MMAug 16, 2019

Adaptive Embedding Pattern for Grayscale-Invariance Reversible Data Hiding

arXiv:1908.05965v17 citations
AI Analysis

This work addresses the need for better data hiding techniques in image processing, though it is incremental as it builds on an existing grayscale-invariance approach.

The paper tackles the problem of improving embedding performance in reversible data hiding for color images while maintaining grayscale invariance, achieving significant enhancements in image fidelity compared to a previous method.

In traditional reversible data hiding (RDH) methods, researchers pay attention to enlarge the embedding capacity (EC) and to reduce the embedding distortion (ED). Recently, a completely novel RDH algorithm was developed to embed secret data into color image without changing the corresponding grayscale [1], which largely expands the applications of RDH. In [1], for color image, channel R and channel B are exploited to carry secret information, channel G is adjusted for balancing the modifications of channel R and channel B to keep the invariance of grayscale. However, we found that the embedding performance (EP) of that method is still unsatisfied and could be further enhanced. To improve the EP, an adaptive embedding pattern is introduced to enhance the competence of algorithm for selectively embedding different bits of secret data into pixels according to context information. Moreover, a novel two-level predictor is designed by uniting two normal predictors for reducing the ED for embedding more bits. Experimental results demonstrate that, compared to the previous method, our scheme could significantly enhance the image fidelity while keeping the grayscale invariant.

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