Non-decimated Quaternion Wavelet Spectral Tools with Applications
Taewoon Kong, Brani Vidakovic

TL;DR
This paper introduces a novel spectral analysis method using non-decimated quaternion wavelets, enhancing feature extraction for machine learning tasks involving signals and images.
Contribution
It proposes a matrix-formulation for non-decimated quaternion wavelet transforms and defines spectral tools based on modulus and phase statistics, improving classification performance.
Findings
Significant performance improvement over standard wavelet methods.
Effective classification of sounds and steel images.
Enhanced feature extraction using quaternionic phases.
Abstract
Quaternion wavelets are redundant wavelet transforms generalizing complex-valued non-decimated wavelet transforms. In this paper we propose a matrix-formulation for non-decimated quaternion wavelet transforms and define spectral tools for use in machine learning tasks. Since quaternionic algebra is an extension of complex algebra, quaternion wavelets bring redundancy in the components that proves beneficial in wavelet based tasks. Specifically, the wavelet coefficients in the decomposition are quaternion-valued numbers that define the modulus and three phases. The novelty of this paper is definition of non-decimated quaternion wavelet spectra based on the modulus and phase-dependent statistics as low-dimensional summaries for 1-D signals or 2-D images. A structural redundancy in non-decimated wavelets and a componential redundancy in quaternion wavelets are linked to extract more…
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Taxonomy
TopicsImage and Signal Denoising Methods · Industrial Vision Systems and Defect Detection · Spectroscopy and Chemometric Analyses
