Fomel (2009,2007) introduces shaping regularization in inversion problem,
which regularizes the under-determined linear system by mapping the model
to the space of acceptable models.
Consider a linear system given as
,
where
is the forward-modeling map,
is the model vector, and
is the data vector.
Tikhonov regularization method amounts to minimize the least square problem bellow
(Tikhonov, 1963):
(28)
where
is the regularization operator, and is a scalar parameter.
The solution for equation28 is:
(29)
Where
is the least square approximated of
,
is the adjoint operator.
If the forward operator
is simply the identity operator, the solution of
equation29 is the form below:
(30)
which can be viewed as a smoothing process. If we let:
(31)
or
(32)
Substituting equation 32 into equation 29
yields a solution by shaping regularization:
(33)
The forward operator
may has physical units that require scaling. Introducing
scaling into
, equation 33 be written as:
(34)
If
with square and invertible
. Equation 34 can be written as:
(35)
The conjugate gradient algorithm can be used for the solution of the equation35.
Data-driven time-frequency analysis of seismic data using
non-stationary Prony method