Title :
A constrained-based optimization approach for seismic data recovery problems
Author :
Mai Quyen Pham ; Chaux, C. ; Duval, L. ; Pesquet, J.-C.
Author_Institution :
IFP Energies nouvelles, Rueil-Malmaison, France
Abstract :
Random and structured noise both affect seismic data, hiding the reflections of interest (primaries) that carry meaningful geophysical interpretation. When the structured noise is composed of multiple reflections, its adaptive cancellation is obtained through time-varying filtering, compensating inaccuracies in given approximate templates. The under-determined problem can then be formulated as a convex optimization one, providing estimates of both filters and primaries. Within this framework, the criterion to be minimized mainly consists of two parts: a data fidelity term and hard constraints modeling a priori information. This formulation may avoid, or at least facilitate, some parameter determination tasks, usually difficult to perform in inverse problems. Not only classical constraints, such as sparsity, are considered here, but also constraints expressed through hyperplanes, onto which the projection is easy to compute. The latter constraints lead to improved performance by further constraining the space of geophysically sound solutions.
Keywords :
adaptive filters; filtering theory; geophysical signal processing; optimisation; seismology; time-varying filters; adaptive filtering; constrained-based optimization approach; convex optimization; data fidelity term; hard constraints modeling; inverse problems; seismic data recovery problems; time-varying filtering; Adaptation models; Convex functions; Estimation; Geophysics; Indexes; Noise; Signal processing algorithms; Adaptive filters; Geophysical signal processing; Optimization methods; Signal restoration; Wavelet transforms;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6854025