CRLGDec 21, 2023

Secure Information Embedding in Images with Hybrid Firefly Algorithm

arXiv:2312.13519v19 citationsh-index: 6Neural computing & applications (Print)
Originality Incremental advance
AI Analysis

This work addresses the need for secure, high-capacity steganography for sensitive information transmission, representing an incremental improvement over existing methods.

The paper tackles the problem of low capacity and high distortion in steganography by introducing a novel approach using a Hybrid Firefly Algorithm to embed confidential PDF documents in images, resulting in decreased distortion, accelerated convergence, and robustness against steganalytic attacks.

Various methods have been proposed to secure access to sensitive information over time, such as the many cryptographic methods in use to facilitate secure communications on the internet. But other methods like steganography have been overlooked which may be more suitable in cases where the act of transmission of sensitive information itself should remain a secret. Multiple techniques that are commonly discussed for such scenarios suffer from low capacity and high distortion in the output signal. This research introduces a novel steganographic approach for concealing a confidential portable document format (PDF) document within a host image by employing the Hybrid Firefly algorithm (HFA) proposed to select the pixel arrangement. This algorithm combines two widely used optimization algorithms to improve their performance. The suggested methodology utilizes the HFA algorithm to conduct a search for optimal pixel placements in the spatial domain. The purpose of this search is to accomplish two main goals: increasing the host image's capacity and reducing distortion. Moreover, the proposed approach intends to reduce the time required for the embedding procedure. The findings indicate a decrease in image distortion and an accelerated rate of convergence in the search process. The resultant embeddings exhibit robustness against steganalytic assaults, hence rendering the identification of the embedded data a formidable undertaking.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes