Hierarchical Watermarking Framework Based on Analysis of Local Complexity Variations
Majid Mohrekesh, Shekoofeh Azizi, Shahram Shirani, Nader Karimi, and, Shadrokh Samavi

TL;DR
This paper introduces a hierarchical adaptive watermarking framework that analyzes local image complexity variations to improve watermark robustness and transparency, effectively balancing imperceptibility and capacity.
Contribution
It proposes a novel two-level hierarchy that adapts watermark embedding based on local complexity, enhancing performance over traditional methods.
Findings
Improved robustness against attacks.
Higher transparency with reduced blockiness.
Enhanced embedding capacity without sacrificing imperceptibility.
Abstract
Increasing production and exchange of multimedia content has increased the need for better protection of copyright by means of watermarking. Different methods have been proposed to satisfy the tradeoff between imperceptibility and robustness as two important characteristics in watermarking while maintaining proper data-embedding capacity. Many watermarking methods use image independent set of parameters. Different images possess different potentials for robust and transparent hosting of watermark data. To overcome this deficiency, in this paper we have proposed a new hierarchical adaptive watermarking framework. At the higher level of hierarchy, complexity of an image is ranked in comparison with complexities of images of a dataset. For a typical dataset of images, the statistical distribution of block complexities is found. At the lower level of the hierarchy, for a single cover image…
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