Wavefield reconstruction with SVD-free low-rank matrix factorization

TitleWavefield reconstruction with SVD-free low-rank matrix factorization
Publication TypePresentation
Year of Publication2013
AuthorsRajiv Kumar, Aleksandr Y. Aravkin, Hassan Mansour, Ernie Esser, Felix J. Herrmann
KeywordsPresentation, SINBAD, SINBADFALL2013, SLIM

As shown in past, we can leverage the ideas from the field of compressed sensing to cast problems like seismic data interpolation or sequential shot data recovery from simultaneous data, as a compressed sensing problem. In this work we will show how we can borrow the same ideas of compressed sensing and cast these problems as matrix completion problems. Instead of sparsity we will show that we can exploit the low-rank structure of seismic data to solve these problems. One of the impediments in rank-minimization problem is the computation of singular values. We will also show how we can solve the rank minimization problems SVD-free. The practical application is divided into three parts: 1. In case of sequential seismic data acquisition, how jittered subsampling helps to recover the better quality data as compared to random subsampling. 2. How the incorporation of reciprocity principles help to enhance the quality of recovered fully sampled data. 3. How we can recover the sequential source data from simultaneous source data.

Citation Keykumar2013SINBADwrs