首页> 外文会议>International Conference on Biometric Authentication(ICBA 2004); 20040715-17; Hong Kong(CN) >A Hyperbolic Function Model for Multiple Biometrics Decision Fusion
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A Hyperbolic Function Model for Multiple Biometrics Decision Fusion

机译:双生物特征决策融合的双曲函数模型

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摘要

In this paper, we treat the problem of combining fingerprint and speech biometric decisions as a classifier fusion problem. The Peed-forward Neural Network provides a natural choice for such data fusion as it has been shown to be a universal approximator. However, the training process remains much to be a trial-and-error effort since no learning algorithm can guarantee convergence to optimal solution within finite iterations. In this work, we propose a network model to generate different combinations of the hyperbolic functions to achieve some approximation and classification properties. This is to circumvent the iterative training problem as seen in neural networks learning. The proposed hyperbolic functions network model is applied to combine the fingerprint and speaker verification decisions which show either better or comparable results with respect to several commonly used methods.
机译:在本文中,我们将组合指纹和语音生物识别决策的问题视为分类器融合问题。前向神经网络为这种数据融合提供了自然的选择,因为它已被证明是通用的近似器。但是,由于没有学习算法可以保证在有限的迭代内收敛到最优解,因此训练过程仍然需要反复试验。在这项工作中,我们提出了一个网络模型来生成双曲函数的不同组合,以实现一些近似和分类属性。这是为了避免在神经网络学习中看到的迭代训练问题。提出的双曲函数网络模型用于组合指纹和说话人验证决策,相对于几种常用方法,这些决策显示出更好或可比的结果。

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