Embedding Textual Information in Images Using Quinary Pixel Combinations
A V Uday Kiran Kandala

TL;DR
This paper introduces a new image steganography technique that embeds textual data using quinary pixel combinations in RGB space, achieving efficient encoding with minimal image distortion compared to traditional methods.
Contribution
The novel approach encodes entire symbols within single pixels using five-level pixel intensity variations, reducing computational complexity and improving embedding efficiency.
Findings
No significant image distortion observed with the new method.
Achieves higher embedding efficiency by encoding complete symbols in single pixels.
Outperforms traditional methods in computational simplicity and image quality preservation.
Abstract
This paper presents a novel technique for embedding textual data into images using quinary combinations of pixel intensities in RGB space. Existing methods predominantly rely on least and most significant bit (LSB & MSB) manipulation, Pixel Value Differencing (PVD), spatial perturbations in RGB channels, transform domain based methods, Quantization methods, Edge and Region based methods and more recently through deep learning methods and generative AI techniques for hiding textual information in spatial domain of images. Most of them are dependent on pixel intensity flipping over multiple pixels, such as LSB and combination of LSB based methodologies, and on transform coefficients, often resulting in the form of noise. Encoding and Decoding are deterministic in most of the existing approaches and are computationally heavy in case of higher models such as deep learning and gen AI…
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Taxonomy
TopicsDigital Media Forensic Detection · Advanced Steganography and Watermarking Techniques · Handwritten Text Recognition Techniques
