Title :
Selective feature extraction via signal decomposition
Author :
Wang, Kuansan ; Lee, Chin-Hui ; Juang, Biing-hwang
Author_Institution :
NYNEX Sci. & Technol. Inc., White Plains, NY, USA
Abstract :
In this article, a mathematical framework that jointly optimizes the parameters of classifier and feature extractor is presented. In this approach, feature extraction is formulated as a process of projecting the signals onto a smaller subspace in which the statistical properties of the signal can be efficiently modeled. An algorithm, called statistical matching pursuit (SMP), is proposed to learn from the training data the optimal projection dimensions and the extent of signal reduction. The algorithm is designed to achieve unconditional convergence and can be seamlessly incorporated into the expectation-maximization (EM) algorithm employed to train the classifier. Finally, we report some experimental results on speech recognition and elaborate the potential of the proposed method.
Keywords :
convergence of numerical methods; feature extraction; maximum likelihood estimation; pattern classification; statistical analysis; expectation-maximization algorithm; feature extraction; maximum likelihood criterion; optimal projection dimensions; parameters optimisation; pattern classifier; signal decomposition; signal reduction; statistical matching pursuit algorithm; statistical properties; unconditional convergence; Algorithm design and analysis; Convergence; Data mining; Feature extraction; Matching pursuit algorithms; Pursuit algorithms; Signal processing; Signal resolution; Speech recognition; Training data;
Journal_Title :
Signal Processing Letters, IEEE