All speech recognition systems require some form of signal representation that parametrically models the temporal evolution of the spectral envelope. Current parameterizations involve, either explicitly or implicitly, a set of energies from frequency bands which are often distributed in a mel scale. The computation of those filterbank energies (FBE) always includes smoothing of basic spectral measurements and non-linear amplitude compression. A variety of linear transformations are typically applied to this time-frequency representation prior to the Hidden Markov Model (HMM) pattern-matching stage of recognition. In the paper, we will discuss some robustness issues involved in both the computation of the FBEs and the posterior linear transf...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
In this paper we address the problem of automatic speech recognition when wireless speech communicat...
All speech recognition systems require some form of signal representation that parametrically models...
All speech recognition systems require some form of signal representation that parametrically models...
very speech recognition system requires a signal representation that parametrically models the tempo...
very speech recognition system requires a signal representation that parametrically models the tempo...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
Recently, the advantages of the spectral parameters obtained by frequency filtering (FF) of the loga...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
The spectral parameters that result from filtering the frequency sequence of log mel-scaled filter-b...
Item does not contain fulltextThis paper investigates a computational model that combines a frontend...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
This thesis addresses the general problem of maintaining robust automatic speech recognition (ASR) p...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
In this paper we address the problem of automatic speech recognition when wireless speech communicat...
All speech recognition systems require some form of signal representation that parametrically models...
All speech recognition systems require some form of signal representation that parametrically models...
very speech recognition system requires a signal representation that parametrically models the tempo...
very speech recognition system requires a signal representation that parametrically models the tempo...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
Recently, the advantages of the spectral parameters obtained by frequency filtering (FF) of the loga...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
The spectral parameters that result from filtering the frequency sequence of log mel-scaled filter-b...
Item does not contain fulltextThis paper investigates a computational model that combines a frontend...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
This thesis addresses the general problem of maintaining robust automatic speech recognition (ASR) p...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
In this paper we address the problem of automatic speech recognition when wireless speech communicat...