DocumentCode
1513046
Title
Rich Models for Steganalysis of Digital Images
Author
Fridrich, Jessica ; Kodovský, Jan
Author_Institution
Dept. of Electr. & Comput. Eng., Binghamton Univ., Binghamton, NY, USA
Volume
7
Issue
3
fYear
2012
fDate
6/1/2012 12:00:00 AM
Firstpage
868
Lastpage
882
Abstract
We describe a novel general strategy for building steganography detectors for digital images. The process starts with assembling a rich model of the noise component as a union of many diverse submodels formed by joint distributions of neighboring samples from quantized image noise residuals obtained using linear and nonlinear high-pass filters. In contrast to previous approaches, we make the model assembly a part of the training process driven by samples drawn from the corresponding cover- and stego-sources. Ensemble classifiers are used to assemble the model as well as the final steganalyzer due to their low computational complexity and ability to efficiently work with high-dimensional feature spaces and large training sets. We demonstrate the proposed framework on three steganographic algorithms designed to hide messages in images represented in the spatial domain: HUGO, edge-adaptive algorithm by Luo , and optimally coded ternary ±1 embedding. For each algorithm, we apply a simple submodel-selection technique to increase the detection accuracy per model dimensionality and show how the detection saturates with increasing complexity of the rich model. By observing the differences between how different submodels engage in detection, an interesting interplay between the embedding and detection is revealed. Steganalysis built around rich image models combined with ensemble classifiers is a promising direction towards automatizing steganalysis for a wide spectrum of steganographic schemes.
Keywords
feature extraction; high-pass filters; image classification; image representation; learning (artificial intelligence); nonlinear filters; steganography; HUGO image; computational complexity; cover-source; digital image; edge-adaptive algorithm; ensemble classifier; high-dimensional feature space; image representation; linear high-pass filter; noise component; nonlinear high-pass filter; optimally coded ternary embedding; quantized image noise residual; rich image model; steganalysis; steganographic algorithm; steganography detector; stego-source; submodel-selection technique; training set; Computational modeling; Digital images; Image edge detection; Indexes; Noise; Quantization; Vectors; Ensemble classification; high-dimensional features; noise residuals; rich models; steganalysis;
fLanguage
English
Journal_Title
Information Forensics and Security, IEEE Transactions on
Publisher
ieee
ISSN
1556-6013
Type
jour
DOI
10.1109/TIFS.2012.2190402
Filename
6197267
Link To Document