Evolving GA Classifier for Breaking the Steganographic Utilities: Stools, Steganos and Jsteg

Differentiating anomalous image documents (stego image) from pure image file (cover image) is difficult and tedious. Steganalytic techniques strive to detect whether an image contains a hidden message or not. This paper presents a genetic algorithm (GA) based approach to image steganalysis. The basic idea is that, the various image quality metrics calculated on cover image files and on stego-image files vis-a-vis their denoised versions, are statistically different. GA is employed to derive a set of classification rules from image data using these image quality metrics and the support-confidence framework is utilized as fitness function to judge the quality of each rule. The generated rules are then used to detect or classify the image documents in a real-time environment. Unlike most existing GA-based approaches, because of the simple representation of rules and the effective fitness function, the proposed method is easier to implement while providing the flexibility to generally detect any new steganography technique. The implementation of the GA based image steganalyzer relies on the choice of these image quality metrics and the construction of a two-class classifier, which will discriminate between the adulterated and the untouched image samples. Experimental results show that the proposed technique provides promising detection rates.

[1]  D. Donoho,et al.  Translation-Invariant De-Noising , 1995 .

[2]  D. Donoho,et al.  Translation-Invariant DeNoising , 1995 .

[3]  M. Davies,et al.  A HYBRID APPROACH TO MUSICAL NOTE ONSET DETECTION , 2002 .

[4]  Nasir D. Memon,et al.  Steganalysis using image quality metrics , 2003, IEEE Trans. Image Process..

[5]  Anssi Klapuri,et al.  Sound onset detection by applying psychoacoustic knowledge , 1999, 1999 IEEE International Conference on Acoustics, Speech, and Signal Processing. Proceedings. ICASSP99 (Cat. No.99CH36258).

[6]  Jessica J. Fridrich,et al.  Reliable detection of LSB steganography in color and grayscale images , 2001, MM&Sec '01.

[7]  Walter Bender,et al.  Techniques for data hiding , 1995, Electronic Imaging.

[8]  Wen Gao,et al.  Neural network based steganalysis in still images , 2003, ICME.

[9]  Preeti Rao,et al.  TANSEN: A QUERY-BY-HUMMING BASED MUSIC RETRIEVAL SYSTEM , 2003 .

[10]  Pradeep Kumar,et al.  Sung Note Segmentation for a Query-by-Humming System , 2007 .

[11]  Sushil Jajodia,et al.  Steganalysis of Images Created Using Current Steganography Software , 1998, Information Hiding.

[12]  A. Kannan,et al.  Audio Steganalysis using Ensemble of Autonomous Multi-Agent and Support Vector Machine Paradigm , 2005, 2005 3rd International Conference on Intelligent Sensing and Information Processing.

[13]  Josef Kittler,et al.  Floating search methods in feature selection , 1994, Pattern Recognit. Lett..

[14]  C. Espy-Wilson Acoustic measures for linguistic features distinguishing the semivowels /w j r l/ in American English , 1992 .

[15]  Brian Christopher Smith,et al.  Query by humming: musical information retrieval in an audio database , 1995, MULTIMEDIA '95.