Finger Vein Recognition Using a Shallow Convolutional Neural Network

  • Liu, Jiazhen
  • Chen, Ziyan
  • Zhao, Kaiyang
  • Wang, Minjie
  • Hu, Zhen
  • ... Kim, Hakil
  • 외 5명
Citations

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7
Citations

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8

초록

Deep learning-based finger vein recognition (FVR) can be classified as either a closed-set architecture (CS-architecture) or an open-set architecture (OS-architecture) based on the system output. The CS-architecture has limited practicality due to its closure, and the OS-architecture has limited generalization ability due to its challenging convergence. To improve the practicality and performance of deep learning-based FVR, we hypothesize that a shallow convolutional neural network is suitable for FVR based on the observation of the difference between face recognition and FVR. Consequently, we design a shallow network with three convolutional blocks and two fully connected layers that can be efficiently applied for both CS-architecture and OS-architecture. Moreover, an improved interval-based loss function is used to extract discriminative large-margin features. The proposed network has excellent performance, verified by extensive experiments on publicly available databases.

키워드

Additive margin lossClosed-setFinger vein recognitionOpen-set and shallow convolutional neural network
제목
Finger Vein Recognition Using a Shallow Convolutional Neural Network
저자
Liu, JiazhenChen, ZiyanZhao, KaiyangWang, MinjieHu, ZhenWei, XinweiZhu, YichengYu, YuncongFeng, ZheKim, HakilJin, Changlong
DOI
10.1007/978-3-030-86608-2_22
발행일
2021
유형
Proceedings Paper
저널명
Lecture Notes in Computer Science
12878
페이지
195 ~ 202