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![]() | Decon in the log domain with variable gain | ![]() |
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Having data
, having chosen gain
,
and having a starting log filter, say
,
let us see how to update
to find a gained output
with better hyperbolicity.
Our forward modeling operation with model parameters
acting upon data
(in the Fourier domain
where
produces deconvolved data
(the residual).
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(9) |
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(10) |
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(11) |
It is the gained residual
that we are trying to sparsify.
So we need its derivative by the model parameters
.
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(12) |
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(13) |
In the frequency domain
the crosscorrelation
(16) is:
Equation (17) is wrong at
.
It should be brought into the time domain and have
set to zero.
More simply, the mean can be removed in the Fourier domain.
Causal least squares theory in a stationary world
says the signal output
is white (Claerbout, 2009);
the autocorrelation of the signal output is a delta function.
Noncausal sparseness theory (other penalty functions) in a world of echoes (nonstationary gain)
says the
crosscorrelation of the signal output
with its gained softclip
is also a delta function
(equation (16), upon convergence).
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![]() | Decon in the log domain with variable gain | ![]() |
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