A Minimum Distortion: High Capacity Watermarking Technique for Relational Data

M. L. P. Gort, C. F. Uribe, J. Nummenmaa
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引用次数: 11

Abstract

In this paper, a new multi-attribute and high capacity image-based watermarking technique for relational data is proposed. The embedding process causes low distortion into the data considering the usability restrictions defined over the marked relation. The conducted experiments show the high resilience of the proposed technique against tuple deletion and tuple addition attacks. An interesting trend of the extracted watermark is analyzed when, within certain limits, if the number of embedded marks is small, the watermark signal far from being compromised, discretely improves in the case of tuple addition attacks. According to the results, marking 13% of the attributes and under an attack of 100% of tuples addition, 96% of the watermark is extracted. Also, while previous techniques embed up to 61% of the watermark, under the same conditions, we guarantee to embed 99.96% of the marks.
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最小失真:关系数据的高容量水印技术
提出了一种基于图像的关系数据多属性高容量水印技术。考虑到在标记关系上定义的可用性限制,嵌入过程使数据失真很小。实验结果表明,该技术对元组删除和元组添加攻击具有很高的弹性。分析了提取的水印的一个有趣趋势,即在一定范围内,如果嵌入的水印数量较少,在元组加法攻击的情况下,水印信号不但没有被破坏,反而离散地得到改善。结果表明,标记13%的属性,在100%的元组添加攻击下,水印的提取率为96%。此外,虽然以前的技术嵌入高达61%的水印,在相同的条件下,我们保证嵌入99.96%的标记。
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