Spitz (1991) popularized the application of prediction-error filters to regular trace interpolation and showed how the spatial aliasing restriction can be overcome by scaling the frequencies of F-X PEFs. An analogous technique for T-X filters was developed by Claerbout (1992, 1999) and was applied for 3-D interpolation with non-stationary PEFs by Crawley (2000). The T-X technique implies stretching the filter in all directions so that its dip spectrum is preserved while the coefficients can be estimated at alternating traces. After the filter is estimated, it is scaled back and used for interpolating missing traces between the known ones. A similar method works for finite-difference plane wave destructors, only we need to take special care to avoid aliased dips at the dip estimation stage.
A simple synthetic example of interpolation beyond aliasing is shown
in Figure . The input data are clearly aliased and
non-stationary. To take the aliasing into account, I estimate the two
dips present in the data with the slope estimation technique of the
previous subsection. The first dip corresponds to the true slope,
while the second dip corresponds to the aliased dip component. In this
example, the true dip is non-negative everywhere and is easily
distinguished from the aliased one. Throwing away the aliased dip and
interpolating intermediate traces with the true dip produces the
accurate interpolation result shown in the right plot of
Figure
.
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Figure shows a marine 2-D shot gather from a deep
water Gulf of Mexico survey before and after subsampling in the offset
direction. The data are similar to those used by
Crawley (2000). The shot gather has long-period
multiples and complicated diffraction events caused by a salt body.
The amplitudes of the hyperbolic events are not as uniformly
distributed as in the synthetic case of Figure
.
Subsampling by a factor of two (the right plot in
Figure
) causes a clearly visible aliasing in the
steeply dipping events. The goal of the experiment is to interpolate
the missing traces in the subsampled data and to compare the result
with the original gather shown in the left plot of
Figure
.
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A straightforward application of the dip estimation
equations (-
) applied to aliased data can
easily lead to erroneous aliased dip estimation. In order to avoid
this problem, I chose a slightly more complex strategy. The algorithm for trace
interpolation of aliased data consists of the following steps:
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Figure shows the interpolation result and the
difference between the interpolated traces and the original traces,
plotted at the same clip value. The method succeeded in the sense that
it is impossible to distinguish interpolated traces from the
interpolation result alone. However, it is not ideal, because some of
the original energy is missing in the output. A close-up comparison
between the original and the interpolated traces in
Figure
shows that imperfection in more detail.
Some of the steepest events in the middle of the section are poorly
interpolated, and in some of the other places, the second dip
component is continued instead of the first one.
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One could improve the interpolation result considerably by including another dimension. To achieve a better result, we can use a pair of plane-wave destructors, one predicting local plane waves in the offset direction and the other predicting local plane waves in the shot direction.