Библиографическое описание на языке оригинала |
Borodovskaya L. Z., Yavgildina Z. M.,Dyganova E. A., Maykovskaya L.S., Medvedeva I.A. Automatic musical transcription of the Tatar folk song: comparative analysis of AI-powered programs // RAST MUSICOLOGY JOURNAL, SPRING 2022, 10(1) 147-161. DOI: 10.12975/rastmd.20221018 (Borodovskaya, L. , Yavgildina, Z. , Dyganova, E. , Maykovskaya, L. & Medvedeva, I. (2022). The possibilities of artificial intelligence in automatic musical transcription of the Tatar folk song . Rast Müzikoloji Dergisi , 10 (1) , 147-161 . DOI: 10.12975/rastmd.20221018) |
Поле DC |
Значение |
Язык |
dc.contributor.author |
Дыганова Елена Александровна |
ru_RU |
dc.contributor.author |
Явгильдина Бородовская Майковская |
ru_RU |
dc.date.accessioned |
2022-01-01T00:00:00Z |
ru_RU |
dc.date.available |
2022-01-01T00:00:00Z |
ru_RU |
dc.date.issued |
2022 |
ru_RU |
dc.identifier.citation |
Borodovskaya L. Z., Yavgildina Z. M.,Dyganova E. A., Maykovskaya L.S., Medvedeva I.A. Automatic musical transcription of the Tatar folk song: comparative analysis of AI-powered programs // RAST MUSICOLOGY JOURNAL, SPRING 2022, 10(1) 147-161. DOI: 10.12975/rastmd.20221018 (Borodovskaya, L. , Yavgildina, Z. , Dyganova, E. , Maykovskaya, L. & Medvedeva, I. (2022). The possibilities of artificial intelligence in automatic musical transcription of the Tatar folk song . Rast Müzikoloji Dergisi , 10 (1) , 147-161 . DOI: 10.12975/rastmd.20221018) |
ru_RU |
dc.identifier.uri |
https://repository.kpfu.ru/?p_id=266098 |
ru_RU |
dc.description.abstract |
RAST MUSICOLOGY JOURNAL |
ru_RU |
dc.description.abstract |
This article is relevant due to the loss of the carriers of folk music that needs to be recorded in digital audio formats and requires music transcription for the subsequent creation of collections for the purposes of scientific research by ethnomusicologists. The study aims at determining the need to use software for the automatic music transcription of audio recordings of folk music. The main research method is the comparative analysis of the music transcription of the Tatar Kryashen songs performed by people and three AI-powered programs (Celemony Melodyne, AudioScore Ultimate and Cubase). Then we compared the scores we prepared and the visual data of three programs: wave, spectral, “piano roll” and traditional music scores. According to five evaluation parameters (the accuracy of displaying a melody, rhythm, key, time signature and subjective assessment), the Cubase program was recognized as the most user-friendly. It is still controversial whether to use artificial intelligence for the music transcription of folk songs since music researchers decide for themselves. The undoubted benefit of the automatic music transcription of folk music is the rapid analysis of audio recordings, the ability to create more music notations in a shorter time, assist in the analysis of fragments that are difficult to hear by ear and restore damaged audio recordings. |
ru_RU |
dc.language.iso |
ru |
ru_RU |
dc.subject |
automatic music transcription |
ru_RU |
dc.subject |
computational ethnomusicology |
ru_RU |
dc.subject |
Tatar folk song
|
ru_RU |
dc.title |
Borodovskaya L. Z., Yavgildina Z. M.,Dyganova E. A., Maykovskaya L.S., Medvedeva I.A. Automatic musical transcription of the Tatar folk song: comparative analysis of AI-powered programs // RAST MUSICOLOGY JOURNAL, SPRING 2022, 10(1) 147-161. DOI: 10.12975/rastmd.20221018 (Borodovskaya, L. , Yavgildina, Z. , Dyganova, E. , Maykovskaya, L. & Medvedeva, I. (2022). The possibilities of artificial intelligence in automatic musical transcription of the Tatar folk song . Rast Müzikoloji Dergisi , 10 (1) , 147-161 . DOI: 10.12975/rastmd.20221018) |
ru_RU |
dc.type |
Статьи в зарубежных журналах и сборниках |
ru_RU |
|