Human Identification Model Considering Biometrics Features

  • Muna Abdul Hussain Radhi Computer Science Department, Collage of Science, Mustansiriyah University, Baghdad,Iraq
Keywords: Feature Extraction, Classification, Hidden biometrics, MRI, Brain print, LDA

Abstract

In the medical field, brain classification is an effective technique for identifying a person through his brain print based on the hidden biometrics of high specificity included in the magnetic resonance images(MRI) of the brain, as this privacy strongly contributes to the issue of verification and identification of the person. In this paper, the brain print is extracted from the MRI obtained from 50 healthy people, which were passed through several pre-processing techniques in order to be used in the classification stage through convolutional neural network model, among those pre-classification stages, data collection after extracting the influential features for each image, which was based on linear discrimination analysis (LDA). The experimental results showed the importance of using LDA for feature extraction and adoption as input for K-NN and CNN classifiers. The classifiers proved successful in the classification if the features extracted with the help of LDA were adopted. Where CNN had the ability to classify with an accuracy of 99%, 82% for K-NN. The final stage in identifying a person through a brain fingerprint relied mainly on the model's success in classifying and predicting the remaining data in the testing stage.

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Published
2022-08-26
How to Cite
Radhi, M. A. H. (2022). Human Identification Model Considering Biometrics Features. Journal La Multiapp, 3(4), 198-206. https://doi.org/10.37899/journallamultiapp.v3i4.692