Sparse-promoting Full Waveform Inversion based on Online Orthonormal Dictionary Learning
Lingchen Zhu, Entao Liu, James H. McClellan

TL;DR
This paper introduces an adaptive, online learned orthonormal dictionary called SOT for sparsity-promoting full waveform inversion, improving subsurface imaging by reducing computation and enhancing robustness.
Contribution
It proposes a novel SOT-based regularization method that adaptively learns a sparse representation from model perturbations during FWI iterations.
Findings
Robust FWI results with reduced computation.
Effective sparse representation of complex features.
Improved subsurface imaging accuracy.
Abstract
Full waveform inversion (FWI) delivers high-resolution images of the subsurface by minimizing iteratively the misfit between the recorded and calculated seismic data. It has been attacked successfully with the Gauss-Newton method and sparsity promoting regularization based on fixed multiscale transforms that permit significant subsampling of the seismic data when the model perturbation at each FWI data-fitting iteration can be represented with sparse coefficients. Rather than using analytical transforms with predefined dictionaries to achieve sparse representation, we introduce an adaptive transform called the Sparse Orthonormal Transform (SOT) whose dictionary is learned from many small training patches taken from the model perturbations in previous iterations. The patch-based dictionary is constrained to be orthonormal and trained with an online approach to provide the best sparse…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · Geophysical Methods and Applications
