Exploring the Use of Steganography and Steganalysis in Forensic Investigations for Analysing Digital Evidence
Overview
Conducted research on steganography and steganalysis as part of the second phase of my graduation project. This involved a comprehensive literature review of AI-based, statistical, and signature-based techniques in image steganography and steganalysis. I also performed experimental comparisons of widely used steganography and steganalysis tools to evaluate their effectiveness.
Abstract
Image steganography and steganalysis, which involve concealing and uncovering hidden data within images, have gained significant attention in recent years, finding applications in various fields like military, medicine, e-government, and social media. Despite their importance in real-world applications, some practical aspects remain unaddressed. To bridge this gap, the current study compares image steganography and steganalysis tools and techniques for Digital Forensic Investigators (DFIs) to uncover concealed information in images. We perform a thorough review of Artificial Intelligence, statistical, and signature steganalysis methods, assesses both free and paid versions, and experiments with various image features like size, colour, mean square error (MSE), root mean square error (RMSE), and peak signal-to-noise ratio (PSNR) using a JPEG/PNG dataset. The research provides valuable insights for professionals in cybersecurity. The originality of this research resides in the fact that, although previous studies have been conducted in this area, none have explicitly examined the analysis of the selected tools—F5, Steghide, Outguess for image steganography, and Aletheia, StegExpose for image steganalysis—and their application to JPEG image analysis.
Publication
My thesis was published in the Journal of Cyber Security Technology and it could be found via the following link