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Compressive Estimation and Imaging Based on Autoregressive Models

机译:基于自回归模型的压缩估计与成像

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摘要

Compressed sensing (CS) is a fast and efficient way to obtain compact signal representations. Oftentimes, one wishes to extract some information from the available compressed signal. Since CS signal recovery is typically expensive from a computational point of view, it is inconvenient to first recover the signal and then extract the information. A much more effective approach consists in estimating the information directly from the signal's linear measurements. In this paper, we propose a novel framework for compressive estimation of autoregressive (AR) process parameters based on ad-hoc sensing matrix construction. More in detail, we introduce a compressive least square estimator for AR(p) parameters and a specific AR(1) compressive Bayesian estimator. We exploit the proposed techniques to address two important practical problems. The first is compressive covariance estimation for Toeplitz structured covariance matrices where we tackle the problem with a novel parametric approach based on the estimated AR parameters. The second is a block-based compressive imaging system, where we introduce an algorithm that adaptively calculates the number of measurements to be acquired for each block from a set of initial measurements based on its degree of compressibility. We show that the proposed techniques outperform the state-of-the-art methods for these two problems.
机译:压缩感测(CS)是获得紧凑信号表示的一种快速有效的方法。通常,人们希望从可用的压缩信号中提取一些信息。由于从计算的角度来看,CS信号恢复通常很昂贵,因此先恢复信号然后提取信息是不方便的。一种更有效的方法是直接从信号的线性测量值估计信息。在本文中,我们提出了一种基于自组织感知矩阵构造的自回归(AR)过程参数压缩估计的新颖框架。更详细地,我们为AR(p)参数引入一个压缩最小二乘估计器和一个特定的AR(1)压缩贝叶斯估计器。我们利用提出的技术来解决两个重要的实际问题。首先是对Toeplitz结构协方差矩阵的压缩协方差估计,在此我们基于估计的AR参数,采用新颖的参数方法来解决该问题。第二个是基于块的压缩成像系统,我们引入一种算法,该算法根据其压缩程度从一组初始测量值中自适应地计算每个块要获取的测量值数量。我们表明,针对这两个问题,所提出的技术优于最新方法。

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