Journal of Information Security

Volume 8, Issue 3 (July 2017)

ISSN Print: 2153-1234   ISSN Online: 2153-1242

Google-based Impact Factor: 3.79  Citations  

A Survey on Different Feature Extraction and Classification Techniques Used in Image Steganalysis

HTML  XML Download Download as PDF (Size: 524KB)  PP. 186-202  
DOI: 10.4236/jis.2017.83013    2,032 Downloads   4,892 Views  Citations

ABSTRACT

Steganography is the process of hiding data into public digital medium for secret communication. The image in which the secret data is hidden is termed as stego image. The detection of hidden embedded data in the image is the foundation for blind image steganalysis. The appropriate selection of cover file type and composition contribute to the successful embedding. A large number of steganalysis techniques are available for the detection of steganography in the image. The performance of the steganalysis technique depends on the ability to extract the discriminative features for the identification of statistical changes in the image due to the embedded data. The issue encountered in the blind image steganography is the non-availability of knowledge about the applied steganography techniques in the images. This paper surveys various steganalysis methods, different filtering based preprocessing methods, feature extraction methods, and machine learning based classification methods, for the proper identification of steganography in the image.

Share and Cite:

Babu, J. , Rangu, S. and Manogna, P. (2017) A Survey on Different Feature Extraction and Classification Techniques Used in Image Steganalysis. Journal of Information Security, 8, 186-202. doi: 10.4236/jis.2017.83013.

Cited by

[1] StegIm: Image in Image Steganography
ICT Innovations 2022 …, 2023
[2] AI-based pipeline for classifying pediatric medulloblastoma using histopathological and textural images
Life, 2022
[3] A steganalysis classification algorithm based on distinctive texture features
Symmetry, 2022
[4] MixNet: a robust mixture of convolutional neural networks as feature extractors to detect stego images created by content-adaptive steganography
Neural Processing …, 2022
[5] Security test using StegoExpose on hybrid deep learning model for reversible image steganography
… , Ilishan-Remo, Ogun …, 2022
[6] StegYou: model for hiding, retrieving and detecting digital data in images
Proceedings of the …, 2022
[7] An efficient data hiding technique in image using binary Hamming code along with particle swarm optimisation
International Journal of Intelligent …, 2021
[8] Pancreatic cancer survival prediction: a survey of the state-of-the-art
Computational and Mathematical Methods in …, 2021
[9] CoMB-Deep: Composite Deep Learning-Based Pipeline for Classifying Childhood Medulloblastoma and Its Classes
2021
[10] Steganogram removal using multidirectional diffusion in fourier domain while preserving perceptual image quality
2021
[11] کاربرد یادگیری عمیق و شبکه عصبی پیچشی در نهان کاوی‎
دوفصل نامه علمی ترویجی منادی امنیت فضای تولید و …, 2021
[12] Small Embed Cross-validated JPEG Steganalysis in Spatial and Transform Domain Using SVM
2020
[13] 图像隐写分析算法研究概述
2020
[14] ANALISIS STUDI KASUS MULTIVARIAN INTENSITAS DENGAN PERBANDINGAN METODE SEGMENTASI COLOR HISTOGRAM HSV, YCBCR, L* A* B (CIELAB) …
2019
[15] Cover Processing-based Steganographic Model with Improved Security
2019
[16] Selection of JPEG steganography algorithms using a feature based model
2019
[17] Message Processing-based Steganographic Algorithm using Karhunen-Loève Transform
2019
[18] Classification of EEG Signal by Training Neural Network with Swarm Optimization for Identification of Epilepsy
2019
[19] Texture-Based Multiresolution Steganalytic Features for Spatial Image Steganography
2019
[20] Steganalysis System for Colour Steganographic Images Using Three Different Techniques
2018
[21] خوارزمية تصنيف Steganalysis تعتمد على سمات نسيج مميزة‎

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.