DocumentCode :
60116
Title :
A Primal-Dual Proximal Algorithm for Sparse Template-Based Adaptive Filtering: Application to Seismic Multiple Removal
Author :
Mai Quyen Pham ; Duval, L. ; Chaux, C. ; Pesquet, J.-C.
Author_Institution :
IFP Energies nouvelles, Rueil-Malmaison, France
Volume :
62
Issue :
16
fYear :
2014
fDate :
Aug.15, 2014
Firstpage :
4256
Lastpage :
4269
Abstract :
Unveiling meaningful geophysical information from seismic data requires to deal with both random and structured “noises”. As their amplitude may be greater than signals of interest (primaries), additional prior information is especially important in performing efficient signal separation. We address here the problem of multiple reflections, caused by wave-field bouncing between layers. Since only approximate models of these phenomena are available, we propose a flexible framework for time-varying adaptive filtering of seismic signals, using sparse representations, based on inaccurate templates. We recast the joint estimation of adaptive filters and primaries in a new convex variational formulation. This approach allows us to incorporate plausible knowledge about noise statistics, data sparsity and slow filter variation in parsimony-promoting wavelet frames. The designed primal-dual algorithm solves a constrained minimization problem that alleviates standard regularization issues in finding hyperparameters. The approach demonstrates significantly good performance in low signal-to-noise ratio conditions, both for simulated and real field seismic data.
Keywords :
adaptive filters; geophysical techniques; random noise; seismic waves; seismology; source separation; statistics; adaptive filter joint estimation recast; constrained minimization problem; convex variational formulation; data sparsity; designed primal-dual algorithm; efficient signal separation; hyperparameters; inaccurate templates; layer wave-field bouncing; low signal-to-noise ratio conditions; multiple reflection problem; noise statistics; parsimony-promoting wavelet frames; phenomena approximate models; primal-dual proximal algorithm; random noise; real field seismic data; seismic data geophysical information; seismic multiple removal application; seismic signals; simulated seismic data; slow filter variation; sparse representations; sparse template-based adaptive filtering; standard regularization issues; structured noise; time-varying adaptive filtering Ωexible framework; Adaptation models; Geophysical signal processing; Noise; Sonar equipment; Standards; Wavelet transforms; Adaptive filters; convex optimization; geophysical signal processing; parallel algorithms; signal restoration; signal separation; sparsity; wavelet transforms;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2014.2331614
Filename :
6839026
Link To Document :
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