在多维加密空间中集成多模态云特性

Bin Ye, G. Howells
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引用次数: 0

摘要

在模式识别系统中,从给定云计算服务器的特征中提取多模态特征进行组合是一个非常困难的问题。本文提出了一种新的、有效的技术,用于对本质上具有高度多模态的特征集进行归一化,从而使它们能够从多维特征分布空间中被合并。该意图系统识别每个分布的模式,并用于消除特征数据之间的任何可能的相关性,以允许在加密密钥生成系统中使用。
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Integrating Multi-modal Cloud Features within a Multi-dimensional Encryption Space
The problem of combining multi-modal features which extract from characteristics of given Cloud Computing Servers in the pattern recognition system is well known difficult. This paper addresses a novel efficient technique for normalizing sets of features which are highly multi-modal in nature, so as to allow them to be incorporated from a multi-dimensional feature distribution space. The intend system identify the modes of each distribution and for removing any possible correlation between the feature data to allow to be used in an encryption key generation system.
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