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首页> 外文期刊>International journal of artificial life research >Palmprint And Dorsal Hand Vein Multi-Modal Biometric Fusion Using Deep Learning
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Palmprint And Dorsal Hand Vein Multi-Modal Biometric Fusion Using Deep Learning

机译:使用深度学习的棕榈纹和背部手静脉多模态生物识别融合

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摘要

Advancements in biometrics have attained relatively high recognition rates. However, the need for a biometric system that is reliable, robust, and convenient remains. Systems that use palmprints (PP) for verification have a number of benefits including stable line features, reduced distortion and simple self-positioning. Dorsal hand veins (DHVs) are distinctive for every person, such that even identical twins have different DHVs. DHVs appear to maintain stability over time. In the past, different features algorithms were used to implement palmprint (PP) and dorsal hand vein (DHV) systems. Previous systems relied on handcrafted algorithms. The advancements of deep learning (DL) in the features learned by the convolutional neural network (CNN) has led to its application in PP and DHV recognition systems. In this article, a multimodal biometric system based on PP and DHV using (VGG16, VGG19 and AlexNet) CNN models is proposed. The proposed system is uses two approaches: feature level fusion (FLF) and Score level fusion (SLF). In the first approach, the features from PP and DHV are extracted with CNN models. These extracted features are then fused using serial or parallel fusion and used to train error-correcting output codes (ECOC) with a support vector machine (SVM) for classification. In the second approach, the fusion at score level is done with sum, max, and product methods by applying two strategies: Transfer learning that uses CNN models for features extraction and classification for PP and DHV, then score level fusion. For the second strategy, features are extracted with CNN models for PP and DHV and used to train ECOC with SVM for classification, then score level fusion. The system was tested using two DHV databases and one PP database. The multimodal system is tested two times by repeating PP database for each DHV database. The system achieved very high accuracy rate.
机译:生物识别学的进步达到了相对较高的识别率。但是,需要一种可靠,坚固,方便的生物识别系统。使用PalmPrints(PP)进行验证的系统具有许多益处,包括稳定的线特征,降低失真和简单的自定位。对于每个人来说,背部手静脉(DHV)是独特的,这使得甚至相同的双胞胎具有不同的DHV。 DHV似乎保持稳定随着时间的推移。在过去,使用不同的特征算法来实现掌纹(PP)和背部手静脉(DHV)系统。以前的系统依赖于手工算法。深度学习(DL)在卷积神经网络(CNN)的特征中的进步导致其在PP和DHV识别系统中的应用。在本文中,提出了一种基于PP和DHV的多模态生物识别系统(VGG16,VGG19和AlexNet)CNN模型。所提出的系统用两种方法:特征级别融合(FLF)和得分水平融合(SLF)。在第一种方法中,通过CNN模型提取PP和DHV的特征。然后使用串行或并行融合来融合这些提取的特征,并用用于分类的支持向量机(SVM)训练纠错输出代码(ECOC)。在第二种方法中,通过应用两种策略,使用SUM,MAX和产品方法进行分数级别的融合:转移学习,使用CNN模型用于PP和DHV的特征提取和分类,然后得分水平融合。对于第二次策略,用CNN型号为PP和DHV提取功能,用于用SVM培训ecoC进行分类,然后进行分数水平融合。使用两个DHV数据库和一个PP数据库测试系统。通过重复每个DHV数据库重复PP数据库测试多模态系统。该系统实现了非常高的精度率。

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