# SEISMIC DATA INTERPOLATION USING SPARSITY CONSTRAINED INVERSION by

@inproceedings{Almeida2017SEISMICDI, title={SEISMIC DATA INTERPOLATION USING SPARSITY CONSTRAINED INVERSION by}, author={Lucas A. Almeida}, year={2017} }

- Published 2017

Missing data reconstruction is an ongoing challenge in seismic processing for incomplete and irregular acquisition. This problem needs to be adequately addressed, especially because it negatively affects several important processing steps such as migration. While many methods have been developed to address this problem, most of the recent research on the subject focuses on transform domain approaches due to their low computational cost and independence of medium property estimation, such as… CONTINUE READING

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