多模态生物特征识别系统的加权混合融合

Waziha Kabir, M. Ahmad, M. Swamy
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引用次数: 5

摘要

本文首先提出了一种基于特征级融合和多模态生物识别最佳单模态系统的混合融合(HBF)技术。其次,提出了一种新的加权技术,即基于均值极值的置信度加权(MEBCW)技术,该技术基于特征级融合得到的分数和最佳单峰系统。最后,为了提高多模态生物识别系统的整体识别率,将MEBCW融合到HBF中,发展了加权混合融合(WHBF)技术。在多生物识别系统上对该方法的性能进行了评估,其误差率相等,真实接受率为5.3%,错误接受率为7.2%。实验结果表明,采用该融合方法的多生物识别系统的性能优于单生物识别系统或使用现有融合水平的系统。
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Weighted Hybrid Fusion for Multimodal Biometric Recognition System
In this paper, first, a new fusion technique, referred to as hybrid fusion (HBF) technique, based on feature-level fusion and the best unimodal system for multimodal biometric system recognition, is proposed. Secondly, a new weighting technique, referred to as mean-extrema based confidence weighting (MEBCW) technique, based on the scores obtained from feature-level fusion and the best unimodal system, is proposed. Finally, a weighted hybrid fusion, referred to as weighted hybrid fusion (WHBF) technique, is developed by incorporating MEBCW in HBF, in order to improve the overall recognition rate of a multimodal biometric system. The performance of the proposed method, in terms of equal error rate and genuine acceptance rates @5.3% and @7.2% false acceptance rates, is evaluated on a multi-biometric system. The experimental results show that the performance of a multi-biometric systems using the proposed fusions is superior to that of the uni-biometric systems or to that of the system using existing level of fusions.
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