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FV-GAN: Finger Vein Representation Using Generative Adversarial Networks

机译:FV-GaN:使用生成对抗网络的手指静脉表示

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In finger vein verification, the mast important and challenging part is to robustly extract finger vein patterns from low-contrast infrared finger images with limited a priori knowledge. Although recent convolutional neural network (CNN)-based methods for finger vein verification have shown powerful capacity for feature representation and promising perspective in this area, they still have two critical issues to address. First, these CNN-based methods unexceptionally utilize fully connected layers, which restrict the size of finger vein images to process and increase the processing time. Second, the capacity of CNN for feature representation generally suffers from the low quality of finger vein ground-truth pattern maps for training, particularly due to outliers and vessel breaks. To address these issues, in this paper, we propose a novel approach termed FV-GAN to finger vein extraction and verification, based on generative adversarial network (GAN), as the first attempt in this area. Unlike the CNN-based methods, FV-GAN learns from the joint distribution of finger vein images and pattern maps rather than the direct mapping between them, with the aim at achieving stronger robustness against outliers and vessel breaks. Moreover, FV-GAN adopts fully convolutional networks as the basic architecture and discards fully connected layers, which relaxes the constraint on the input image size and reduces the computational expenditure for feature extraction. Furthermore, we design an adversarial training strategy and propose a hybrid loss function for FV-GAN. The experimental results on two public databases show significant improvement by FV-GAN in finger vein verification in terms of both verification accuracy and equal error rate.
机译:在手指静脉验证中,桅杆重要和具有挑战性的部分是从低对比度红外手指图像中强制提取手指静脉模式,其具有限制先验知识。虽然最近的卷积神经网络(CNN)的手指静脉验证的方法已经表现出在该领域的特征表示和有前景的观点的强大容量,但它们仍然有两个对地址的关键问题。首先,基于CNN的方法无知利用完全连接的层,该层限制了手指静脉图像的尺寸来处理并增加处理时间。其次,特征表示的CNN的容量通常存在低质量的手指静脉地面图案图进行训练,特别是由于异常值和血管断裂。为了解决这些问题,在本文中,我们提出了一种基于生成对抗网络(GAN)的FV-GAN的新方法,以指导静脉提取和验证,作为该领域的第一次尝试。与基于CNN的方法不同,FV-GAN从手指静脉图像和图案地图的联合分布中学习而不是它们之间的直接映射,目的是实现更强的鲁棒性,而不是对异常值和船只破裂。此外,FV-GaN采用完全卷积的网络作为基本架构,并丢弃完全连接的层,该层放宽输入图像尺寸的约束,并降低了特征提取的计算支出。此外,我们设计了对抗性培训策略,并提出了对FV-GaN的混合损失功能。在两种公共数据库上的实验结果显示了FV-GaN在验证精度和等同误差率方面的FV-GaN中的FV-GaN的显着改善。

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