[[abstract]]Linear discriminant analysis (LDA) has long been used to derive data-driven temporal filters in order to improve the robustness of speech features used in speech recognition. In this paper, we proposed the use of new optimization criteria of principal component analysis (PCA) and the minimum classification error (NICE) for constructing the temporal filters. Detailed comparative performance analysis for the features obtained using the three optimization criteria, LDA, PCA, and NICE, with various types of noise and a wide range of SNR values is presented. It was found that the new criteria lead to superior performance over the original MFCC features, just as LDA-derived filters can. In addition, the newly proposed MCE-derived filt...
Linear discriminant analysis (LDA) is designed to seek a linear transformation that projects a data ...
In the paper three different feature selection methods applicable to speech recognition are presente...
Feature extraction is an important step in pattern classification and speech recognition. Extracted ...
[[abstract]]Linear discriminant analysis (LDA) has long been used to derive data-driven temporal fil...
Abstract—Linear discriminant analysis (LDA) has long been used to derive data-driven temporal filter...
[[abstract]]Data-driven temporal filtering approaches based on a specific optimization technique hav...
Temporal processing and filtering in speech feature extraction are commonly used to aid in performan...
[[abstract]]Speech is the primary and the most convenient means of communication between people. Due...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
Extending previous works done on considerably smaller data sets, the paper studies linear discrimina...
To precisely model the time dependency of features, segmental unit input HMM with a dimensionality r...
We previously developed noise robust Hierarchical Spectro-Temporal (HIST) speech features. The learn...
This thesis examines techniques to improve the robustness of automatic speech recogni-tion (ASR) sys...
Linear discriminant analysis (LDA) is a simple and effective feature transformation technique that a...
In this paper we study various decorrelation methods for the features used in speech recognition and...
Linear discriminant analysis (LDA) is designed to seek a linear transformation that projects a data ...
In the paper three different feature selection methods applicable to speech recognition are presente...
Feature extraction is an important step in pattern classification and speech recognition. Extracted ...
[[abstract]]Linear discriminant analysis (LDA) has long been used to derive data-driven temporal fil...
Abstract—Linear discriminant analysis (LDA) has long been used to derive data-driven temporal filter...
[[abstract]]Data-driven temporal filtering approaches based on a specific optimization technique hav...
Temporal processing and filtering in speech feature extraction are commonly used to aid in performan...
[[abstract]]Speech is the primary and the most convenient means of communication between people. Due...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
Extending previous works done on considerably smaller data sets, the paper studies linear discrimina...
To precisely model the time dependency of features, segmental unit input HMM with a dimensionality r...
We previously developed noise robust Hierarchical Spectro-Temporal (HIST) speech features. The learn...
This thesis examines techniques to improve the robustness of automatic speech recogni-tion (ASR) sys...
Linear discriminant analysis (LDA) is a simple and effective feature transformation technique that a...
In this paper we study various decorrelation methods for the features used in speech recognition and...
Linear discriminant analysis (LDA) is designed to seek a linear transformation that projects a data ...
In the paper three different feature selection methods applicable to speech recognition are presente...
Feature extraction is an important step in pattern classification and speech recognition. Extracted ...