基于卷积神经网络的人脸、耳朵和眼周区域的多模态生物识别身份验证

M. Lohith, Yoga Suhas Kuruba Manjunath, M. N. Eshwarappa
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引用次数: 0

摘要

生物识别技术是一个活跃的研究领域,因为在从娱乐到安全的许多应用中对准确的人员识别的需求不断增加。单峰和多峰两种生物识别方法是众所周知的。单模态生物识别技术使用人的一种生物识别模态来进行人的身份识别。单峰生物识别系统的性能由于某些限制而降低,例如:类内变化和非普适性。使用一个人的一种以上生物识别模态的人的身份识别是多模态生物识别。该方法具有抗欺骗攻击、识别率高的特点,受到越来越多的关注。传统的特征提取方法在易受光照、姿态和年龄变化等变化的工程特征中存在困难。使用卷积神经网络(CNN)进行特征提取可以克服这些困难,因为具有鲁棒变化的大型数据集可以用于训练,CNN可以学习这些变化。在本文中,我们提出了在特征水平融合的多模态生物识别技术,使用面部、耳朵和眼周区域的生物识别模式,并应用深度学习CNN进行特征表示,我们还提出了对类内变化具有鲁棒性的面部、耳朵和眼周区域数据集。利用提出的数据库对系统进行了评价。通过计算准确率、精密度、召回率和[公式:见文本]分数来评价系统的性能,与现有的生物识别系统相比有了显著的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Biometric Person Authentication Using Face, Ear and Periocular Region Based on Convolution Neural Networks
Biometrics is an active area of research because of the increase in need for accurate person identification in numerous applications ranging from entertainment to security. Unimodal and multimodal are the well-known biometric methods. Unimodal biometrics uses one biometric modality of a person for person identification. The performance of an unimodal biometric system is degraded due to certain limitations such as: intra-class variations and nonuniversality. The person identification using more than one biometric modality of a person is multimodal biometrics. This method of identification has gained more interest due to resistance on spoof attacks and more recognition rate. Conventional methods of feature extraction have difficulty in engineering features that are liable to more variations such as illumination, pose and age variations. Feature extraction using convolution neural network (CNN) can overcome these difficulties because large dataset with robust variations can be used for training, where CNN can learn these variations. In this paper, we propose multimodal biometrics at feature level horizontal fusion using face, ear and periocular region biometric modalities and apply deep learning CNN for feature representation and also we propose face, ear and periocular region dataset that are robust to intra-class variations. The evaluation of the system is made by using proposed database. Accuracy, Precision, Recall and [Formula: see text] score are calculated to evaluate the performance of the system and had shown remarkable improvement over existing biometric system.
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