CRMMJan 25, 2022

Image Fragile Watermarking Algorithm Based on Deneighborhood Mapping

arXiv:2201.10272v13 citations
Originality Incremental advance
AI Analysis

This addresses security risks in image authentication for applications like digital forensics, but it is incremental as it builds on prior mapping techniques.

The paper tackles the problem of limited recoverability in image watermarking by proposing a fragile watermarking algorithm based on deneighborhood mapping, which achieves a higher average recovery rate for tampered regions compared to existing methods.

To address the security risk caused by fixed offset mapping and the limited recoverability of random mapping used in image watermarking, we propose an image self-embedding fragile watermarking algorithm based on deneighborhood mapping. First, the image is divided into several 2*2 blocks, and authentication watermark and recovery watermark are generated based on the average value of the image blocks. Then, the denighborhood mapping is implemented as, for each image block, its mapping block is randomly selected outside it's neighborhood whose size is specified by a parameter. Finally, the authentication watermark and the recovery watermark are embedded in the image block itself and its corresponding mapping block. Theoretical analysis indicates that in the case of continuous region tampering, the proposed watermarking method can achieve better the recovery rate of the tampered image block than the method based on the random mapping. The experimental results verify the rationality and effectiveness of the theoretical analysis. Moreover, compared with the existing embedding algorithms based on random mapping, chaos mapping and Arnold mapping, in the case of continuous region tampering, the average recovery rate of the tampered region achieved by the proposed algorithm is higher.

Foundations

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

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