。在多峰生物识别和许多分类器融合应用中,由于要组合的单个分类器将达到一定级别的分类精度,因此该简化的多元多项式模型可用于在下一级别分类中组合这些分类器,并将它们的输出作为输入。简化多元多项式模型。该模型首先应用于众所周知的模式分类问题,以说明其分类能力。然后,与最佳称量方法和一些常用分类器相比,将简化的多元多项式模型应用于合并具有改进的接收器操作特性性能的两个生物特征验证系统。

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