基于深度神经网络的手指静脉图像识别

Hana Sharif, Faisal Rehman, Naveed Riaz, Rana Mohtasham Aftab, Adnan Ashraf, Azher Mehmood
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引用次数: 0

摘要

为了确定身份,个人经常使用生物识别技术,这样他们的身份就不会在未经他们同意的情况下被利用。收集生物特征数据变得越来越容易。现有的智能手机和其他智能技术可以谨慎地获取生物特征信息。手指静脉成像身份验证是一种基于手指皮肤下可见静脉模式的生物识别技术。静脉受表皮保护,不能复制。本研究的重点是手指静脉的一致性特征。我们从几种前沿的深度学习技术中收集不变特征,然后使用多类支持向量机对它们进行分类。为此,我们使用了公开的手指静脉图像数据集。使用了几个评估标准和不同深度学习方法的比较来表征这些模型在SDUMLA-HMT数据集上的性能和效率。
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Identification of Finger Vein Images with Deep Neural Networks
To establish identification, individuals often utilize biometrics so that their identity cannot be exploited without their consent. Collecting biometric data is getting easier. Existing smartphones and other intelligent technologies can discreetly acquire biometric information. Authentication through finger vein imaging is a biometric identification technique based on a vein pattern visible under finger's skin. Veins are safeguarded by the epidermis and cannot be duplicated. This research focuses on the consistent characteristics of veins in fingers. We collected invariant characteristics from several cutting-edge deep learning techniques before classifying them using multiclass SVM. We used publicly available image datasets of finger veins for this purpose. Several assessment criteria and a comparison of different deep learning approaches were used to characterize the performance and efficiency of these models on the SDUMLA-HMT dataset. 
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