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Research on Finger Vein Recognition Algorithm Based on Wavelet-Transformer
  • +2
  • Shuqiang Yang,
  • Zhaodi Wang,
  • Huafeng Qin,
  • Yike Liu,
  • Junqiang Wang
Shuqiang Yang
China University of Mining and Technology
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Zhaodi Wang
Luoyang Normal University

Corresponding Author:wangzhaodi@lynu.edu.cn

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Huafeng Qin
Chongqing Technology and Business University
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Yike Liu
Luoyang Normal University
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Junqiang Wang
Luoyang Normal University
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Abstract

Finger vein recognition, like control systems, requires harmonizing local and global dynamics for optimal performance. To address limitations in existing methods, we propose the Wavelet-Transformer algorithm, combining CNNs for local feature extraction, Vision Transformers (ViT) for global dependency modeling, and discrete wavelet transforms (DWT) for time-frequency analysis. This modular design mirrors control theory principles, ensuring stability and adaptability. Experiments on FV210 and FV618 datasets show the algorithm’s superior performance, achieving recognition accuracies of 99.53% and 97.62% with equal error rates of 0.35% and 0.71%, highlighting its robustness for intelligent recognition and control applications.
29 Dec 2024Submitted to Electronics Letters
06 Jan 2025Submission Checks Completed
06 Jan 2025Assigned to Editor
06 Jan 2025Review(s) Completed, Editorial Evaluation Pending
07 Jan 2025Reviewer(s) Assigned