Tamper detection and localization for categorical data using fragile watermarks

K. Rajanala, Huiping Guo, Chengyu Sun
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引用次数: 121

Abstract

Today, database relations are widely used and distributed over the Internet. Since these data can be easily tampered with, it is critical to ensure the integrity of these data. In this paper, we propose to make use of fragile watermarks to detect and localize malicious alterations made to a database relation with categorical attributes. Unlike other watermarking schemes which inevitably introduce distortions to the cover data, the proposed scheme is distortion free. In our algorithm, all tuples in a database relation are first securely divided into groups according to some secure parameters. Watermarks are embedded and verified in each group independently. Thus, any modifications can be localized to some specific groups. Theoretical analysis shows that the probability of missing detection is very low.
基于脆弱水印的分类数据篡改检测与定位
今天,数据库关系在Internet上得到了广泛的应用和分布。由于这些数据很容易被篡改,因此确保这些数据的完整性至关重要。在本文中,我们提出利用脆弱水印来检测和定位对具有分类属性的数据库关系所做的恶意更改。与其他不可避免地对覆盖数据引入失真的水印方案不同,该方案是无失真的。在我们的算法中,首先根据一些安全参数将数据库关系中的所有元组安全地划分为组。水印在每一组中独立嵌入和验证。因此,任何修改都可以定位到某些特定的组。理论分析表明,缺失检测的概率很低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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