Abstract:
The research work which lead to the preparation of
this thesis was undertaken with the objective of defining
some new transforms which could he used for signal (message,
picture or data) processing and to study the permutation
properties of the proposed signal processing transforms.
The work contained in this thesis includes generation of
higher order orthonormal transform kernels from lower order
orthonormal transform kernels, proposing new two-dimensional
transforms and studying their permutation properties,
modification of some of the existing transforms for pattern
recognition to transforms which could be used for trans
mission of message, picture and data, and defining a new
class of systems which is invariant to some prescribed
permutation.
It has been observed that the discrete finite system
matrices for the proposed class of permutation invariant
system are not necessarily matrices with ranks equal to
their orders. Conditions have been stipulated under which
the resulting system matrices would have ranks equal to
their orders. But this, however, needs further investi
gation,
Two-dimensional transforms could be frequently
thought of as two one-dimensional transforms. By taking
various combinations of two one-dimensional orthonormal
transform kernels one can define a class of two-dimensional
transform kernels. The permutation properties of such
transform can be deduced from the permutation properties
of the component orthonormal transforms.
It is known that Kronecker product of two lower order
orthonormal matrices results in an orthonormal matrix of
higher order. The algebra for Kronecker product is well
developed. But it does not commutative. A new matrix
product, Chinese product, has been proposed. This product
is defined only when the respective dimensions of the twocomponent
matrices are coprimes. The matrix resulting
from this product has all the properties of the matrix
resulting from Kronecker product of the same component mat
rices. In addition this matrix product commutes. In fact
the former is a rowwise and columnwise permuted version
of the latter. Expressions have been derived for permu
tation matrices which can help in getting one from another.
The notions of these matrix products and partitioning of
matrices have buen exploited to obtain higher ordur orthonormal
transform kernels from lower order orthonormal
transform kernels.
Many of the known transforms which find application
in pattern recognition are nonlinear in nature. If these
transforms could be inverted by some modification then the
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modified transforms could bo useful for message, picture
and data signals. It has been proposed that the additional
knowledge about the labels at each functional block in the
transmitter could lead to the recovery at receiver of the
input signal samples at the transmitter. The class of
thus modified transforms has been named as labelled sym
metric function transform.
The thesis ends, as is customary, with references
to some problems which could be taken up in future as an
extension of this work.