Abstract: This paper addresses the problem of speech recognition to identify various modes of speech data. Speaker sounds are the acoustic sounds of speech. Statistical models of speech have been widely used for speech recognition under neural networks. In paper we propose and try to justify a new model in which speech co articulation the effect of phonetic context on speech sound is modeled explicitly under a statistical framework. We study speech phone recognition by recurrent neural networks and SOUL Neural Networks. A general framework for recurrent neural networks and considerations for network training are discussed in detail. SOUL NN clustering the large vocabulary that compresses huge data sets of speech. This project also different...
Abstract — Speech Recognition is the translation of spoken words into text. Speech recognition invol...
In this paper we present an efficient system for independent speaker speech recognition based on neu...
Recurrent neural network language models (RNNLMs) are powerful language modeling techniques. Signifi...
This thesis addresses the problem of speech phone recognition. Phones are the acoustic sounds of spe...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Phoneme recognition is important for successful development of speech recognizers in most real world...
Speech recognition is a subjective phenomenon. Despite being a huge research in this field, this pro...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Speech is an easiest way to communicate with each other. Digital processing of speechsignals is very...
Understanding speech has always been among the few things that the computer is capable of doing. Thi...
Understanding speech has always been among the few things that the computer is capable of doing. Thi...
Abstract:-Speech processing is the study of speech signals, and the methods used to process them. In...
Speaker recognition is becoming an increasingly popular technology in today’s society. Besides being...
This paper presents a speech recognition system which incorporates predictive neural networks. The ...
This paper argues that neural networks are good vehicles for automatic speech recognition not simply...
Abstract — Speech Recognition is the translation of spoken words into text. Speech recognition invol...
In this paper we present an efficient system for independent speaker speech recognition based on neu...
Recurrent neural network language models (RNNLMs) are powerful language modeling techniques. Signifi...
This thesis addresses the problem of speech phone recognition. Phones are the acoustic sounds of spe...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Phoneme recognition is important for successful development of speech recognizers in most real world...
Speech recognition is a subjective phenomenon. Despite being a huge research in this field, this pro...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Speech is an easiest way to communicate with each other. Digital processing of speechsignals is very...
Understanding speech has always been among the few things that the computer is capable of doing. Thi...
Understanding speech has always been among the few things that the computer is capable of doing. Thi...
Abstract:-Speech processing is the study of speech signals, and the methods used to process them. In...
Speaker recognition is becoming an increasingly popular technology in today’s society. Besides being...
This paper presents a speech recognition system which incorporates predictive neural networks. The ...
This paper argues that neural networks are good vehicles for automatic speech recognition not simply...
Abstract — Speech Recognition is the translation of spoken words into text. Speech recognition invol...
In this paper we present an efficient system for independent speaker speech recognition based on neu...
Recurrent neural network language models (RNNLMs) are powerful language modeling techniques. Signifi...