基于卷积神经网络的增强型多模态生物识别系统

L. Omotosho, I. Ogundoyin, Olajide Adebayo, Joshua O. Oyeniyi
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引用次数: 1

摘要

多模态生物识别系统是将一种以上的生物识别模态结合为一种方法,以克服单模态生物识别系统的局限性。在多模态生物识别系统中,利用不同的算法进行特征提取、特征级融合和分类往往会使融合的生物特征变得复杂,并使融合的生物特征具有更大的维度。本文开发了一种基于卷积神经网络的人脸虹膜多模态生物识别系统,通过特征提取、特征级融合、训练和匹配,降低了人脸虹膜的维数、错误率,提高了人脸虹膜的识别精度。卷积神经网络基于深度监督学习模型,用于系统的训练、分类和测试。图像被预处理成标准的归一化,然后流入一对卷积层。所开发的多模态生物识别系统在700个虹膜和人脸图像数据集上进行了评估,训练数据库包含600个虹膜和人脸图像,其中100个虹膜和人脸图像用于测试。实验结果表明,在学习率为0.0001时,多模态系统的性能识别准确率(RA)为98.33%,等错误率(ERR)为0.0006%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AN ENHANCED MULTIMODAL BIOMETRIC SYSTEM BASED ON CONVOLUTIONAL NEURAL NETWORK
Multimodal biometric system combines more than one biometric modality into a single method in order, to overcome the limitations of unimodal biometrics system. In multimodal biometrics system, the utilization of different algorithms for feature extraction, fusion at feature level and classification often to complexity and make fused biometrics features larger in dimensions. In this paper, we developed a face-iris multimodal biometric recognition system based on convolutional neural network for feature extraction, fusion at feature level, training and matching to reduce dimensionality, error rate and improve the recognition accuracy suitable for an access control. Convolutional Neural Network is based on deep supervised learning model and was employed for training, classification, and testing of the system. The images are preprocessed to a standard normalization and then flow into couples of convolutional layers. The developed multimodal biometrics system was evaluated on a dataset of 700 iris and facial images, the training database contain 600 iris and face images, 100 iris and face images were used for testing. Experimental result shows that at the learning rate of 0.0001, the multimodal system has a performance recognition accuracy (RA) of 98.33% and equal error rate (ERR) of 0.0006%.
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