Abstract:Reversible data hiding (RDH) is a special class of steganography, in which the cover image can be perfectly recovered upon the extraction of the secret data. However, most image-based RDH schemes focus on improving capacity–distortion performance. In this paper, we propose a novel RDH scheme which not only effectively conceals the traces left by HS but also improves capacity–distortion performance. First, high-precision edge predictor LS-ET (Least Square predictor with Edge Type) is proposed, and the predictor… Show more
“…The paper by Shi et al [5] presents a novel reversible data hiding (RDH) scheme that introduces the LS-ET (Least Square predictor with Edge Type) to accurately predict different types of pixels based on stronger local consistency and a prediction-based histogramshifting (HS) framework to hide embedding traces in stego images.…”
In the last few decades, the relationship between mathematics and algorithms has become increasingly important and influential in computer science [...]
“…The paper by Shi et al [5] presents a novel reversible data hiding (RDH) scheme that introduces the LS-ET (Least Square predictor with Edge Type) to accurately predict different types of pixels based on stronger local consistency and a prediction-based histogramshifting (HS) framework to hide embedding traces in stego images.…”
In the last few decades, the relationship between mathematics and algorithms has become increasingly important and influential in computer science [...]
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