Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations
Digital image steganography is the art and science of hidden information. Currently, steganographic (stego) algorithms are rapidly evolving and reducing their artifacts. There-fore, detecting of altered cover images, i.e. steganalysis, is more challenging. Modern steganalysis is based on machine lea...
Other Authors: | |
---|---|
Format: | Others |
Language: | English English |
Published: |
Florida State University
|
Subjects: | |
Online Access: | http://purl.flvc.org/fsu/fd/FSU_migr_etd-5239 |
id |
ndltd-fsu.edu-oai-fsu.digital.flvc.org-fsu_183161 |
---|---|
record_format |
oai_dc |
spelling |
ndltd-fsu.edu-oai-fsu.digital.flvc.org-fsu_1831612020-06-16T03:07:22Z Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations Ty, Sereyvathana (authoraut) Liu, Xiuwen (professor directing thesis) Burmester, Mike (committee member) Aggarwal, Sudhir (committee member) Department of Computer Science (degree granting department) Florida State University (degree granting institution) Text text Florida State University Florida State University English eng 1 online resource computer application/pdf Digital image steganography is the art and science of hidden information. Currently, steganographic (stego) algorithms are rapidly evolving and reducing their artifacts. There-fore, detecting of altered cover images, i.e. steganalysis, is more challenging. Modern steganalysis is based on machine learning techniques that make decisions based on training information. We have found that those methods do not generally work under real-world conditions, where the training and testing image datasets are numerous. Moreover, we will show that the current methods produce unpredictable results. That is, if the methods work well under a dataset, they are not necessary work well on a different dataset. In this thesis, we show that steganalysis based on discriminative approaches cannot be in-dependently used to detect steganographic images, and we provide their limitations. Thus, we should look for alternative approaches. Additionally, we propose a generative model approach to steganalysis for detecting steganographic images among a large number of im-ages, acknowledging that most images are intact. The system consists of a series of intrinsic image formations filters (IIFFs), where filters are designed to detect non-steganographic images based on real-world constraints and intrinsic features of steganographic methods. Our approach can be used as a basis for building a robust and reliable steganalytic system. A Thesis submitted to the Department of Computer Science in partial fulfillment of the requirements for the degree of Master of Science. Spring Semester, 2012. March 26, 2012. long range correlation, steganalysis, steganography, system steganalysis Includes bibliographical references. Xiuwen Liu, Professor Directing Thesis; Mike Burmester, Committee Member; Sudhir Aggarwal, Committee Member. Computer science FSU_migr_etd-5239 http://purl.flvc.org/fsu/fd/FSU_migr_etd-5239 This Item is protected by copyright and/or related rights. You are free to use this Item in any way that is permitted by the copyright and related rights legislation that applies to your use. For other uses you need to obtain permission from the rights-holder(s). The copyright in theses and dissertations completed at Florida State University is held by the students who author them. http://diginole.lib.fsu.edu/islandora/object/fsu%3A183161/datastream/TN/view/Discriminative%20Algorithms%20for%20Large-Scale%20Image%20Steganalysis%20and%20Their%20Limitations.jpg |
collection |
NDLTD |
language |
English English |
format |
Others
|
sources |
NDLTD |
topic |
Computer science |
spellingShingle |
Computer science Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
description |
Digital image steganography is the art and science of hidden information. Currently, steganographic (stego) algorithms are rapidly evolving and reducing their artifacts. There-fore, detecting of altered cover images, i.e. steganalysis, is more challenging. Modern steganalysis is based on machine learning techniques that make decisions based on training information. We have found that those methods do not generally work under real-world conditions, where the training and testing image datasets are numerous. Moreover, we will show that the current methods produce unpredictable results. That is, if the methods work well under a dataset, they are not necessary work well on a different dataset. In this thesis, we show that steganalysis based on discriminative approaches cannot be in-dependently used to detect steganographic images, and we provide their limitations. Thus, we should look for alternative approaches. Additionally, we propose a generative model approach to steganalysis for detecting steganographic images among a large number of im-ages, acknowledging that most images are intact. The system consists of a series of intrinsic image formations filters (IIFFs), where filters are designed to detect non-steganographic images based on real-world constraints and intrinsic features of steganographic methods. Our approach can be used as a basis for building a robust and reliable steganalytic system. === A Thesis submitted to the Department of Computer Science in partial fulfillment of the requirements for the degree of Master of Science. === Spring Semester, 2012. === March 26, 2012. === long range correlation, steganalysis, steganography, system steganalysis === Includes bibliographical references. === Xiuwen Liu, Professor Directing Thesis; Mike Burmester, Committee Member; Sudhir Aggarwal, Committee Member. |
author2 |
Ty, Sereyvathana (authoraut) |
author_facet |
Ty, Sereyvathana (authoraut) |
title |
Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
title_short |
Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
title_full |
Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
title_fullStr |
Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
title_full_unstemmed |
Discriminative Algorithms for Large-Scale Image Steganalysis and Their Limitations |
title_sort |
discriminative algorithms for large-scale image steganalysis and their limitations |
publisher |
Florida State University |
url |
http://purl.flvc.org/fsu/fd/FSU_migr_etd-5239 |
_version_ |
1719319810905473024 |