GSCL: Generative Self-Supervised Contrastive Learning for Vein-Based Biometric Verification

Wei-Feng Ou;Lai-Man Po;Xiu-Feng Huang;Wing-Yin Yu;Yu-Zhi Zhao
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Abstract

Vein-based biometric technology offers secure identity authentication due to the concealed nature of blood vessels. Despite the promising performance of deep learning-based biometric vein recognition, the scarcity of vein data hinders the discriminative power of deep features, thus affecting overall performance. To tackle this problem, this paper presents a generative self-supervised contrastive learning (GSCL) scheme, designed from a data-centric viewpoint to fully mine the potential prior knowledge from limited vein data for improving feature representations. GSCL first utilizes a style-based generator to model vein image distribution and then generate numerous vein image samples. These generated vein images are then leveraged to pretrain the feature extraction network via self-supervised contrastive learning. Subsequently, the network undergoes further fine-tuning using the original training data in a supervised manner. This systematic combination of generative and discriminative modeling allows the network to comprehensively excavate the semantic prior knowledge inherent in vein data, ultimately improving the quality of feature representations. In addition, we investigate a multi-template enrollment method for improving practical verification accuracy. Extensive experiments conducted on public finger vein and palm vein databases, as well as a newly collected finger vein video database, demonstrate the effectiveness of GSCL in improving representation quality.
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GSCL:基于静脉的生物识别验证的生成式自我监督对比学习
由于血管的隐蔽性,基于静脉的生物识别技术可提供安全的身份验证。尽管基于深度学习的静脉生物识别技术性能良好,但静脉数据的稀缺性阻碍了深度特征的识别能力,从而影响了整体性能。为解决这一问题,本文提出了一种生成式自监督对比学习(GSCL)方案,该方案从以数据为中心的角度出发,从有限的静脉数据中充分挖掘潜在的先验知识,以改进特征表征。GSCL 首先利用基于风格的生成器对静脉图像分布进行建模,然后生成大量静脉图像样本。然后,利用这些生成的静脉图像,通过自监督对比学习对特征提取网络进行预训练。随后,在监督下使用原始训练数据对网络进行进一步微调。这种将生成性建模和判别性建模系统地结合在一起的方法使网络能够全面挖掘静脉数据中固有的语义先验知识,最终提高特征表征的质量。此外,我们还研究了一种多模板注册方法,以提高实际验证的准确性。在公共手指静脉和手掌静脉数据库以及新收集的手指静脉视频数据库上进行的广泛实验证明了 GSCL 在提高表征质量方面的有效性。
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2024 Index IEEE Transactions on Biometrics, Behavior, and Identity Science Vol. 6 Table of Contents IEEE T-BIOM Editorial Board Changes IEEE Transactions on Biometrics, Behavior, and Identity Science Cutting-Edge Biometrics Research: Selected Best Papers From IJCB 2023
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