Publication | Open Access
Sparse Sampling for Inverse Problems With Tensors
39
Citations
44
References
2019
Year
Sparse SamplingSparse Sampling StrategiesSparse RepresentationEngineeringData ScienceMultidimensional Signal ProcessingCompressive SensingMultilinear Subspace LearningAtomic DecompositionInverse ProblemsComputer ScienceMultidomain StructureApproximation TheorySignal ProcessingLow-rank Approximation
We consider the problem of designing sparse sampling strategies for multidomain signals, which can be represented using tensors that admit a known multilinear decomposition. We leverage the multidomain structure of tensor signals and propose to acquire samples using a Kronecker-structured sensing function, thereby circumventing the curse of dimensionality. For designing such sensing functions, we develop low-complexity greedy algorithms based on submodular optimization methods to compute near-optimal sampling sets. We present several numerical examples, ranging from multiantenna communications to graph signal processing, to validate the developed theory.
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