Biometric recognition model using deep convolutional neural networks and computer vision

Authors

  • Ovalle, Christian
  • Sumire Qquenta, Daniel
  • Vilca Sucapuca, Julian Nestor
  • Sumire Qquenta, Rebeca

DOI:

https://doi.org/10.18687/LACCEI2023.1.1.492

Keywords:

Biometric recognition, neural networks, computer vision, VGG16 model, verification method

Abstract

Authentication of the person by means of unique features such as finger veins is used in various fields such as security. In this research, a verification method based on convolutional neural networks with the help of computer vision is proposed. Through experimentation, it was possible to create an artificial intelligence model that shows the measurements of loss and precision when verifying the images of a data set. Finally, it is concluded that the loss of biometric recognition, the lower the percentage, the better the model performs. For the modified VGG16 model, 40 epochs were carried out for training, while the Mobilenet was 50 epochs. Additionally, at the end of the execution, the proposed architecture finished in 13 minutes and 45 minutes.

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Published

2024-04-16

Issue

Section

Articles