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基于深度学习的腕部血管生物特征识别。

Deep Learning-Based Wrist Vascular Biometric Recognition.

机构信息

Department of Electrical, Computer and Software Engineering, The University of Auckland, Auckland 1010, New Zealand.

出版信息

Sensors (Basel). 2023 Mar 15;23(6):3132. doi: 10.3390/s23063132.

Abstract

The need for contactless vascular biometric systems has significantly increased. In recent years, deep learning has proven to be efficient for vein segmentation and matching. Palm and finger vein biometrics are well researched; however, research on wrist vein biometrics is limited. Wrist vein biometrics is promising due to it not having finger or palm patterns on the skin surface making the image acquisition process easier. This paper presents a deep learning-based novel low-cost end-to-end contactless wrist vein biometric recognition system. FYO wrist vein dataset was used to train a novel U-Net CNN structure to extract and segment wrist vein patterns effectively. The extracted images were evaluated to have a Dice Coefficient of 0.723. A CNN and Siamese Neural Network were implemented to match wrist vein images obtaining the highest F1-score of 84.7%. The average matching time is less than 3 s on a Raspberry Pi. All the subsystems were integrated with the help of a designed GUI to form a functional end-to-end deep learning-based wrist biometric recognition system.

摘要

对手写体中文的需求显著增加。近年来,深度学习已被证明在静脉分割和匹配方面非常有效。手掌和手指静脉生物识别技术已经得到了很好的研究;然而,手腕静脉生物识别技术的研究有限。由于手腕静脉在皮肤表面上没有手指或手掌模式,因此图像采集过程更加容易,因此手腕静脉生物识别技术很有前景。本文提出了一种基于深度学习的新型低成本端到端非接触式手腕静脉生物识别系统。使用 FYO 手腕静脉数据集来训练一种新的 U-Net CNN 结构,以有效地提取和分割手腕静脉模式。评估提取的图像具有 0.723 的 Dice 系数。实现了 CNN 和孪生神经网络来匹配手腕静脉图像,获得了 84.7%的最高 F1 分数。在树莓派上的平均匹配时间小于 3 秒。借助设计的 GUI 将所有子系统集成在一起,形成了一个功能齐全的基于深度学习的手腕生物识别系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba4a/10051641/fb4476f509ac/sensors-23-03132-g001.jpg

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