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filter ! multidip
multidip filtering
Figure demonstrates the
signal/noise decomposition concept on synthetic data.
The signal and noise have similar frequency spectra
but different dip spectra.
signoi90
Figure 12
The input signal is on the left.
Next is that signal with noise added.
Next,
for my favorite value of
epsilon=1.,
is the estimated signal and the estimated noise.
Before I discovered helix preconditioning,
Ray Abma found that different results were obtained when the
fitting goal was cast in terms of instead of .Theoretically it should not make any difference.
Now I believe that with preconditioning, or even without it,
if there are enough iterations,
the solution should be independent
of whether the fitting goal is cast with either or .
Figure shows the result of experimenting with
the choice of .As expected, increasing weakens and increases .When is too small,
the noise is small and
the signal is almost the original data.
When is too large,
the signal is small and
coherent events are pushed into the noise.
(Figure
rescales both signal and noise images for the clearest display.)
signeps90
Figure 13
Left is an estimated signal-noise pair where epsilon=4
has improved the appearance of the estimated signal but
some coherent events have been pushed into the noise.
Right is a signal-noise pair where epsilon=.25,
has improved the appearance of the estimated noise but
the estimated signal looks no better than original data.
Notice that the leveling operators
and were both estimated
from the original signal and noise mixture
shown in Figure .
Presumably we could do even better if we were to reestimate
and from the estimates
and in Figure .
Next: Spitz for variable covariances
Up: SIGNAL-NOISE DECOMPOSITION BY DIP
Previous: SIGNAL-NOISE DECOMPOSITION BY DIP
Stanford Exploration Project
4/27/2004