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DATA RESTORATION

Figures 8-11 demonstrate the success and lack of success of a process to replace missing data by data of the correct spectrum. Although real data is always better than synthetic data, especially synthetic data produced with a primitive theory involving only spectra, the fact is that synthetic data is often better than zero data.

In geophysical parameter fitting (inversion) you would not want to fit parameters to synthetic data, but in imaging processes like migration, synthetic data is better than zero data. This would be true for Figure 11.

 
herr-hole-fill
herr-hole-fill
Figure 8
The herringbone texture is a patchwork of two textures. We notice that data missing from the hole tends to fill with the texture at the edge of the hole. The spine of the herring fish, however, is not modeled at all.


[*] view

 
brick-hole-fill
brick-hole-fill
Figure 9
The brick texture has a mortar part (both vertical and horizontal joins) and a brick surface part. These three parts enter the empty area but do not end where they should.


[*] view

 
ridges-hole-fill
ridges-hole-fill
Figure 10
The theoretical model is a poor fit to the ridge data since the prediction must try to match ridges of all possible orientations. This data requires a broader theory which incorporates the possibility of nonstationarity (space variable slope).


[*] view

 
WGstack-hole-fill
WGstack-hole-fill
Figure 11
Filling the missing seismic data. The imaging process known as ``migration'' would suffer diffraction artifacts in the gapped data that it would not suffer on the restored data.


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Stanford Exploration Project
3/1/2001