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LID-Fingerprint: A Local Intrinsic Dimensionality-Based Fingerprinting Method

机译:盖子指纹:基于局部内在维度的指纹方法

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One of the most important information hiding techniques is fingerprinting, which aims to generate new representations for data that are significantly more compact than the original. Fingerprinting is a promising technique for secure and efficient similarity search for multimedia data on the cloud. In this paper, we propose LID-Fingerprint, a simple binary fingerprinting technique for high-dimensional data. The binary fingerprints are derived from sparse representations of the data objects, which are generated using a feature selection criterion, Support-Weighted Intrinsic Dimensionality (support-weighted ID), within a similarity graph construction method, NNWID-Descent. The sparsification process employed by LID-Fingerprint significantly reduces the information content of the data, thus ensuring data suppression and data masking. Experimental results show that LID-Fingerprint is able to generate compact binary fingerprints while allowing a reasonable level of search accuracy.
机译:其中一个最重要的信息隐藏技术是指纹识别,旨在为数据产生比原件更紧凑的数据产生新的表示。指纹识别是一种有希望的技术,用于安全和高效地搜索云上的多媒体数据。在本文中,我们提出了盖子指纹,是高维数据的简单二进制指纹识别技术。二进制指纹来自数据对象的稀疏表示,这些对象是使用特征选择标准生成的,在相似性图形构造方法中,使用特征选择标准,支持加权的内联维度(支持加权ID),NNWID-DESCLING。盖指纹采用的稀疏过程显着降低了数据的信息内容,从而确保了数据抑制和数据掩蔽。实验结果表明,盖指纹能够产生紧凑的二进制指纹,同时允许合理的搜索精度水平。

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