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This article is cited in 3 scientific papers (total in 3 papers)
IMAGE PROCESSING, PATTERN RECOGNITION
Identifying persons from iris images using neural networks for image segmentation and feature extraction
Yu. Kh. Ganeevaa, E. V. Myasnikovab a Samara National Research University
b Image Processing Systems Institute of the RAS - Branch of the FSRC "Crystallography and Photonics" RAS, Samara, Russia, Samara
Abstract:
The problem of personal identification plays an important role in information security. In recent years, biometric methods of personal identification have become most relevant and promis-ing. The article presents a study of a method for identifying a person from iris images using a neural network approach at the stages of segmentation and a feature representation from the data. A description of a dataset used to implement the segmentation stage using convolutional neural networks is presented and access to the segmentation masks of the entire dataset is provided. A method is proposed for extracting a feature representation of the data using pretrained convolutional neural networks to solve a problem of iris classification. A comparative analysis of methods for extracting iris features, including classical approaches and a neural network approach, has been carried out. A comparative analysis of classification methods is carried out, including classical machine learning algorithms, namely, support vector machines, random forest, and a k-nearest neighbors method. The results of experimental studies have shown the high quality of the classification based on the proposed approach.
Keywords:
iris, identification, convolutional neural networks, image segmentation, recognition
Received: 10.08.2021 Accepted: 18.11.2021
Citation:
Yu. Kh. Ganeeva, E. V. Myasnikov, “Identifying persons from iris images using neural networks for image segmentation and feature extraction”, Computer Optics, 46:2 (2022), 308–316
Linking options:
https://www.mathnet.ru/eng/co1019 https://www.mathnet.ru/eng/co/v46/i2/p308
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