TítuloCompressive Covariance Sensing: Structure-Based Compressive Sensing Beyond Sparsity
Tipo de publicaciónJournal Article
Year of Publication2016
AutoresRomero, D, Ariananda, DD, Tian, Z, Leus, G
JournalIEEE Signal Processing Magazine
Volumen33
Incidencia1
Páginas78--93
Date Published01/2016
Palabras clavecompass, compressed sensing
Resumen Compressed sensing deals with the reconstruction of signalsfrom sub-Nyquist samples by exploiting the sparsity of theirprojections onto known subspaces. In contrast, the presentarticle is concerned with the reconstruction of second-orderstatistics, such as covariance and power spectrum, even inthe absence of sparsity priors. The framework described hereleverages the statistical structure of random processes toenable signal compression and offers an alternative perspectiveat sparsity-agnostic inference. Capitalizing on parsimoniousrepresentations, we illustrate how compression and reconstructiontasks can be addressed in popular applications suchas power spectrum estimation, incoherent imaging, directionof arrival estimation, frequency estimation, and widebandspectrum sensing.