Title :
Discriminative kernel learning in ambiguity domain
Author :
Sugavaneswaran, L. ; Balouchestani, Mohammadreza ; Umapathy, K. ; Krishnan, Sridhar
Author_Institution :
Dept. of Electr. & Comput. Eng., Ryerson Univ., Toronto, ON, Canada
Abstract :
Research in stochastic signal analysis is targeted towards two main objectives: (i) to obtain an overall dimensionality reduction and (ii) to provide reasonable characteristic estimates for quantification applications. Owing to the improved performance characteristics, time-frequency (TF) transformation tools are commonly used for such analysis. In this article, we propose a one-step characterization approach that exploits the collective advantages of TF analysis and discriminative kernels in the intermediate ambiguity domain (AD) for non-stationary signal analysis. Here, a machine learning kernel is used to suitably model the AD-map, following which certain robust AD-based features are extracted from the signal- and cross-term (generated during TF transformation) components. The novelty of the work is also geared towards finding out the usefulness of cross-terms for non-stationary signal classification applications. The proposed technique is evaluated for a multiclass quantification problem using one of the challenging stochastic triangular waveform datasets. Obtained misclassification accuracies are close to the theoretical minimum, previously reported using a Bayes classifier. Results indicate that this scheme shows great potential and can be extended in design of robust tools for real-life signal non-stationary analysis.
Keywords :
Bayes methods; learning (artificial intelligence); signal classification; time-frequency analysis; Bayes classifier; discriminative kernel learning; intermediate ambiguity domain; machine learning kernel; multiclass quantification problem; nonstationary signal classification application; nonstationary stochastic signal analysis; one-step characterization approach; overall dimensionality reduction; reasonable characteristic estimates; robust AD-based feature extraction; stochastic triangular waveform datasets; time-frequency transformation tools; Feature extraction; Kernel; Robustness; Signal processing; Support vector machines; Time-frequency analysis; Vectors; ambiguity domain; generative model; kernels; positive-definite; time-varying signals;
Conference_Titel :
Communication Systems, Networks & Digital Signal Processing (CSNDSP), 2014 9th International Symposium on
Conference_Location :
Manchester
DOI :
10.1109/CSNDSP.2014.6923836