350 rub
Journal Achievements of Modern Radioelectronics №6 for 2018 г.
Article in number:
Usage of digital camera identification algorithm for different image parameters
Type of article: scientific article
UDC: 004.932.2
Authors:

Е.А. Aminova – Post-graduate Student, P.G. Demidov Yaroslavl State University

E-mail: lena@piclab.ru

I.N. Trapeznikov – Ph.D. (Eng.), P.G. Demidov Yaroslavl State University

E-mail: trapeznikoff@list.ru

А.L. Priorov – Dr.Sc. (Eng.), Associate Professor, P.G. Demidov Yaroslavl State University E-mail: andcat@yandex.ru

Yu.A. Bryukhanov – Dr.Sc (Eng.), Professor, P.G. Demidov Yaroslavl State University E-mail: bruhanov@uniyar.ac.ru

Abstract:

In modern systems of pattern recognition and CCTV, the problem of information authenticity, which is arrived at the input of such systems, is topical. In this article, an algorithm is proposed to solve this task of increasing the reliability of obtaining a digital image from the proposed device, based on the unique structural imperfections of digital device.

In this paper, the quality of the algorithm depending on the parameters of the digital images was analyzed. All tests were carried out on the original digital image database. The results of the work can be integrated into various image and video processing systems.

Pages: 3-11
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Date of receipt: 23 апреля 2018 г.