Automatic Speech Recognition products are already available in the market since many years ago. Intensive research and development still continue for further improvement of speech technology. Among typical methods that have been applied to speech technology are Hidden Markov Model (HMM), Dynamic Time Warping (DTW), and Neural Network (NN). However previous research relied heavily on the HMM without paying much attention to Neural Network (NN). In this research, NN with back-propagation algorithm is used to perform the recognition, with inputs derived from Linear Predictive Coefficient (LPC) and pitch feature. It is known that back-propagation NN is capable of handling large learning problems and is a very promising method due to its ability...
In this work, the speaker normalisation problem is afforded by two different techniques. The first o...
Recently, automatic speech recognition (ASR) systems that use deep neural networks (DNNs) for acoust...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
This paper presents the pre-processing of speech templates for artificial neural network (ANN). The ...
This paper presents a procedure of frame normalization based on the traditional dynamic time warping...
This paper presents a method to extract existing speech features in dynamic time warping path which ...
This paper presents a method to extract existing speech features in dynamic time warping path which ...
Abstract. A pre-processing of linear predictive coefficient (LPC) features for preparation of reliab...
This paper presents the neural network (NN) speech recognition using processed LPC input features. B...
This paper presents pre-processing of input features to artificial neural network (NN). This is for ...
This paper presents the neural network (NN) speech recognition using processed LPC input features. B...
This paper presents pre-processing of input features to artificial neural network (NN). This is fo...
This paper presents pre-processing of input features to artificial neural network (NN). This is fo...
The development for speech recognition system has been for a while. The recognition platform can be ...
In this paper, the artificial neural networks are implemented to accomplish the English alphabet spe...
In this work, the speaker normalisation problem is afforded by two different techniques. The first o...
Recently, automatic speech recognition (ASR) systems that use deep neural networks (DNNs) for acoust...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
This paper presents the pre-processing of speech templates for artificial neural network (ANN). The ...
This paper presents a procedure of frame normalization based on the traditional dynamic time warping...
This paper presents a method to extract existing speech features in dynamic time warping path which ...
This paper presents a method to extract existing speech features in dynamic time warping path which ...
Abstract. A pre-processing of linear predictive coefficient (LPC) features for preparation of reliab...
This paper presents the neural network (NN) speech recognition using processed LPC input features. B...
This paper presents pre-processing of input features to artificial neural network (NN). This is for ...
This paper presents the neural network (NN) speech recognition using processed LPC input features. B...
This paper presents pre-processing of input features to artificial neural network (NN). This is fo...
This paper presents pre-processing of input features to artificial neural network (NN). This is fo...
The development for speech recognition system has been for a while. The recognition platform can be ...
In this paper, the artificial neural networks are implemented to accomplish the English alphabet spe...
In this work, the speaker normalisation problem is afforded by two different techniques. The first o...
Recently, automatic speech recognition (ASR) systems that use deep neural networks (DNNs) for acoust...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...