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A multi-modal method based on the competitors of FVC2004 and on palm data combined with tokenised random numbers

机译:基于FVC2004竞争对手和手掌数据并结合标记化随机数的多模式方法

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In this work, we propose a multi-modal method that combines the scores of selected fingerprint matchers with the score obtained by a palm authenticator where the palm features are combined with pseudo-random numbers. We use a random subspace of AdaBoost.M1 to combine the scores of the best fingerprint matchers automatically selected among the competitors of FVC2004, and we study the performance when a different number of competitors are involved in the fusion. Moreover a deep study is carried out to design a hybrid system based on the combination of palm image features and a personal key. In conclusion, the aim of this work is to design a multi-modal biometric system and to analyze the benefits and the limits of fusion approaches in order to boost the performance of hybrid system in the worst testing hypothesis when an "impostor" steal the personal key of the user A before he tries to authenticate as A. The experimental results reported in this paper confirm that using a multi-modal ensemble of matchers it is possible to overcome some of the limitations of each single matcher leading to a considerable performance improvement.
机译:在这项工作中,我们提出了一种多模式方法,该方法将所选指纹匹配器的分数与手掌认证器获得的分数相结合,其中手掌特征与伪随机数相结合。我们使用AdaBoost.M1的随机子空间来组合FVC2004竞争对手中自动选择的最佳指纹匹配器的得分,并且我们研究了不同数量的竞争对手参与融合时的性能。此外,进行了深入的研究以基于手掌图像特征和个人钥匙的组合设计混合系统。总之,这项工作的目的是设计一种多模式生物识别系统,并分析融合方法的好处和局限性,以便在“冒名顶替者”窃取个人信息时在最坏的测试假设下提高混合系统的性能。用户A在尝试认证为A之前的密钥。本文报道的实验结果证实,使用多模式匹配器集合可以克服每个单个匹配器的某些限制,从而显着提高性能。

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