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Human Identity Verification From Biometric Dorsal Hand Vein Images Using the DL-GAN Method

机译:使用DL-GaN方法从生物识别背部手静脉图像中验证人类身份验证

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摘要

In this research, biometric authentication, which has been widely used for different purposes in the last quarter-century, is studied. Dorsal hand veins are used for biometric authentication. “Deep learning” (DL) and “generative adversarial networks” (GANs) are used together as keys in the study. A DL-GAN is obtained by combining deep learning and GAN. The developed DL-GAN method is tested on two separate databases. The adversarial network (DL-GAN) method is developed to increase the authentication process’s proportional value. For identity verification, dorsal hand veins with biometric physical properties are used. A multistep approach is used for selecting hand dorsal features, including preimage processing and effectively identifying individuals. The deep learning productive antinetwork method is used to effectively identify individuals based on the information obtained from the dorsal hand vein images. For the test in the study, two open access databases are used. These databases are the Jilin University - dorsal hand vein database and the 11K hands database. The results of the experiments performed on the dataset related to the dorsal hand vessels show that the DL-GAN method reaches an identity accuracy level of 98.36% and has an error rate of 2.47% and a standard accuracy of 0.19%. The accuracy of the experimental results in the second dataset is 96.43%, the equal error rate is 3.55% and the standard accuracy is 0.21%. The improved DL-GAN method obtains better results than physical biometric methods such as LBP, LPQ, GABOR, FGM, BGM and SIFT.
机译:在本研究中,研究了在过去四分之一世纪中被广泛用于不同目的的生物识别认证。背部手静脉用于生物识别身份验证。 “深度学习”(DL)和“生成的对抗网络”(GANS)被用作研究中的钥匙。通过组合深度学习和GaN获得DL-GaN。开发的DL-GaN方法在两个单独的数据库上进行测试。开发对抗网络(DL-GAN)方法以增加认证过程的比例值。对于身份验证,使用具有生物识别物理性质的背部手静脉。多步骤方法用于选择手背部特征,包括预测处理和有效地识别个体。深度学习生产的抗胰抗动作业方法用于基于从背部手静脉图像获得的信息有效识别个体。对于研究中的测试,使用两个开放式访问数据库。这些数据库是吉林大学 - 背部手静脉数据库和11k手数据库。在与背部手血管相关的数据集上进行的实验结果表明,DL-GAN方法达到了98.36%的身份精度水平,误差率为2.47%,标准精度为0.19%。第二个数据集的实验结果的准确性为96.43%,相同的错误率为3.55%,标准精度为0.21%。改进的DL-GaN方法比物理生物生物测量方法(如LBP,LPQ,Gabor,FGM,BGM和SIFT)获得更好的结果。

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