To begin encoding the form of an object, landmarks need to be identified
and statistical analysis applied so that it expresses these spatial
shape properties, namely the landmark coordinates. From this analysis,
a mean shape is obtained and it can be denoted by
or
. To obtain this mean, the procedure that
is commonly used is Procrustes analysis. The generalised Procrustes
procedure (or GPA for Generalised Procrustes Analysis) was developed
by Gower in 1975 and has been adapted for shape analysis by Goodall
in 1991. It processes each component of the vectors derived from the
images and returns for each component a value that is said to be the
mean. From here onwards, this vector which represents the mean of
the data will be referred to as
. Each shape
is then well-formulated by the following:
The matrix
Eigen-analysis is used quite extensively in the derivation of the
expression above2.12, but it will not be discussed in detail in the remainder of this
report. Instead, a short explanation will be given on Principal Component2.13 Analysis [,] which from here onwards be referred
to as PCA. What is worth emphasising is that the only variant in the
model described above is
and as the values of
are infinite (
), the
same must hold for
. There is an infinite number of shapes,
each of which can be generated from one choice of value for each model
parameter. One interesting alternative to PCA was presented in []
By Jebara. It is explained at the end of Appendix
on page
.