Title :
Multitaper power spectrum estimation and thresholding: wavelet packets versus wavelets
Author :
Cristán, Alberto Contreras ; Walden, Andrew T.
Author_Institution :
Instituto de Investigaciones en Matematicas Aplicados y Sistemas, Nat. Autonomous Univ. of Mexico, Mexico City, Mexico
fDate :
12/1/2002 12:00:00 AM
Abstract :
It was suggested that spectrum estimation can be accomplished by applying wavelet denoising methodology to wavelet packet coefficients derived from the logarithm of a spectrum estimate. The particular algorithm we consider consists of computing the logarithm of the multitaper spectrum estimator, applying an orthonormal transform derived from a wavelet packet tree to the log multitaper spectrum ordinates, thresholding the empirical wavelet packet coefficients, and then inverting the transform. For a small number of tapers, suitable transforms/partitions for the logarithm of the multitaper spectrum estimator are derived using a method matched to statistical thresholding properties. The partitions thus derived starting from different stationary time series are all similar and easily derived, and any differences between the wavelet packet and discrete wavelet transform (DWT) approaches are minimal. For a larger number of tapers, where the chosen parameters satisfy the conditions of a proven theorem, the simple DWT again emerges as appropriate. Hence, using our approach to thresholding and the method of partitioning, we conclude that the DWT approach is a very adequate wavelet-based approach and that the use of wavelet packets is unnecessary.
Keywords :
discrete wavelet transforms; signal denoising; spectral analysis; statistical analysis; time series; DWT; discrete wavelet transform; log multitaper spectrum ordinates; logarithm; logarithm multitaper spectrum estimator; multitaper power spectrum estimation; multitaper power spectrum thresholding; orthonormal transform; spectral analysis; stationary time series; statistical thresholding; transform inversion; wavelet denoising; wavelet packet coefficients; wavelet packet tree; wavelet packets; wavelet-based approach; Associate members; Discrete Fourier transforms; Discrete wavelet transforms; Frequency; Noise reduction; Smoothing methods; Spectral analysis; Wavelet coefficients; Wavelet packets; Wavelet transforms;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2002.805503