This paper argues that neural networks are good vehicles for automatic speech recognition not simply because they provide non-linear pattern recognition but because their architecture allows the incorporation and exploitation of existing knowledge about speech. The paper is in two parts: Part I defends the need for the incorporation of existing knowledge while Part II sketches a speech recognition architecture that uses neural networks to represent and exploit existing phonological and linguistic knowledge. The first part of the paper argues that the definition of the speech recognition problem implies that prior knowledge of linguistic analysis is essential for its solution, and suggests that the currently poor exploitation of such knowled...
This paper describes a neural-net based isolated word recogniser that has a better performance on a ...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
Speech recognition is important for successful development of speech recognizers in most real world ...
Abstract. This paper argues that neural networks are good vehicles for automatic speech recognition ...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Over these last few years, the use of Artificial Neural Networks (ANNs), now often referred to as de...
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...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Speech recognition is a subjective phenomenon. Despite being a huge research in this field, this pro...
Abstract- Neural network architecture is widely used in computer science for solving complex problem...
Abstract — Speech Recognition is the translation of spoken words into text. Speech recognition invol...
The field of digital speech processing may be divided into three distinct and somewhat in- depend...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
This paper describes a neural-net based isolated word recogniser that has a better performance on a ...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
Speech recognition is important for successful development of speech recognizers in most real world ...
Abstract. This paper argues that neural networks are good vehicles for automatic speech recognition ...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Over these last few years, the use of Artificial Neural Networks (ANNs), now often referred to as de...
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...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Speech recognition is a subjective phenomenon. Despite being a huge research in this field, this pro...
Abstract- Neural network architecture is widely used in computer science for solving complex problem...
Abstract — Speech Recognition is the translation of spoken words into text. Speech recognition invol...
The field of digital speech processing may be divided into three distinct and somewhat in- depend...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
This paper describes a neural-net based isolated word recogniser that has a better performance on a ...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
Speech recognition is important for successful development of speech recognizers in most real world ...