The classical theory behind the encoding analog signals into bit
streams and decoding bit streams back into signals, rests on a famous sampling theoremwhich is typically refereed to as the
Shannon-Whitaker Sampling Theorem. In this course, this samplingtheory will serve as a benchmark to which we shall compare the new
theory of compressed sensing.
To introduce the Shannon-Whitaker theory, we first define the class
of bandlimited signals. A bandlimited signal is a signalwhose Fourier transform only has finite support. We shall denote
this class as
and define it in the following way:
Here, the Fourier transform of
is defined by
This formula holds for any
and extends easily to
via limits.
The inversion of the Fourier transform is given by
Shannon-whitaker sampling theorem
If
, then
can be uniquely determined by the
uniformly spaced samples
and in fact,
is given by
where
.
It is enough to consider
, since all other cases can be reduced to this through a simple change of variables. Because
, the Fourier inversion formula takes the
form
Define
as the
periodization of
,
Because
is periodic, it admits a Fourier series
representation
where the Fourier coefficients
given by
By comparing (
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conclude that
Therefore by plugging (
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into (
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Now, because
and because of the facts that
we conclude
Comments:
- (Good news) The set
is an orthogonal system and therefore, has the property that the
norm of the function and its Fourier coefficients are related by,
- (Bad news) The representation of
in terms of sinc functions is not a stable representation, i.e.