It is quite evident that, by itself, the introduction of the
translation-generated basis elements (the
's and the
's)
constitutes a proliferation of concepts: their sheer number prevents
them from being automatically accessible for further study; one's mind
run's the danger of being subjected to information overload. Such a
state of affairs motivates an inquiry as to the applicability of the
principle of unit-economy22. Can one, by introducing
simplifying concepts, reduce this number by consolidating these
's
and the
's into one or two concepts?
An affirmative answer to this question is based on the introduction of
two ``mother wavelet'' for all the
's and a ``father wavelet'' for all the
's.
Recall that the
's have already been consolidated by
Eqs.(2.79), (2.80), and (2.88) into the single
scaling function, the ``father wavelet''
In other words,
The successful application of the principle of unit-economy to the basis of
Thus one has the result that, for every integer
, each of the
wavelets
and
procreates its respective vector
space
,
, and
.
The application of this fact to their direct sum
|
and
| ||
When one compares a function
at resolutions
and
,
then the difference
is called the detail of
are the corresponding detail degrees of freedom. They are independent of the essential degrees of freedom at resolution
which is the orthogonal complement of
It is difficult to overstate the importance of the principle of
unit-economy. Its application is implicit and is taken for granted
through out any theoretical development, ours in particular. However,
there are situations where it is instructive to highlight particularly
significant instances of its application. A case in point is the
introduction of the scaling function, the father wavelet
. By
this process an entire aggregate of concepts has been condensed into a
single new concept, a multiscale analysis (MSA), with a
scaling function
residing at its core. The economy in the
number of concepts achieved by this condensation is a tribute to this
principle. It demands that any new concept be defined in terms of
essential properties.
The gist of the last two pages consisted of the task of establishing
the two alternative bases of the resolution space,
Eq.(2.98), in terms of a single scaling
function, Eq.(2.94), and the two ``mother
wavelets'', Eq.(2.97). Furthermore, the
development was based on a scaling function having a rather
specialized form, the Shannon wavelet
. One
therefore wonders whether the benefits to be gained from such a highly
specialized activity are really worth the effort expended. That the
answer is ``yes'' is due to the fact that the development identifies a
wider principle constructively: For every MSA there is a
scaling function
, and for every scaling function there
exists a MSA. The assumed specialized form, Eq.(2.97), is non-essential. The identification,
MSA
, is captured by means of the following
definition:
Definition (Multiscale Resolution Analysis)
An increasing sequence of Hilbert spaces
| (2105) |
| (2106) | ||
|
with
| ||
| (2107) | ||
This property is the essential (distinguishing) characteristic of a
MSA. It says that, in order for a hierarchy of linear spaces to be a
MSA, each one of these spaces must be a scaled version of a reference
space
, the central approximation
space. By starting with a
function in
, and applying iteratively scaling
operations, compression (
) or dilation (
), to
its argument, one moves up or down this hierarchy of
approximation spaces.
The purpose of Property 4 is not to define what a MSA is.
Instead, its role is to have the scaling function
serve as a unique identifier of the central approximation space
, and hence, by Property 3, of a particular MSA.
Thus Property 4 establishes a unique correspondence between
the set of MSA's and the set of scaling functions.
The unique identification of
is achieved by having the
discrete translates of
form an orthonormal basis of
. That translation process is depicted in Figure 2.12 on page
.
The ablity of
to serve as a unique identifier for the whole
MSA becomes evident when one applies Property 3 to this functions.
One finds that the set of translated and scaled functions
form o.n. bases for the respective approximation spaces
Consequently, the definition of a MSA by properties 1-4 not only defines what a MSA is, but also establishes a one-to-one correspondence between the set of MSA's and the set of scaling functions.
The translates of the scaling function need not be orthonormal. In
that case the orthonormality condition, Eq.(2.107), gets replaced by the condition that
form a Riesz basis, i.e. that
Here
where
(b) SHOW that
.