一种有效的基于像素值排序的可逆数据隐藏方法

Nguyen Kim Sao, Nguyen Ngoc Hoa, Pham Van At
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引用次数: 3

摘要

本文提出了一种新的有效的基于像素值排序的可逆数据隐藏方法(iGePVO-K),该方法是对最近被认为是嵌入容量最高的pvo - k方法的改进。与geepvo - k法相比,iGePVO-K法具有以下优点:首先,通过合理使用数据嵌入公式和减小地形图尺寸,新方法的嵌入容量高于GePVO-K方法;其次,对于嵌入数据,在新方法中,每个像素值最多修改一次,而在GePVO-K方法中,每个像素值最多修改两次。实际上,在GePVO-K方法中,对于嵌入第1位,最大像素被修改2个,对于嵌入第0位,被修改1个。对于最小的像素也是如此。同时,在该方法中,嵌入第1位时,最大像素被修改1,嵌入第0位时,最大像素不变。因此,该方法的隐写图像质量优于GePVO-K方法。理论分析和实验结果表明,该方法比GePVO-K方法具有更高的嵌入容量和更好的隐进图像质量。
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AN EFFECTIVE REVERSIBLE DATA HIDING METHOD BASED ON PIXEL-VALUE-ORDERING
This paper presents a new effective reversible data hiding method based on pixel-valueordering (iGePVO-K) which is improvement of a recent GePVO-K method that recently is considered as a PVO-used method having highest embedding capacity. In comparison with GePVO-K method, iGePVO-K has the following advantages. First, the embedding capacity of the new method is higher than that of GePVO-K method by using data embedding formulas reasonably and reducing the location map size. Second, for embedding data, in the new method, each pixel value is modified at most by one, while in GePVO-K method, each pixel value may be modified by two. In fact, in the GePVO-K method, the largest pixels are modified by two for embedding bits 1 and by one for bits 0. This is also true for the smallest pixels. Meanwhile, in the proposed method, the largest pixels are modified by one for embedding bits 1 and are unchanged if embedding bits 0. Therefore, the stego-image quality in proposed method is better than that in GePVO-K method. Theoretical analysis and experiment results show that the proposed method has higher embedding capacity and better stego image quality than GePVO-K method.
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