Deep Learning-Based Biometric System Analysis of Palmprint Images

Mohammed Jaafar Rashid Al-Majmaie, Mesut Cevik
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Abstract

The implications, both favorable and negative, can result from the speed with which technology is progressing. An increasing number of serious crimes are being committed in cyberspace, and as a result, there has been a need for critical research into the topic of information security all over the globe. Therefore, biometric recognition systems are being used by so many businesses and government agencies today. This study applied a novel strategy for human identification based on a convolutional neural network pre-trained model called AlexNet and the wavelet transform. The suggested method took photographs of people’s hands and extracted novel and effective characteristics from them, then fed those features into an ensemble learning classifier, which used those features to divide the images into many classes, each of which represented one of the 72 people. The proposed method combined Alexnet pre-trained model combined with wavelet transform and ensemble learning. When compared to recent studies at the cutting edge, the 99.14 success rate obtained here is outstanding
基于深度学习的掌纹图像生物识别系统分析
技术进步的速度可能带来有利和不利的影响。越来越多的严重犯罪发生在网络空间,因此,在全球范围内都需要对信息安全主题进行批判性研究。因此,如今许多企业和政府机构都在使用生物识别系统。本研究应用了一种基于卷积神经网络预训练模型AlexNet和小波变换的人类识别新策略。该方法先对人的手进行拍照,从中提取新颖有效的特征,然后将这些特征输入到集成学习分类器中,该分类器利用这些特征将图像分成许多类,每个类代表72个人中的一个。该方法将Alexnet预训练模型与小波变换和集成学习相结合。与最近的前沿研究相比,这里99.14%的成功率是非常出色的
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