Nonlinear regularization techniques for seismic tomography
Abstract
The effects of several nonlinear regularization techniques are discussed in the framework of 3D seismic tomography. Traditional, linear, penalties are compared to so-called sparsity promoting and penalties, and a total variation penalty. Which of these algorithms is judged optimal depends on the specific requirements of the scientific experiment. If the correct reproduction of model amplitudes is important, classical damping towards a smooth model using an norm works almost as well as minimizing the total variation but is much more efficient. If gradients (edges of anomalies) should be resolved with a minimum of distortion, we prefer damping of Daubechies-4 wavelet coefficients. It has the additional advantage of yielding a noiseless reconstruction, contrary to simple minimization (`Tikhonov regularization') which should be avoided. In some of our examples, the method produced notable artifacts. In addition we show how nonlinear methods for finding sparse models can be competitive in speed with the widely used methods, certainly under noisy conditions, so that there is no need to shun penalizations.
Cite
@article{arxiv.0808.3472,
title = {Nonlinear regularization techniques for seismic tomography},
author = {I. Loris and H. Douma and G. Nolet and I. Daubechies and C. Regone},
journal= {arXiv preprint arXiv:0808.3472},
year = {2010}
}
Comments
23 pages, 7 figures. Typographical error corrected in accelerated algorithms (14) and (20)