Sparse seismic imaging using variable projection

TitleSparse seismic imaging using variable projection
Publication TypeConference
Year of Publication2013
AuthorsAleksandr Y. Aravkin, Tristan van Leeuwen, Ning Tu
Conference NameICASSP
KeywordsImaging, Optimization, sparsity, variable projection

We consider an important class of signal processing problems where the signal of interest is known to be sparse, and can be recovered from data given auxiliary information about how this data was generated. For example, a sparse green's function may be recovered from seismic experimental data using sparsity optimization when the source signature is known. Unfortunately, in practice this information is often missing, and must be recovered from data along with the signal using deconvolution techniques. In this paper, we present a novel methodology to simulta- neously solve for the sparse signal and auxiliary parameters using a recently proposed variable projection technique. Our main contribution is to combine variable projection with spar- sity promoting optimization, obtaining an efficient algorithm for large-scale sparse deconvolution problems. We demon- strate the algorithm on a seismic imaging example.

Citation Keyaravkin2013ICASSPssi
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