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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A novel hybrid score level and decision level fusion scheme for cancelable multi-biometric verification
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A novel hybrid score level and decision level fusion scheme for cancelable multi-biometric verification

机译:一种新的混合分数水平和决策电平融合方案,用于取消的多生物识别验证

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摘要

In spite of the benefits of biometric-based authentication systems, there are few concerns raised because of the sensitivity of biometric data to outliers, low performance caused due to intra-class variations, and privacy invasion caused by information leakage. To address these issues, we propose a hybrid fusion framework where only the protected modalities are combined to fulfill the requirement of secrecy and performance improvement. This paper presents a method to integrate cancelable modalities utilizing Mean-Closure Weighting (MCW) score level and Dempster-Shafer (DS) theory based decision level fusion for iris and fingerprint to mitigate the limitations in the individual score or decision fusion mechanisms. The proposed hybrid fusion scheme incorporates the similarity scores from different matchers corresponding to each protected modality. The individual scores obtained from different matchers for each modality are combined using MCW score fusion method. The MCW technique achieves the optimal weight for each matcher involved in the score computation. Further, DS theory is applied to the induced scores to output the final decision. The rigorous experimental evaluations on three virtual databases indicate that the proposed hybrid fusion framework outperforms over the component level or individual fusion methods (score level and decision level fusion). As a result, we achieve (48%, 66%), (72%, 86%) and (49%, 38%) of performance improvement over unimodal cancelable iris and unimodal cancelable fingerprint verification systems for Virtual_A, Virtual_B, and Virtual_C databases, respectively. Also, the proposed method is robust enough to the variability of scores and outliers satisfying the requirement of secure authentication.
机译:尽管基于生物识别的身份验证系统的好处,但由于生物识别数据对异常值的敏感性,因此,由于类别泄漏导致的隐私入侵引起的低性能,尤其令人担忧。为解决这些问题,我们提出了一个混合融合框架,只有受保护的方式合并以满足保密性和绩效改进的要求。本文介绍了利用平均闭合加权(MCW)得分水平和Dempster-Shafer(DS)理论的决策级别融合来集成可消除的模态的方法,用于虹膜和指纹,以减轻各个评分或决策融合机制的限制。所提出的混合融合方案包括与每个受保护模型相对应的不同匹配器的相似性得分。使用MCW得分融合方法组合从每个模态的不同匹配获得的各个分数。 MCW技术实现了分数计算所涉及的每个匹配的最佳权重。此外,DS理论应用于诱导的分数以输出最终决定。三个虚拟数据库的严格的实验评估表明,所提出的混合融合框架优于组件级别或单独的融合方法(得分水平和决策电平融合)。因此,我们实现(48%,66%),(72%,86%)和(49%,38%)对Virtual_A,Virtual_B和Virtual_c数据库的单峰可被取消的虹膜和单峰可被取消的指纹验证系统进行性能改进, 分别。此外,所提出的方法足以满足安全认证要求的分数和异常值的变化。

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