Title
PHONEME CLASSIFICATION OVER THE RECONSTRUCTED PHASE SPACE USING PRINCIPAL COMPONENT ANALYSIS
Abstract
Although isolated phoneme classification using features from time-domain phase space reconstruction has been investigated recently, the best representation of feature vectors for the discriminability over phoneme classes is still an open question. This paper applies Principal Component Analysis (PCA) to feature vectors from the reconstructed phase space. By using PCA projection, the basis of the feature space is orthogonalized. A Bayes classifier uses the transformed feature vectors to classify phoneme exemplars. The results show that the classification accuracy with PCA method surpasses the accuracy using only original features in most cases. PCA projection was implemented in three ways over the reconstructed phase space on both speaker-dependent and speaker-independent data. Models are trained and tested using data drawn from the TIMIT database.
Year
Venue
Keywords
2003
NOLISP
feature space,time domain,bayes classifier,data model,phase space,feature vector,principal component analysis
Field
DocType
Citations 
Feature vector,Pattern recognition,Computer science,Phase space,Timit database,Speech recognition,Artificial intelligence,Principal component analysis,Bayes classifier
Conference
2
PageRank 
References 
Authors
0.38
3
3
Name
Order
Citations
PageRank
Jinjin Ye1966.41
Michael T. Johnson243553.51
Richard J. Povinelli322520.40