Artificial Intelligence-Based Digital Image Steganalysis

Recently, deep learning-based models are being extensively utilized for steganalysis. However, deep learning models suffer from overfitting and hyperparameter tuning issues. Therefore, in this paper, an efficient θ-nondominated sorting genetic algorithm- (θ NSGA-) III based densely connected convolu...

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Main Authors: Ahmed I. Iskanderani, Ibrahim M. Mehedi, Abdulah Jeza Aljohani, Mohammad Shorfuzzaman, Farzana Akther, Thangam Palaniswamy, Shaikh Abdul Latif, Abdul Latif
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/9923389
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spelling doaj-9bf3a8edc6d445f19a65f294872a31422021-05-03T00:00:12ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/9923389Artificial Intelligence-Based Digital Image SteganalysisAhmed I. Iskanderani0Ibrahim M. Mehedi1Abdulah Jeza Aljohani2Mohammad Shorfuzzaman3Farzana Akther4Thangam Palaniswamy5Shaikh Abdul Latif6Abdul Latif7Department of Electrical and Computer Engineering (ECE)Department of Electrical and Computer Engineering (ECE)Department of Electrical and Computer Engineering (ECE)Department of Computer ScienceAarhus BSSDepartment of Electrical and Computer Engineering (ECE)Department of Nuclear EngineeringDepartment of MathematicsRecently, deep learning-based models are being extensively utilized for steganalysis. However, deep learning models suffer from overfitting and hyperparameter tuning issues. Therefore, in this paper, an efficient θ-nondominated sorting genetic algorithm- (θ NSGA-) III based densely connected convolutional neural network (DCNN) model is proposed for image steganalysis. θ NSGA-III is utilized to tune the initial parameters of DCNN model. It can control the accuracy and f-measure of the DCNN model by utilizing them as the multiobjective fitness function. Extensive experiments are drawn on STEGRT1 dataset. Comparison of the proposed model is also drawn with the competitive steganalysis model. Performance analyses reveal that the proposed model outperforms the existing steganalysis models in terms of various performance metrics.http://dx.doi.org/10.1155/2021/9923389
collection DOAJ
language English
format Article
sources DOAJ
author Ahmed I. Iskanderani
Ibrahim M. Mehedi
Abdulah Jeza Aljohani
Mohammad Shorfuzzaman
Farzana Akther
Thangam Palaniswamy
Shaikh Abdul Latif
Abdul Latif
spellingShingle Ahmed I. Iskanderani
Ibrahim M. Mehedi
Abdulah Jeza Aljohani
Mohammad Shorfuzzaman
Farzana Akther
Thangam Palaniswamy
Shaikh Abdul Latif
Abdul Latif
Artificial Intelligence-Based Digital Image Steganalysis
Security and Communication Networks
author_facet Ahmed I. Iskanderani
Ibrahim M. Mehedi
Abdulah Jeza Aljohani
Mohammad Shorfuzzaman
Farzana Akther
Thangam Palaniswamy
Shaikh Abdul Latif
Abdul Latif
author_sort Ahmed I. Iskanderani
title Artificial Intelligence-Based Digital Image Steganalysis
title_short Artificial Intelligence-Based Digital Image Steganalysis
title_full Artificial Intelligence-Based Digital Image Steganalysis
title_fullStr Artificial Intelligence-Based Digital Image Steganalysis
title_full_unstemmed Artificial Intelligence-Based Digital Image Steganalysis
title_sort artificial intelligence-based digital image steganalysis
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description Recently, deep learning-based models are being extensively utilized for steganalysis. However, deep learning models suffer from overfitting and hyperparameter tuning issues. Therefore, in this paper, an efficient θ-nondominated sorting genetic algorithm- (θ NSGA-) III based densely connected convolutional neural network (DCNN) model is proposed for image steganalysis. θ NSGA-III is utilized to tune the initial parameters of DCNN model. It can control the accuracy and f-measure of the DCNN model by utilizing them as the multiobjective fitness function. Extensive experiments are drawn on STEGRT1 dataset. Comparison of the proposed model is also drawn with the competitive steganalysis model. Performance analyses reveal that the proposed model outperforms the existing steganalysis models in terms of various performance metrics.
url http://dx.doi.org/10.1155/2021/9923389
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