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基于视觉特征引导的金刚石卷积网络的手指静脉识别。

Visual Feature-Guided Diamond Convolutional Network for Finger Vein Recognition.

机构信息

Artificial Intelligence and Computer Vision Laboratory, Zhongshan Institute, University of Electronic Science and Technology of China, Zhongshan 528402, China.

出版信息

Sensors (Basel). 2024 Sep 20;24(18):6097. doi: 10.3390/s24186097.

Abstract

Finger vein (FV) biometrics have garnered considerable attention due to their inherent non-contact nature and high security, exhibiting tremendous potential in identity authentication and beyond. Nevertheless, challenges pertaining to the scarcity of training data and inconsistent image quality continue to impede the effectiveness of finger vein recognition (FVR) systems. To tackle these challenges, we introduce the visual feature-guided diamond convolutional network (dubbed 'VF-DCN'), a uniquely configured multi-scale and multi-orientation convolutional neural network. The VF-DCN showcases three pivotal innovations: Firstly, it meticulously tunes the convolutional kernels through multi-scale Log-Gabor filters. Secondly, it implements a distinctive diamond-shaped convolutional kernel architecture inspired by human visual perception. This design intelligently allocates more orientational filters to medium scales, which inherently carry richer information. In contrast, at extreme scales, the use of orientational filters is minimized to simulate the natural blurring of objects at extreme focal lengths. Thirdly, the network boasts a deliberate three-layer configuration and fully unsupervised training process, prioritizing simplicity and optimal performance. Extensive experiments are conducted on four FV databases, including MMCBNU_6000, FV_USM, HKPU, and ZSC_FV. The experimental results reveal that VF-DCN achieves remarkable improvement with equal error rates (EERs) of 0.17%, 0.19%, 2.11%, and 0.65%, respectively, and Accuracy Rates (ACC) of 100%, 99.97%, 98.92%, and 99.36%, respectively. These results indicate that, compared with some existing FVR approaches, the proposed VF-DCN not only achieves notable recognition accuracy but also shows fewer number of parameters and lower model complexity. Moreover, VF-DCN exhibits superior robustness across diverse FV databases.

摘要

手指静脉(FV)生物识别技术因其固有的非接触特性和高安全性而备受关注,在身份验证等领域具有巨大的潜力。然而,训练数据稀缺和图像质量不一致等问题仍然阻碍着手指静脉识别(FVR)系统的有效性。为了解决这些挑战,我们引入了视觉特征引导的菱形卷积网络(简称“VF-DCN”),这是一种独特配置的多尺度和多方向卷积神经网络。VF-DCN 具有三个关键创新:首先,它通过多尺度 Log-Gabor 滤波器精细调整卷积核。其次,它采用了一种独特的菱形卷积核架构,灵感来自人类视觉感知。这种设计巧妙地将更多的方向滤波器分配给中尺度,因为中尺度固有地包含更丰富的信息。相比之下,在极端尺度下,最小化使用方向滤波器,以模拟物体在极端焦距下的自然模糊。第三,该网络具有精心设计的三层结构和完全无监督的训练过程,注重简单性和最佳性能。我们在四个 FV 数据库(包括 MMCBNU_6000、FV_USM、HKPU 和 ZSC_FV)上进行了广泛的实验。实验结果表明,VF-DCN 在等错误率(EER)分别为 0.17%、0.19%、2.11%和 0.65%,以及准确率(ACC)分别为 100%、99.97%、98.92%和 99.36%方面取得了显著的改进。这些结果表明,与一些现有的 FVR 方法相比,所提出的 VF-DCN 不仅实现了较高的识别准确率,而且参数量更少,模型复杂度更低。此外,VF-DCN 在不同的 FV 数据库中表现出更强的鲁棒性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4241/11436193/145ace0399f1/sensors-24-06097-g006.jpg

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