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.