International audienceThe suppression of multiples is a crucial task when processing seismic reflection data. Using the curvelet transform for surface-related multiple prediction is investigated. From a geophysical point of view, a curvelet can be seen as the representation of a local plane wave and is particularly well suited for seismic data decomposition. For the prediction of multiples in the curvelet domain, first it is proposed to decompose the input data into curvelet coefficients. These coefficients are then convolved together to predict the coefficients associated with multiples, and the final result is obtained by applying the inverse curvelet transform. The curvelet transform offers two advantages. The directional characteristic ...
Incomplete data represents a major challenge for a successful prediction and subsequent removal of m...
It is not always realized that the earth’s surface is the main multiple generator. In the method des...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
The surface-related multiple elimination (SRME) method has proven to be successful on a large number...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
Running head: Curvelet-based processing In this letter, the solutions to three seismic processing pr...
In many exploration areas, successful separation of primaries and multiples greatly determines the q...
In this abstract, we present a novel primary-multiple separation scheme which makes use of the spars...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
In many exploration areas, successful separation of primaries and multiples greatly deter-mines the ...
Incomplete data represents a major challenge for a successful prediction and subsequent removal of m...
It is not always realized that the earth’s surface is the main multiple generator. In the method des...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
The surface-related multiple elimination (SRME) method has proven to be successful on a large number...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
Running head: Curvelet-based processing In this letter, the solutions to three seismic processing pr...
In many exploration areas, successful separation of primaries and multiples greatly determines the q...
In this abstract, we present a novel primary-multiple separation scheme which makes use of the spars...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
In many exploration areas, successful separation of primaries and multiples greatly deter-mines the ...
Incomplete data represents a major challenge for a successful prediction and subsequent removal of m...
It is not always realized that the earth’s surface is the main multiple generator. In the method des...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...