Efficient reversible data hiding via two layers of double-peak embedding

Fuhu Wu, Jian Sun, Shun Zhang, Zhili Chen
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引用次数: 1

Abstract

Reversible data hiding continues to attract significant attention in recent years. In particular, an increasing number of authors focus on the higher significant bit (HSB) plane of an image which can yield more redundant space. On the other hand, the lower significant bit planes are often ignored for embedding in existing schemes due to their harm to the embedding rate. This paper proposes an efficient reversible data hiding scheme via a double-peak two-layer embedding (DTLE) strategy with prediction error expansion. The higher six-bit planes of the image are assigned as the HSB plane, and double prediction error peaks are applied in either embedding layer. This makes fuller use of the redundancy space of images compared with the one error peak strategy. Moreover, we carry out the median-edge detector pre-processing for complex images to reduce the size of the auxiliary information. A series of experimental results show that our DTLE approach achieves up to 83% higher embedding rate on real-world datasets while guaranteeing better image quality.
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通过两层双峰嵌入实现有效的可逆数据隐藏
近年来,可逆数据隐藏一直备受关注。特别是,越来越多的作者关注图像的高有效位(HSB)平面,它可以产生更多的冗余空间。另一方面,由于低有效位平面对嵌入率的影响,现有方案往往忽略低有效位平面进行嵌入。本文提出了一种有效的可逆数据隐藏方案,该方案采用双峰两层嵌入(DTLE)的预测误差扩展策略。将图像较高的6位平面指定为HSB平面,并在每个嵌入层中应用双预测误差峰。与单误差峰值策略相比,这使得图像的冗余空间得到了更充分的利用。此外,我们对复杂图像进行了中值边缘检测预处理,减少了辅助信息的大小。一系列实验结果表明,我们的DTLE方法在保证图像质量的同时,在真实数据集上的嵌入率提高了83%。
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