Exact Reconstruction of Spatially Undersampled Signals in Evolutionary Systems
Abstract
We consider the problem of spatiotemporal sampling in which an initial state f of an evolution process ft=Atf is to be recovered from a combined set of coarse samples from varying time levels \t1,…,tN\. This new way of sampling, which we call dynamical sampling, differs from standard sampling since at any fixed time ti there are not enough samples to recover the function f or the state fti. Although dynamical sampling is an inverse problem, it differs from the typical inverse problems in which f is to be recovered from ATf for a single time T. In this paper, we consider signals that are modeled by 2( Z) or a shift invariant space V⊂ L2( R).
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