Spectral Compressive Sensing with Model Selection
classification
💻 cs.IT
math.IT
keywords
spectralapproachescompressivemodelrecoveryselectionsensingadopt
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The performance of existing approaches to the recovery of frequency-sparse signals from compressed measurements is limited by the coherence of required sparsity dictionaries and the discretization of frequency parameter space. In this paper, we adopt a parametric joint recovery-estimation method based on model selection in spectral compressive sensing. Numerical experiments show that our approach outperforms most state-of-the-art spectral CS recovery approaches in fidelity, tolerance to noise and computation efficiency.
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