UM ETheses Collection (澳門大學電子學位論文庫)
 Title

Windowed linear canonical transform and its applications
 English Abstract

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The linear canonical transform (LCT) has recently received much attention in signal processing and optics [7, 9, 22]. It was first introduced in 1970s [1, 2] and is a fourparameter class of linear integral transform. The LCT is also known as the ABCD transform [10], the affine Fourier transform [11], and the generalized Fresnel transform [12]. Many operations, such as the Fourier transform (FT), the fractional Fourier transform (FrFT) [7, 22], the Fresnel transform [13], the Lorentz transform [11] and scaling operations are its special cases. With more degrees of freedom compared to the FT and the FrFT, the LCT is more flexible but with similar computation cost as the conventional FT does [14]. Due to its advantages discussed above, the LCT, as a powerful tool, has found many applications in filter design, signal synthesis, optics, radar analysis and pattern recognition, etc [7, 9]. The above mentioned applications demonstrate the great potential of LCT in signal processing. For example, filtering in the LCT domain, proposed as in [15], can achieve better performance than in the FrFT domain because of more degrees of freedom. Especially when multicomponent chirp signals interfere with the desired signal, only one filter is used in the LCT domain usually, but several filters are required in the FrFT domain [16]. However, the LCT cannot reveal the local LCTfrequency contents due to its global kernel. The windowed Fourier transform (WFT) [4, 7], with a local windowed function, handles this kind of problem well. The absence of undesirable cross terms and computational simplicity result in the widespread use of the WFT in practice, and most other timefrequency representations can be expressed in terms of it. Nevertheless, the WFT often performs unsatisfactorily for its low resolution. The WignerVille distribution maintains high localization, however it desperately suffers from spurious values in the 5 presence of multicomponents or noise [4]. Recently, some studies have attempted to attain high localization properties using fractional Fourier transform and linear canonical transform. For example, L. Stankovic et al. [24] introduces the windowed fractional Fourier transform (WFrFT) which turnes the timefrequency representations with an angle α, and then applies the WFT to it. It costs the same number of computations as realizations in the time or the frequency domain. A. Bultheel and H. MartinezSulbaran [8] uses a different approach, which generalizes the WFT by substituting the Fourier transform kernel with the linear canonical transform kernel in the WFT definition. It investigates some straightforward properties and two applications, the estimations of the timeofarrival and pulsewidth of chirp signals, and the windowed fractional Fourier transform filtering. In present paper we propose the windowed linear canonical transform (WLCT), as a generalization of the latter, explore its good properties and applications. Improving WFT by using the LCT is first proposed by H. E. Guven and O. Arikan [57]. They, through a different approach, started from basic shearing operations, generalized the group of LCT. Signals with smaller timefrequency support are represented with higher resolution, and the minimum timebandwidth product form of the signal be achieved in several ways, either rotating the support of chirplike signals at a suitable angle, or simply shearing it. Both operations are particular form of LCT. Here they present a generalized method for improving WFT by using LCT. The present thesis generalize the windowed Fourier transform to the windowed linear canonical transform (WLCT), by substituting the Fourier transform kernel with the linear canonical transform kernel in the windowed Fourier transform definition. It displays the time and LCTfrequency infor mation jointly, and is essentially a local LCT distribution, or equivalently, high resolution WFT. The WLCT offers local contents, enjoys high resolution, and eliminates cross terms. In Chapter 1, a brief introduction of the two fundamental timefrequency operators, the LCT and WFT are given. We introduce the real WLCT in chapter 2. Some useful properties are derived, such as covariance property, orthogonality property and inversion formulas. Then the complex WLCT and high dimensional WLCT in Clifford analysis are also discussed. As applications the analogue of the PaleyWiener theorem, uncertainty principles, Poisson summation formula, sampling formulas and series expansions. Moreover, the potential application of WLCT is also given in chapter 3. The window and parameters setting for WLCT are presented in Chapter 4. Finally, the conclusion is given in Chapter 5.
 Issue date

2011.
 Author

Xu, Rui Hui
 Faculty

Faculty of Science and Technology
 Department

Department of Mathematics
 Degree

M.Sc.
 Subject

Linear control systems
Linear systems
System analysis
Integral transforms
 Supervisor

Kou, Kit Ian
 Files In This Item
 Location
 1/F Zone C
 Library URL
 991007321379706306