Next: 2-D INTERPOLATION BEYOND ALIASING
Up: MISSING DATA AND UNKNOWN
Previous: Summary of 1-D missing-data
A traditional method of data interpolation on a regular mesh
is a four-step procedure:
(1) set zero values at the points to be interpolated;
(2) Fourier transform;
(3) set to zero the high frequencies;
and
(4) inverse transform.
This is a fine method and is suitable for many applications
in both one dimension and higher dimensions.
Where the method falls down is where more is needed than simple
interlacing--for example,
when signal values are required beyond the ends of
the data sample.
The simple Fourier method of interlacing also loses its applicability
when known data is irregularly distributed.
An example of an application in two dimensions of the methodology
of this section is given in the section on tomography
beginning on page .
Next: 2-D INTERPOLATION BEYOND ALIASING
Up: MISSING DATA AND UNKNOWN
Previous: Summary of 1-D missing-data
Stanford Exploration Project
10/21/1998