High-resolution signal recovery via generalized sampling and functional principal component analysis

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作者
Milana Gataric
机构
[1] University of Cambridge,Statistical Laboratory, Department for Pure Mathematics and Mathematical Statistics
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关键词
High-dimensional reconstructions; Sparse PCA; Wavelet reconstructions; Fourier sampling; Data-driven inverse problems; Low-rank recovery models; Super-resolution; 62H25; 62M40; 65D15; 65J20; 42C40; 68T05; 94A08;
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摘要
In this paper, we introduce a computational framework for recovering a high-resolution approximation of an unknown function from its low-resolution indirect measurements as well as high-resolution training observations by merging the frameworks of generalized sampling and functional principal component analysis. In particular, we increase the signal resolution via a data-driven approach, which models the function of interest as a realization of a random field and leverages a training set of observations generated via the same underlying random process. We study the performance of the resulting estimation procedure and show that high-resolution recovery is indeed possible provided appropriate low rank and angle conditions hold and provided the training set is sufficiently large relative to the desired resolution. Moreover, we show that the size of the training set can be reduced by leveraging sparse representations of the functional principal components. Furthermore, the effectiveness of the proposed reconstruction procedure is illustrated by various numerical examples.
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