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A hidden Markov model for multimodal biometrics score fusion

机译:用于多峰生物识别分数融合的隐马尔可夫模型

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摘要

There are strong evidences of that multimodal biometric score fusion can significantly improve human identification performance. Score level fusion usually involves score normalization, score fusion, and fusion decision. There are several types of score fusion methods, direct combination of fusion scores, classifier-based fusion, and density-based fusion. The real applications require achieving greater reliability in determining or verifying person's identity. The goal of this research is to improve the accuracy and robustness of human identification by using multimodal biometrics score fusion. The accuracy means high verification rate if tested on a closed dataset, or a high genuine accept rate under low false accept rate if tested on an open dataset. While the robustness means the fusion performance is stable with variant biometric scores. We propose a hidden Markov model (HMM) for multiple score fusion, where the biometric scores include multimodal scores and multi-matcher scores. The state probability density functions in a HHM model are estimated by Gaussian mixture model. The proposed HMM model for multiple score fusion is accurate for identification, flexible and reliable with biometrics. The proposed HMM method are tested on three NIST-BSSR1 multimodal databases and on three face-score databases. The results show the HMM method is an excellent and reliable score fusion method
机译:有强有力的证据表明,多模式生物特征评分融合可以显着改善人类识别性能。分数级别融合通常涉及分数归一化,分数融合和融合决策。分数融合方法有几种类型,融合分数的直接组合,基于分类器的融合和基于密度的融合。实际应用需要在确定或验证人的身份时实现更高的可靠性。这项研究的目的是通过使用多模式生物识别分数融合来提高人类识别的准确性和鲁棒性。准确性意味着,如果在封闭的数据集上进行测试,则验证率较高;如果在开放的数据集上进行测试,则在较低的错误接受率下,真实验证率较高。健壮性意味着融合性能在各种生物特征评分下均保持稳定。我们为多分数融合提出了一种隐马尔可夫模型(HMM),其中生物特征分数包括多峰分数和多匹配分数。通过高斯混合模型估计HHM模型中的状态概率密度函数。所提出的用于多分数融合的HMM模型对于生物特征识别来说是准确的,灵活的和可靠的。所提出的HMM方法在三个NIST-BSSR1多模态数据库和三个面部评分数据库上进行了测试。结果表明,HMM方法是一种出色且可靠的分数融合方法

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