Information-Theoretic Bounds for Steganography in Multimedia
Hassan Y. El Arsh, Amr Abdelaziz, Ahmed Elliethy, Hussein A. Aly, T., Aaron Gulliver

TL;DR
This paper derives an analytical upper bound on the maximum embedding rate for multimedia steganography using information theory, confirming the Square Root Law and providing more precise estimates.
Contribution
It introduces an analytic method to determine the maximum embedding rate in multimedia steganography based on a constrained optimization framework and KL-divergence, improving upon previous approaches.
Findings
Maximum embedding rate aligns with the Square Root Law.
Provides an explicit formula involving the WrightOmega function.
Experimental verification confirms theoretical predictions.
Abstract
Steganography in multimedia aims to embed secret data into an innocent looking multimedia cover object. This embedding introduces some distortion to the cover object and produces a corresponding stego object. The embedding distortion is measured by a cost function that determines the detection probability of the existence of the embedded secret data. A cost function related to the maximum embedding rate is typically employed to evaluate a steganographic system. In addition, the distribution of multimedia sources follows the Gibbs distribution which is a complex statistical model that restricts analysis. Thus, previous multimedia steganographic approaches either assume a relaxed distribution or presume a proposition on the maximum embedding rate and then try to prove it is correct. Conversely, this paper introduces an analytic approach to determining the maximum embedding rate in…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Internet Traffic Analysis and Secure E-voting · Chaos-based Image/Signal Encryption
