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首页> 外文期刊>Expert Systems with Application >Multimodal biometric system built on the new entropy function for feature extraction and the Refined Scores as a classifier
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Multimodal biometric system built on the new entropy function for feature extraction and the Refined Scores as a classifier

机译:建立在新的熵函数基础上的多峰生物特征识别系统,用于特征提取和精致分数作为分类器

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摘要

This paper presents a unique face based multimodal biometric system comprising IR face, ear and iris to cater to the surveillance application by proposing new entropy function. Two new features based on this entropy are devised to cater the highly uncertain database found at the surveillance site. To handle the erroneous scores we have proposed Refined Score (RS) method and applied it on individual IR face, ear and iris modalities under both constrained and the unconstrained conditions for the authentication of users and also used for the score level fusion of these modalities using the proposed entropy based features. The entropy features show good performance under the constrained and unconstrained databases whereas the conventional entropies do not fare well on the unconstrained databases. RS based classifier always outperforms the EC (Euclidean classifier) and RS based score level fusion has an edge over the conventional score level fusion.
机译:本文提出了一种独特的基于面部的多模态生物识别系统,该系统包括红外面部,耳朵和虹膜,通过提出新的熵函数来满足监视应用的需求。设计了基于此熵的两个新功能来迎合在监视站点发现的高度不确定的数据库。为了处理错误的分数,我们提出了精细分数(RS)方法,并将其应用于在约束条件和非约束条件下的单个IR脸部,耳朵和虹膜模态下进行用户身份验证,并且还使用了这些模态的分数级别融合提出的基于熵的特征。熵特征在受约束和不受约束的数据库下显示出良好的性能,而常规熵在不受约束的数据库上表现不佳。基于RS的分类器始终胜过EC(欧几里德分类器),基于RS的评分级别融合比传统评分级别融合更具优势。

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