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Deep Learning Approach for Multimodal Biometric Recognition System Based on Fusion of Iris Face and Finger Vein Traits

机译:基于虹膜面部和手指静脉特征的多模式生物识别系统的深度学习方法

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摘要

With the increasing demand for information security and security regulations all over the world, biometric recognition technology has been widely used in our everyday life. In this regard, multimodal biometrics technology has gained interest and became popular due to its ability to overcome a number of significant limitations of unimodal biometric systems. In this paper, a new multimodal biometric human identification system is proposed, which is based on a deep learning algorithm for recognizing humans using biometric modalities of iris, face, and finger vein. The structure of the system is based on convolutional neural networks (CNNs) which extract features and classify images by softmax classifier. To develop the system, three CNN models were combined; one for iris, one for face, and one for finger vein. In order to build the CNN model, the famous pertained model VGG-16 was used, the Adam optimization method was applied and categorical cross-entropy was used as a loss function. Some techniques to avoid overfitting were applied, such as image augmentation and dropout techniques. For fusing the CNN models, different fusion approaches were employed to explore the influence of fusion approaches on recognition performance, therefore, feature and score level fusion approaches were applied. The performance of the proposed system was empirically evaluated by conducting several experiments on the SDUMLA-HMT dataset, which is a multimodal biometrics dataset. The obtained results demonstrated that using three biometric traits in biometric identification systems obtained better results than using two or one biometric traits. The results also showed that our approach comfortably outperformed other state-of-the-art methods by achieving an accuracy of 99.39%, with a feature level fusion approach and an accuracy of 100% with different methods of score level fusion.
机译:随着对世界各地的信息安全和安全法规的需求日益增加,生物识别技术已被广泛用于我们日常生活中。在这方面,多式化生物识别技术已经获得了兴趣,并且由于其克服了单峰生物识别系统的许多重大限制而变得流行。在本文中,提出了一种新的多模态生物识别人识别系统,其基于深入学习算法,用于使用虹膜,面部和手指静脉的生物识别方式识别人类。系统的结构基于卷积神经网络(CNNS),其通过SoftMax分类器提取特征并对图像进行分类。要开发系统,组合了三种CNN模型;一个用于虹膜,一个用于脸部,一个用于手指静脉。为了构建CNN模型,使用了着名的PertoInted Model VGG-16,应用了ADAM优化方法,并将分类交叉熵用作损耗功能。应用一些避免过度装备的技术,例如图像增强和丢弃技术。为了融合CNN模型,采用不同的融合方法来探讨融合方法对识别性能的影响,因此应用了特征和得分水平融合方法。通过在Sdumla-HMT数据集上进行多个实验,拟议系统的性能经验评估,该实验是一种多模式生物测量数据集。所获得的结果表明,在生物识别系统中使用三种生物识别性状,而不是使用两个或一个生物识别性状的效果更好。结果还表明,我们的方法通过实现了99.39%的准确性,通过实现了99.39%的准确度,具有特征级融合方法的准确性和100%的准确性,具有不同的分数水平融合。

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