2017
DOI: 10.1007/s00024-017-1734-4
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The Linearized Bregman Method for Frugal Full-waveform Inversion with Compressive Sensing and Sparsity-promoting

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Cited by 12 publications
(1 citation statement)
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“…Although this method can solve the instability problem of seismic inversion well, there are some problems such as low accuracy and too smooth inversion results (Berkhout, 1977). And in terms of sparse representation, the L1 norm is better than the L2 norm (Li et al, 2012;Kong et al, 2016;Chai et al, 2018). Liu et al (2015) and Yuan et al (2015) verify the validity of the L1 norm in inversion by using 2D model and 3D data respectively, and both confirm that the inversion method with the L1 norm as a regularization constraint has higher inversion accuracy.…”
Section: Introductionmentioning
confidence: 74%
“…Although this method can solve the instability problem of seismic inversion well, there are some problems such as low accuracy and too smooth inversion results (Berkhout, 1977). And in terms of sparse representation, the L1 norm is better than the L2 norm (Li et al, 2012;Kong et al, 2016;Chai et al, 2018). Liu et al (2015) and Yuan et al (2015) verify the validity of the L1 norm in inversion by using 2D model and 3D data respectively, and both confirm that the inversion method with the L1 norm as a regularization constraint has higher inversion accuracy.…”
Section: Introductionmentioning
confidence: 74%