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We take data space to be a uniform mesh
on which some values are given and some are missing.
We rarely have missing values on a time axis,
but commonly have missing values on a space axis,
i.e., missing signals.
Missing signals (traces) happen occasionally for miscellaneous reasons,
and they happen systematically because of aliasing and truncation.
The aliasing arises for economic reasons--saving instrumentation
by running receivers far apart.
Truncation arises at the ends of any survey,
which, like any human activity, must be finite.
Beyond the survey lies more hypothetical data.
The traces we will find for the missing data
are not as good as real observations,
but they are closer to reality
than supposing unmeasured data is zero valued.
Making an image with a single application of an adjoint modeling operator
amounts to assuming that data vanishes beyond its given locations.
Migration
is an example of an economically important process
that makes this assumption.
Dealing with missing data is a step beyond this.
In inversion, restoring missing data
reduces the need for arbitrary model filtering.
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Stanford Exploration Project
10/21/1998