A Study on Optimally Constructed Compactly Supported Orthogonal Wavelet Filters
Computer Science and Information Systems, Tome 19 (2022) no. 2.

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Compactly supported orthogonal wavelet filters are extensively applied to the analysis and description of abrupt signals in fields such as multimedia. Based on the application of an elementary method for compactly supported orthogonal wavelet filters and the construction of a system of nonlinear equations for filter coefficients, we design compactly supported orthogonal wavelet filters, in which both the scaling and wavelet functions have many vanishing moments, by approximately solving the system of nonlinear equations. However, when solving such a system about filter coefficients of compactly supported wavelets, the most widely used method, the Newton Iteration method, cannot converge to the solution if the selected initial value is not near the exact solution. For such, we propose optimization algorithms for the Gauss-Newton type method that expand the selection range of initial values. The proposed method is optimal and promising when compared to other works, by analyzing the experimental results obtained in terms of accuracy, iteration times, solution speed, and complexity.
Keywords: compactly supported orthogonal wavelets, the least-squares method, Gauss-Newton methods, LMF method
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     author = {Yongkai Fan and Qian Hu and Yun Pan and Chaosheng Huang and Chao Chen and Kuan-Ching Li and Weiguo Lin and Xingang Wu and Yaxuan Li and Wenqian Shang},
     title = {A {Study} on {Optimally} {Constructed} {Compactly} {Supported} {Orthogonal} {Wavelet} {Filters}},
     journal = {Computer Science and Information Systems},
     publisher = {mathdoc},
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Yongkai Fan; Qian Hu; Yun Pan; Chaosheng Huang; Chao Chen; Kuan-Ching Li; Weiguo Lin; Xingang Wu; Yaxuan Li; Wenqian Shang. A Study on Optimally Constructed Compactly Supported Orthogonal Wavelet Filters. Computer Science and Information Systems, Tome 19 (2022) no. 2. http://geodesic.mathdoc.fr/item/CSIS_2022_19_2_a6/