Effective feature extraction for robust speech recognition is a widely addressed topic and currently there is much effort to invoke non-stationary signal models instead of quasi-stationary signal models leading to standard features such as LPC or MFCC. Joint amplitude modulation and frequency modulation (AM-FM) is a classical non-parametric approach to non-stationary signal modeling and recently new feature sets for automatic speech recognition (ASR) have been derived based on a multi-band AM-FM representation of the signal. We consider several of these representations and compare their performances for robust speech recognition in noise, using the AURORA-2 database. We show that FEPSTRUM representation proposed is more effective than other...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
When designing noise robust speech recognition feature extraction algorithms, it is common to assume...
All speech recognition systems require some form of signal representation that parametrically models...
Effective feature extraction for robust speech recognition is a widely addressed topic and currently...
We present a new feature representation for speech recognition based on both amplitude modulation sp...
In this paper, a feature extraction algorithm for robust speech recognition is introduced. The featu...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
This paper presents a novel feature extraction scheme tak-ing advantage of both the nonlinear modula...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
The human ability to classify acoustic sounds is still unmatched compared to recent methods in machi...
The results of investigations into some aspects of robust speech recognition are reported in this th...
© 2014 IEEE. We propose a novel exemplar-based feature enhancement method for automatic speech recog...
Performance of an automatic speech recognition system drops dramatically in the presence of backgrou...
This paper describes a novel noise-robust automatic speech recognition (ASR) front-end that employs ...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
When designing noise robust speech recognition feature extraction algorithms, it is common to assume...
All speech recognition systems require some form of signal representation that parametrically models...
Effective feature extraction for robust speech recognition is a widely addressed topic and currently...
We present a new feature representation for speech recognition based on both amplitude modulation sp...
In this paper, a feature extraction algorithm for robust speech recognition is introduced. The featu...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
This paper presents a novel feature extraction scheme tak-ing advantage of both the nonlinear modula...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
The human ability to classify acoustic sounds is still unmatched compared to recent methods in machi...
The results of investigations into some aspects of robust speech recognition are reported in this th...
© 2014 IEEE. We propose a novel exemplar-based feature enhancement method for automatic speech recog...
Performance of an automatic speech recognition system drops dramatically in the presence of backgrou...
This paper describes a novel noise-robust automatic speech recognition (ASR) front-end that employs ...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
When designing noise robust speech recognition feature extraction algorithms, it is common to assume...
All speech recognition systems require some form of signal representation that parametrically models...