Sciweavers

TIFS
2016

Content-Adaptive Steganography by Minimizing Statistical Detectability

8 years 8 months ago
Content-Adaptive Steganography by Minimizing Statistical Detectability
Abstract—Most current steganographic schemes embed the secret payload by minimizing a heuristically defined distortion. Similarly, their security is evaluated empirically using classifiers equipped with rich image models. In this paper, we pursue an alternative approach based on a locally-estimated multivariate Gaussian cover image model that is sufficiently simple to derive a closed-form expression for the power of the most powerful detector of content-adaptive LSB matching but, at the same time, complex enough to capture the non-stationary character of natural images. We show that when the cover model estimator is properly chosen, state-of-the-art performance can be obtained. The closed-form expression for detectability within the chosen model is used to obtain new fundamental insight regarding the performance limits of empirical steganalysis detectors built as classifiers. In particular, we consider a novel detectability-limited sender and estimate the secure payload of individ...
Vahid Sedighi, Rémi Cogranne, Jessica J. Fr
Added 11 Apr 2016
Updated 11 Apr 2016
Type Journal
Year 2016
Where TIFS
Authors Vahid Sedighi, Rémi Cogranne, Jessica J. Fridrich
Comments (0)