Modelling of face recognitions systems using mnemonic description of the model

  • Дмитрий Викторович Иванько ITMO, St. Petersburg, Russia
Keywords: face recognition, automatic face recognition systems, biometrics, mnemonic description, modeling of face recognition system

Abstract

This paper belongs to area of automatic face recognition systems for biometrics tasks. And it represents a new way of modeling with the use of mnemonic description of the model in face recognition systems. This way of modeling allows more quickly, precisely and simply to create face recognition system for experiments. In addition mnemonic description allows to exchange results of work more precisely. And it also promotes faster training and carrying out experiments as doesn’t demand studying of additional programming languages. Mnemonic description can be useful as to the beginning researchers, experts and also employees from related fields of knowledge. The results of modeling of the most known face recognition system are presented in the work, such as: 1DPCA, 2DPCA and Fisherfaces (LDA) with the public bases use of persons images: «AT & T-ORL», «The Extended Yale Face Database B» and «The Yale Database A».

Author Biography

Дмитрий Викторович Иванько, ITMO, St. Petersburg, Russia

Dmitry V. Ivanko  

References

[1] P. Grother and M. Ngan, “Face recognition vendor test (FRVT): Performance of face identification algorithms,” In NIST Interagency Report 8009, 2014
[2] G. A. Kukharev and N. L. Shchegoleva, Sistemy raspoznavaniya izobrazheniya cheloveka po izobrazheniyu litsa [Human image recognition systems for facial], St. Petersburg, Russia: SPbGETU “LETI”, 2006 (in Russian).
[3] Informatsionnoe obespechenie tekhniki i operatorskoi deyatel'nosti. Yazyk operatorskoi deyatel'nosti. Obshchie polozheniya [Information support equipment and operator activity. Language of operator activity. General provisions], GOST 43.2.1-07, 2007 (in Russian).
[4] Nadezhnost' v tekhnike. Analiz vidov, posledstvii i kritichnosti otkazov. Osnovnye polozheniya [The reliability of the technique. Analysis of the types, effects and criticality of failures. The main provisions], GOST 27.310-95, 1995 (in Russian).
[5] Safety aspects ‒ Guidelines for child safety in standards and other specifications, ISO/IEC: 50, 2014.
[6] F. Samaria and A. Harter, “Parameterisation of a Stochastic Model for Human” In Proc. of 2nd IEEE Workshop on Applications of Computer Vision, Sarasota, FL, Dec. 1994; doi: 10.1109/ACV.1994.341300
[7] A. Georghiades, P. Belhumeur, and D. Kriegman. “From few to many: Illumination cone models for face recognition under variable lighting and pose,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 23, no. 6, pp. 643-660, 2001; doi: 10.1109/34.927464
[8] P. N. Belhumeur J. P. Hespanha and D. J. Kriegman, “Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 19, no. 7, pp. 711–720, 1997; doi: 10.1109/34.598228
[9] M. Turk and A. Pentland, “Eigenfaces for Recognition,” Journal of Cognitive Neuroscience, vol. 3, no. 1, pp. 71‒86, 1991; doi:10.1162/jocn.1991.3.1.71
[10] G. A. Kukharev, Biometricheskie sistemy: metody i sredstva identifikatsii lichnosti cheloveka [Biometric systems: methods and tools for the identification of a person's identity], St. Petersburg, Russia: Politehnika, 2001 (In Russian).
[11] R. A. Fisher, "The Use of Multiple Measures in Taxonomic Problems," Ann. Eugenics, vol. 7, pp. 179-188, 1936; doi: 10.1111/j.1469-1809.1936.tb02137.x
Published
2017-06-03
How to Cite
Иванько, Д. В. (2017). Modelling of face recognitions systems using mnemonic description of the model. Computer Tools in Education, (1), 17-23. Retrieved from http://cte.eltech.ru/ojs/index.php/kio/article/view/1386
Section
Informational systems