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ASSESSING THE ROBUSTNESS OF FACIAL CLASSIFICATION METHODS IN THE BIOMETRIC IDENTIFICATION AREA

Marek Hütter, Věra Holubová, Radomír Ščurek, Jaroslav Lukastik

First published: 2025-08-15https://doi.org/10.5593/sgem2025/2.1/s07.01View metrics

Abstract

This article focuses on the effectiveness and robustness of facial classification systems in the field of biometric identification. Artificial intelligence is increasingly becoming a part of everyday life, with more and more users employing it across various domains. In the field of security, AI is used, for instance, in cybersecurity and risk analysis. It is also integrated into surveillance systems, particularly for facial recognition. A comparative analysis of three convolutional neural networks-GoogLeNet, ResNet-101, and DenseNet-201-was conducted in this study using the MATLAB simulation environment. These CNNs were pre-trained and subsequently tested from several perspectives, including performance, training time, and validation accuracy. The collected data served as a basis for comparing the networks with one another and were also used for further analysis of training and output evaluation. The results can form the basis for further research and can be compared with a possible study in which real photographs with higher noise were used. The results can also be applied to enhance electronic security systems, such as access control for mines and geologically significant sites.

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Publication details

Title
ASSESSING THE ROBUSTNESS OF FACIAL CLASSIFICATION METHODS IN THE BIOMETRIC IDENTIFICATION AREA
Authors
Marek Hütter, Věra Holubová, Radomír Ščurek, Jaroslav Lukastik
Proceedings
25th International Multidisciplinary Scientific GeoConference Proceedings SGEM 2025, Geoinformatics, Remote Sensing, and Artificial Intelligence (AI), Vol 25, Issue 2.1
Publisher
STEF92 Technology
Year
2025
Pages
3-12
SWS Citekey
Hutter20257312
ISSN
1314-2704; 13142704
ISBN
9786197603897
Language
en
Publication type
Conference Paper
Proceedings contents
Open official contents
Keywords
References3
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  2. Taskiran, M., Kahraman, N., & Erdem, C. E. (2020). Face recognition: Past, present and future (a review). Digital Signal Processing. Retrieved January 13, 2023, from DOI: 10.1016/j.dsp.2020.102809

  3. Pazderka, R. (2021). Introduction to Convolutional Neural Networks. Neuronov� s�te CZ. Retrieved January 15, 2023, from https://neuronove.site/video-1-page DOI: 10.1002/9781394171910.ch1

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