Performance analysis of stego image calibration with the usage of denoising autoencoders
Loading...
Date
2022-06-06
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Видавництво Львівської політехніки
Lviv Politechnic Publishing House
Lviv Politechnic Publishing House
Abstract
Methods for early detection of sensitive
information leakage by data transmission in open (public)
communication systems have been of special interest.
Reliable detection of modified (stego) cover files, like digital
images, requires usage of computation-intensive methods of
statistical steganalysis, namely covering rich models and
deep convolutional neural networks. Necessity of finetuning parameters of such methods to minimize detection
accuracy for each embedding methods has made fast retrain of stegdetectors in real cases impossible. Therefore,
development of low-complexity methods for detection of
weak alterations of cover image parameters under limited
prior information about used embedding methods has been
required. For solving this task, we have proposed to use
special architectures of artificial neural networks, such as
denoising autoencoder. Ability of such networks to estimate
parameters of original (cover) image from the noisy ones
under limited prior information about introduced alterations
has made them an attractive alternative to state-of-the-art
solutions. The results of performance evaluation for shallow
denoising autoencoders showed increasing of detection
accuracy (up to 0.1 for Matthews correlation coefficient)
in comparison with the state-of-the-art stegdetectors
by preserving low-computation complexity of network
retraining.
Description
Keywords
adaptive embedding methods, digital image steganalysis, denoising autoencoders
Citation
Progonov D. Performance analysis of stego image calibration with the usage of denoising autoencoders / Dmytro Progonov // Advances in Cyber-Physical Systems. — Lviv : Lviv Politechnic Publishing House, 2022. — Vol 7. — No 1. — P. 46–54.