A new model of intonation for use with speech synthesis and recognition
نویسندگان
چکیده
This paper describes a synthesis from analysis scheme for producing natural sounding intonation for speech synthesis. The paper presents a new method of describing F0 contours in terms of three basic phonetic intonation elements. Details are given of an automatic system for labelling F0 contours, which could be used for speech recognition purposes. Current work on extracting a phonological description from this phonetic description is discussed.
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