DocumentCode
3851553
Title
Ensemble Classifiers for Steganalysis of Digital Media
Author
Jan Kodovsky;Jessica Fridrich;Vojtěch Holub
Author_Institution
Department of Electrical and Computer Engineering, Binghamton University, NY, USA
Volume
7
Issue
2
fYear
2012
Firstpage
432
Lastpage
444
Abstract
Today, the most accurate steganalysis methods for digital media are built as supervised classifiers on feature vectors extracted from the media. The tool of choice for the machine learning seems to be the support vector machine (SVM). In this paper, we propose an alternative and well-known machine learning tool-ensemble classifiers implemented as random forests-and argue that they are ideally suited for steganalysis. Ensemble classifiers scale much more favorably w.r.t. the number of training examples and the feature dimensionality with performance comparable to the much more complex SVMs. The significantly lower training complexity opens up the possibility for the steganalyst to work with rich (high-dimensional) cover models and train on larger training sets-two key elements that appear necessary to reliably detect modern steganographic algorithms. Ensemble classification is portrayed here as a powerful developer tool that allows fast construction of steganography detectors with markedly improved detection accuracy across a wide range of embedding methods. The power of the proposed framework is demonstrated on three steganographic methods that hide messages in JPEG images.
Keywords
"Training","Testing","Feature extraction","Complexity theory","Machine learning","Accuracy","Vectors"
Journal_Title
IEEE Transactions on Information Forensics and Security
Publisher
ieee
ISSN
1556-6013
Type
jour
DOI
10.1109/TIFS.2011.2175919
Filename
6081929
Link To Document