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Hand Dorsal Vein Recognition Based on Deep Hash Network

机译:基于深哈希网络的手背静脉识别

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As a unique biometric technology that has emerged in recent decades, hand dorsal vein recognition has received increasing attention due to its higher safety and convenience. In order to further improve the recognition accuracy, in this paper we propose an end-to-end method for recognizing Hand dorsal vein Based on Deep hash network (DHN), called HBD. The hand dorsal vein image is input into the simplified Convolutional Neural Networks-Fast (SCNN-F) to obtain convolution features. At the last fully connected layer, for the outputs of 128 neurons, sgn function is used to encode each image as 128-bit code. By comparing the distances between images after coding, it can be judged whether they are from the same person. Using a special loss function and training strategy, we verify the effectiveness of HBD on the NCUT, GPDS, and NCUT+GPDS database, respectively. The experimental results show that the HBD method can achieve comparable accuracy to the state-of-the-arts. In NCUT database, when the ratio of training and test set is 7:3, the Equal Error Rate (EER) of the test set is 0.08%, which is an order of magnitude lower than other algorithms. More importantly, due to the adoption of a simpler network structure and hash coding, HBD operates more efficiently and has superior performance gains over other deep learning methods while ensuring the accuracy.
机译:作为近几十年来出现的独特生物识别技术,由于其较高的安全性和便利性,手部静脉识别受到了越来越长的关注。为了进一步提高识别精度,本文提出了一种基于深哈希网络(DHN)的识别手背静脉的端到端方法,称为HBD。手背静脉图像被输入到简化的卷积神经网络 - 快速(SCNN-F)中,以获得卷积特征。在最后一个完全连接的层,对于128神经元的输出,SGN函数用于将每个图像编码为128位代码。通过比较编码之后图像之间的距离,可以判断它们是否来自同一个人。使用特殊损失功能和培训策略,我们验证了HBD在NCUT,GPD和NCUT + GPDS数据库上的有效性。实验结果表明,HBD方法可以实现最先进的可比准确性。在NCUT数据库中,当训练和测试集比为7:3时,测试集的相等误差率(eer)为0.08%,这是比其他算法低的数量级。更重要的是,由于采用了更简单的网络结构和哈希编码,HBD更有效地运行,并且在确保准确性的同时,在其他深度学习方法上具有优越的性能。

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