Deep Learning Techniques for Hand Vein Biometrics: A Comprehensive Review

Mustapha Hemis, Hamza Kheddar, Sami Bourouis, Nasir Saleem
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Abstract

Biometric authentication has garnered significant attention as a secure and efficient method of identity verification. Among the various modalities, hand vein biometrics, including finger vein, palm vein, and dorsal hand vein recognition, offer unique advantages due to their high accuracy, low susceptibility to forgery, and non-intrusiveness. The vein patterns within the hand are highly complex and distinct for each individual, making them an ideal biometric identifier. Additionally, hand vein recognition is contactless, enhancing user convenience and hygiene compared to other modalities such as fingerprint or iris recognition. Furthermore, the veins are internally located, rendering them less susceptible to damage or alteration, thus enhancing the security and reliability of the biometric system. The combination of these factors makes hand vein biometrics a highly effective and secure method for identity verification. This review paper delves into the latest advancements in deep learning techniques applied to finger vein, palm vein, and dorsal hand vein recognition. It encompasses all essential fundamentals of hand vein biometrics, summarizes publicly available datasets, and discusses state-of-the-art metrics used for evaluating the three modes. Moreover, it provides a comprehensive overview of suggested approaches for finger, palm, dorsal, and multimodal vein techniques, offering insights into the best performance achieved, data augmentation techniques, and effective transfer learning methods, along with associated pretrained deep learning models. Additionally, the review addresses research challenges faced and outlines future directions and perspectives, encouraging researchers to enhance existing methods and propose innovative techniques.
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用于手部静脉生物识别的深度学习技术:全面回顾
生物识别身份验证作为一种安全、高效的身份验证方法,已经引起了广泛关注。在各种方式中,手静脉生物识别(包括手指静脉、手掌静脉和手背静脉识别)因其准确性高、不易伪造和非侵入性而具有独特的优势。每个人的手部静脉图案都非常复杂且各不相同,因此是理想的生物识别器。此外,手部静脉识别是非接触式的,与指纹或虹膜识别等其他方式相比,可提高用户的便利性和卫生性。此外,静脉位于内部,不易损坏或改变,从而提高了生物识别系统的安全性和可靠性。这些因素的结合使手静脉生物识别技术成为一种高效、安全的身份验证方法。本综述论文深入探讨了应用于手指静脉、手掌静脉和手背静脉识别的深度学习技术的最新进展。它涵盖了手部静脉生物统计学的所有基本要素,总结了公开可用的数据集,并讨论了用于评估这三种模式的最新指标。此外,它还全面概述了针对手指、手掌、手背和多模态静脉技术所建议的方法,深入分析了所取得的最佳性能、数据增强技术和有效的迁移学习方法,以及相关的预训练深度学习模型。
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