The effectiveness of solving applied problems in the field of speech
technologies is determined by the completeness of the use of phonetic information
obtained in the study of the properties of natural speech. The representation of a
speech signal in digital form opens up wide possibilities for its analysis and processing.
Having a digital representation of a speech signal, we can think about metrics, that is,
the parameters of this signal, with the help of which the program can recognize sounds,
words and sentences with approximately the same result that a healthy hearing aid and
a healthy human brain give.
The effectiveness of solving applied problems in the field of speech
technologies is determined by the completeness of the use of phonetic information
obtained in the study of the properties of natural speech. The representation of a
speech signal in digital form opens up wide possibilities for its analysis and processing.
Having a digital representation of a speech signal, we can think about metrics, that is,
the parameters of this signal, with the help of which the program can recognize sounds,
words and sentences with approximately the same result that a healthy hearing aid and
a healthy human brain give.
№ | Muallifning F.I.Sh. | Lavozimi | Tashkilot nomi |
---|---|---|---|
1 | Nematov S.K. | prorector | TSTU |
2 | Kamolova Y.M. | scientist | TSTU |
№ | Havola nomi |
---|---|
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