New Identities of Fractional S-Transform with Its Applications
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TIET Patiala
Abstract
The current work provides a comprehensive and integrated introduction to the principles,
properties and applications of the S-transform (ST) and fractional S-transform (FrST). The ST,
which is a significant tool in signal processing, is a conceptual version of the FT with a Gaussian
window function. It has been observed from the literature study that only linearity, scaling, timeshifting
and convolution theorem of ST were documented. This led to the findings of remaining
properties of ST in order to establish it as a complete transform technique. Along with this, a new
better definition of convolution theorem for ST has also been presented. The FrST is a
generalisation of the classical ST. The FrST has demonstrated to be a valuable technique for an
analysis of a non-stationary signals. The FrST also acts as a time-frequency representation method
with the frequency dependent resolution. Some of the remaining properties of FrST are proposed
in this work so as to establish it as a complete transform technique. The proposed properties are
convolution theorem, Parseval’s theorem, correlation theorem and sampling propositions. It will
provide an appropriate and reasonable model for sampling and restoration of the signal for real
uses. Moreover, two kinds of reconstruction error, namely truncation error and aliasing error arises
due to sampling were also discussed.Multiresolution analysis (MRA) has recently become important, and even essential, in signal
analysis and image processing. As one of the famous family members of the MRA, the wavelet
transform (WT) demonstrated itself in numerous successful applications in various fields, and
become one of the utmost powerful tools in the fields of signal analysis and image processing. Due
to the fact that only the scale info is supplied in WT, the applications with the help of WT may be
restricted when the totally referenced frequency and phase information are required. The FrST is
a proposed multiresolution transform that supplies the fully referenced frequency and phase
information. In the areas where ST and FrFT are used, the performance can be enhanced through
the use of FrST. In addition, it has a close relationship with other transforms like Fourier transform
(FT), and WT. To expand the applicability of FrST as a mathematical transform tool, MRA is
used. Finally, the applications of proposed convolution theorem are demonstrated on multiplicative
filtering (MF) for electrocardiogram (ECG) signal and linear frequency modulated (LFM) signal
under AWGN channel. The FrST can be applied for other applications of non-stationary signal
analysis, radar signal processing and also in image processing.
Description
PhD Thesis
