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Non-linear Invertible Representation for Joint Statistical and Perceptual Feature Decorrelation

机译:联合统计和感知特征去相关的非线性可逆表示

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摘要

The aim of many image mappings is representing the signal in a basis of decorrelated features. Two fundamental aspects must be taken into account in the basis selection problem: data distribution and the qualitative meaning of the underlying space. The classical PCA techniques reduce the statistical correlation using the data distribution. However, in applications where human vision has to be taken into account, there are perceptual factors that make the feature space uneven, and additional interaction among the dimensions may arise. In this work a common framework is presented to analyse the perceptual and statistical interactions among the coefficients of any representation. Using a recent non-linear perception model a set of input-dependent features is obtained which simultaneously remove the statistical and perceptual correlations between coefficients. A fast method to invert this representation is also presented, so no input-dependent transform has to be stored. The decorrelating power of the proposed representation suggests that it is a promising alternative to the linear transforms used in image coding, fusion or retrieval applications.
机译:许多图像映射的目的是在去相关特征的基础上表示信号。在基础选择问题中必须考虑两个基本方面:数据分布和基础空间的定性含义。经典的PCA技术使用数据分布来减少统计相关性。但是,在必须考虑人类视觉的应用中,存在一些感知因素会使要素空间不均匀,并且尺寸之间可能会发生其他交互作用。在这项工作中,提出了一个通用框架来分析任何表示形式的系数之间的感知和统计相互作用。使用最近的非线性感知模型,获得了一组依赖于输入的特征,这些特征同时消除了系数之间的统计和感知相关性。还提出了一种反转此表示的快速方法,因此无需存储依赖于输入的变换。所提出的表示的去相关能力表明,它是图像编码,融合或检索应用中使用的线性变换的有前途的替代方法。

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