This comprehensive review examines the latest advancements in deep learning (DL) techniques applied to hand vein biometrics, covering finger vein (FV), palm vein (PV), and dorsal hand vein (DHV) recognition.
The review begins by providing an overview of the fundamentals of hand vein biometrics, including the vascular network of the hand, the architecture of hand vein recognition systems, and the key steps involved (image acquisition, preprocessing, feature extraction, and matching).
The review then delves into the datasets and evaluation metrics used in DL-based hand vein recognition research. It analyzes the most commonly used public datasets for FV, PV, and DHV, highlighting their composition, diversity, and relevance to the task. Additionally, it discusses the various performance metrics employed to assess the effectiveness of DL models, including false acceptance rate (FAR), false rejection rate (FRR), equal error rate (EER), genuine acceptance rate (GAR), and presentation attack detection metrics.
The core of the review focuses on the DL-based approaches proposed for FV, PV, DHV, and multimodal vein recognition. It examines the key contributions, breakthroughs, and challenges encountered in applying DL techniques to each modality. The review covers preprocessing, feature extraction, classification, presentation attack detection, and template protection, providing insights into the best-performing models, effective data augmentation techniques, and successful transfer learning methods.
Finally, the review outlines the current research challenges and future directions in the field of DL-based hand vein biometrics. It highlights areas requiring further investigation, such as addressing limited dataset sizes, improving generalization, and enhancing the security and robustness of vein-based recognition systems.
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by Mustapha Hem... о arxiv.org 09-12-2024
https://arxiv.org/pdf/2409.07128.pdfГлибші Запити