Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10341585 | Digital Investigation | 2005 | 21 Pages |
Abstract
This paper describes and demonstrates a blind classification algorithm that uses hyper-dimensional geometric methods to model steganography-free jpeg images. The geometric model, comprising one or more convex polytopes, hyper-spheres, or hyper-ellipsoids in the attribute space, provides superior anomaly detection compared to previous research. Experimental results show that the classifier detects, on average, 85.4% of Jsteg steganography images with a mean embedding rate of 0.14 bits per pixel, compared to previous research that achieved a mean detection rate of just 65%. Further, the classification algorithm creates models for as many training classes of data as are available, resulting in a hybrid anomaly/signature or signature-only based classifier, which increases Jsteg detection accuracy to 95%.
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Physical Sciences and Engineering
Computer Science
Computer Networks and Communications
Authors
Brent T. McBride, Gilbert L. Peterson, Steven C. Gustafson,