R. W. Lindsay, D. B. Percival and D. A. Rothrock (1996), `The Discrete Wavelet Transform and the Scale Analysis of the Surface Properties of Sea Ice,' IEEE Trans. on Geoscience and Remote Sensing, 34, no. 3, pp. 771-87.

Summary

The formalism of the one-dimensional discrete wavelet transform (DWT) based on Daubechies wavelet filters is outlined in terms of finite vectors and matrices. Both the scale-dependent wavelet variance and wavelet covariance are considered, and confidence intervals for each are determined. The variance estimates are more accurately determined with a maximal-overlap version of the wavelet transform. The properties of several Daubechies wavelet filters and the associated basis vectors are discussed. Both the Mallat orthogonal-pyramid algorithm for determining the DWT and a pyramid algorithm for determining the maximal-overlap version of the transform are presented in terms of finite vectors. As an example, we investigate the scales of variability of the surface temperature and albedo of spring pack ice in the Beaufort Sea. The data analyzed are from individual lines of a Landsat TM image (25-m sample interval) and include both reflective (channel 3, 30-m resolution) and thermal (channel 6, 120-m resolution) data. The wavelet variance and covariance estimates are presented, and more than half of the variance is accounted for by scales of less than 800 m. A wavelet-based technique for enhancing the lower-resolution thermal data using the reflected data is introduced. The simulated effects of poor instrument resolution on the estimated lead number density and the mean lead width are investigated using a wavelet-based smooth of the observations.

Key Words

Sea ice; Radar remote sensing; Discrete wavelet transform; Scale analysis; Daubechies wavelet filter; scale-dependent wavelet variance; Wavelet covariance; Mallat orthogonal-pyramid algorithm; Spring pack ice; Beaufort Sea

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