首页> 外文期刊>Information Theory, IEEE Transactions on >Classification and Reconstruction of High-Dimensional Signals From Low-Dimensional Features in the Presence of Side Information
【24h】

Classification and Reconstruction of High-Dimensional Signals From Low-Dimensional Features in the Presence of Side Information

机译:附带信息下低维特征对高维信号的分类与重构

获取原文
获取原文并翻译 | 示例

摘要

This paper offers a characterization of fundamental limits on the classification and reconstruction of high-dimensional signals from low-dimensional features, in the presence of side information. We consider a scenario where a decoder has access both to linear features of the signal of interest and to linear features of the side information signal; while the side information may be in a compressed form, the objective is recovery or classification of the primary signal, not the side information. The signal of interest and the side information are each assumed to have (distinct) latent discrete labels; conditioned on these two labels, the signal of interest and side information are drawn from a multivariate Gaussian distribution that correlates the two. With joint probabilities on the latent labels, the overall signal-(side information) representation is defined by a Gaussian mixture model. By considering bounds to the misclassification probability associated with the recovery of the underlying signal label, and bounds to the reconstruction error associated with the recovery of the signal of interest itself, we then provide sharp sufficient and/or necessary conditions for these quantities to approach zero when the covariance matrices of the Gaussians are nearly low rank. These conditions, which are reminiscent of the well-known Slepian-Wolf and Wyner-Ziv conditions, are the function of the number of linear features extracted from signal of interest, the number of linear features extracted from the side information signal, and the geometry of these signals and their interplay. Moreover, on assuming that the signal of interest and the side information obey such an approximately low-rank model, we derive the expansions of the reconstruction error as a function of the deviation from an exactly low-rank model; such expansions also allow the identification of operational regimes, where the impact of side information on signal reconstruction is most relevant. Our framework, which offers a principled mechanism to integrate side information in high-dimensional data problems, is also tested in the context of imaging applications. In particular, we report state-of-theart results in compressive hyperspectral imaging applications, where the accompanying side information is a conventional digital photograph.
机译:本文提供了在存在边信息的情况下,从低维特征分类和重构高维信号的基本限制的表征。我们考虑一种情况,解码器可以访问感兴趣信号的线性特征和辅助信息信号的线性特征。尽管辅助信息可以是压缩形式,但目标是原始信号的恢复或分类,而不是辅助信息。假定感兴趣的信号和辅助信息均具有(不同的)潜在离散标签;在这两个标签上,感兴趣的信号和辅助信息是从与两者相关的多元高斯分布中得出的。在潜在标签上具有联合概率时,整体信号((辅助信息)表示)由高斯混合模型定义。通过考虑与基础信号标签的恢复相关的误分类概率的界限,以及与目标信号本身的恢复相关的重构误差的界限,我们然后为这些量接近零提供了尖锐的充分和/或必要条件。当高斯的协方差矩阵几乎处于低阶时。这些条件使人联想到众所周知的Slepian-Wolf和Wyner-Ziv条件,这些条件是从感兴趣信号中提取的线性特征数量,从辅助信息信号中提取的线性特征数量以及几何形状的函数这些信号及其相互作用。此外,假设感兴趣的信号和辅助信息服从这种近似低秩的模型,我们将重构误差的扩展作为与精确低秩模型的偏差的函数;这样的扩展还可以确定操作方式,其中边信息对信号重建的影响最为相关。我们的框架提供了一种在高维数据问题中集成辅助信息的原则机制,并且还在成像应用程序的环境中进行了测试。特别是,我们报告了压缩高光谱成像应用的最新技术成果,其中附带的辅助信息是传统的数字照片。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号