Curvelet-domain multiple elimination with sparseness constraints.

Predictive multiple suppression methods consist of two main steps: a prediction step, in which multiples are predicted from the seismic data, and a subtraction step, in which the predicted multiples are matched with the true multiples in the data. The last step appears crucial in practice: an incorr...

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Main Authors: Herrmann, Felix J., Verschuur, Eric
Language:English
Published: Society of Exploration Geophysicists 2008
Subjects:
Online Access:http://hdl.handle.net/2429/426
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.2429-4262014-03-14T15:36:35Z Curvelet-domain multiple elimination with sparseness constraints. Herrmann, Felix J. Verschuur, Eric curvelet domain curvelet transform suppression sparseness seismic multiples Predictive multiple suppression methods consist of two main steps: a prediction step, in which multiples are predicted from the seismic data, and a subtraction step, in which the predicted multiples are matched with the true multiples in the data. The last step appears crucial in practice: an incorrect adaptive subtraction method will cause multiples to be sub-optimally subtracted or primaries being distorted, or both. Therefore, we propose a new domain for separation of primaries and multiples via the Curvelet transform. This transform maps the data into almost orthogonal localized events with a directional and spatialtemporal component. The multiples are suppressed by thresholding the input data at those Curvelet components where the predicted multiples have large amplitudes. In this way the more traditional filtering of predicted multiples to fit the input data is avoided. An initial field data example shows a considerable improvement in multiple suppression. 2008-02-21T21:50:34Z 2008-02-21T21:50:34Z 2004 text Herrmann, Felix J., Verschuur, Eric. Curvelet-domain multiple elimination with sparseness constraints. 2004. SEG Technical Program Expanded Abstracts. 23, 1333-1336. doi:10.1190/1.1851110 http://hdl.handle.net/2429/426 eng Herrmann, Felix J. Society of Exploration Geophysicists
collection NDLTD
language English
sources NDLTD
topic curvelet domain
curvelet transform
suppression
sparseness
seismic
multiples
spellingShingle curvelet domain
curvelet transform
suppression
sparseness
seismic
multiples
Herrmann, Felix J.
Verschuur, Eric
Curvelet-domain multiple elimination with sparseness constraints.
description Predictive multiple suppression methods consist of two main steps: a prediction step, in which multiples are predicted from the seismic data, and a subtraction step, in which the predicted multiples are matched with the true multiples in the data. The last step appears crucial in practice: an incorrect adaptive subtraction method will cause multiples to be sub-optimally subtracted or primaries being distorted, or both. Therefore, we propose a new domain for separation of primaries and multiples via the Curvelet transform. This transform maps the data into almost orthogonal localized events with a directional and spatialtemporal component. The multiples are suppressed by thresholding the input data at those Curvelet components where the predicted multiples have large amplitudes. In this way the more traditional filtering of predicted multiples to fit the input data is avoided. An initial field data example shows a considerable improvement in multiple suppression.
author Herrmann, Felix J.
Verschuur, Eric
author_facet Herrmann, Felix J.
Verschuur, Eric
author_sort Herrmann, Felix J.
title Curvelet-domain multiple elimination with sparseness constraints.
title_short Curvelet-domain multiple elimination with sparseness constraints.
title_full Curvelet-domain multiple elimination with sparseness constraints.
title_fullStr Curvelet-domain multiple elimination with sparseness constraints.
title_full_unstemmed Curvelet-domain multiple elimination with sparseness constraints.
title_sort curvelet-domain multiple elimination with sparseness constraints.
publisher Society of Exploration Geophysicists
publishDate 2008
url http://hdl.handle.net/2429/426
work_keys_str_mv AT herrmannfelixj curveletdomainmultipleeliminationwithsparsenessconstraints
AT verschuureric curveletdomainmultipleeliminationwithsparsenessconstraints
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