Detection of classifier inconsistencies in image steganalysis

Author

Lerch Hostalot, Daniel

Megías Jiménez, David

Other authors

Universitat Oberta de Catalunya. Internet Interdisciplinary Institute (IN3)

Publication date

2019-09-23T11:18:35Z

2019-09-23T11:18:35Z

2019-09



Abstract

In this paper, a methodology to detect inconsistencies in classification-based image steganalysis is presented. The proposed approach uses two classifiers: the usual one, trained with a set formed by cover and stego images, and a second classifier trained with the set obtained after embedding additional random messages into the original training set. When the decisions of these two classifiers are not consistent, we know that the prediction is not reliable. The number of inconsistencies in the predictions of a testing set may indicate that the classifier is not performing correctly in the testing scenario. This occurs, for example, in case of cover source mismatch, or when we are trying to detect a steganographic method that the classifier is no capable of modelling accurately. We also show how the number of inconsistencies can be used to predict the reliability of the classifier (classification errors).

Document Type

Object of conference

Language

English

Subjects and keywords

steganalysis; cover source mismatch; machine learning; estegoanálisis; aprendizaje automático; desajuste de la fuente de portada; estegoanàlisi; aprenentatge automàtic; desajustament de la font de portada; Computer security; Seguretat informàtica; Seguridad informática

Publisher

7th ACM Workshop on Information Hiding and Multimedia Security. Proceedings

Related items

7th ACM Workshop on Information Hiding and Multimedia Security. Proceedings, 2019

7th ACM Workshop on Information Hiding and Multimedia Security, Paris, França, 3-5, juliol, 2019

info:eu-repo/grantAgreement/RTI2018-095094-B-C22

info:eu-repo/grantAgreement/TIN2014-57364-C2-2-R

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