Converting vocal performances into sheet music leveraging large language models
Advanced natural language processing (NLP) models are increasingly applied in music composition and performance, particularly for generating vocal melodies and simulating singing voices. While NLP techniques have been effective in analyzing vocal performance data to assess quality and style, the aut...
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sg-smu-ink.sis_research-107042024-11-28T08:57:16Z Converting vocal performances into sheet music leveraging large language models JIANG, Jinjing NICOLE ANNE HUI-YING TEO, PEN, Haibo HO, Seng-Beng WANG, Zhaoxia Advanced natural language processing (NLP) models are increasingly applied in music composition and performance, particularly for generating vocal melodies and simulating singing voices. While NLP techniques have been effective in analyzing vocal performance data to assess quality and style, the automatic transcription of vocal performances into sheet music remains a significant challenge. Manual transcription tools often fall short due to the intricate dynamics of vocal expression. This study tackles the automation of vocal performance transcription into sheet music using innovative techniques, including large language models (LLMs). We propose a method to translate vocal audio input into display-ready sheet music effectively. Our findings reveal the strengths and limitations of various approaches, especially in transcribing a cappella performances into notes and lyrics. This research advances the field of NLP-driven music analysis and underscores the transformative potential of these models in vocal transcription. 2024-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9704 info:doi/ICDMW65004.2024.00063 https://ink.library.smu.edu.sg/context/sis_research/article/10704/viewcontent/sentire2024teo.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University natural language processing vocal transcription sheet music automation large language models a cappella music analysis vocal melodies music composition singing voice simulation transcription tools Artificial Intelligence and Robotics |
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natural language processing vocal transcription sheet music automation large language models a cappella music analysis vocal melodies music composition singing voice simulation transcription tools Artificial Intelligence and Robotics JIANG, Jinjing NICOLE ANNE HUI-YING TEO, PEN, Haibo HO, Seng-Beng WANG, Zhaoxia Converting vocal performances into sheet music leveraging large language models |
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Advanced natural language processing (NLP) models are increasingly applied in music composition and performance, particularly for generating vocal melodies and simulating singing voices. While NLP techniques have been effective in analyzing vocal performance data to assess quality and style, the automatic transcription of vocal performances into sheet music remains a significant challenge. Manual transcription tools often fall short due to the intricate dynamics of vocal expression. This study tackles the automation of vocal performance transcription into sheet music using innovative techniques, including large language models (LLMs). We propose a method to translate vocal audio input into display-ready sheet music effectively. Our findings reveal the strengths and limitations of various approaches, especially in transcribing a cappella performances into notes and lyrics. This research advances the field of NLP-driven music analysis and underscores the transformative potential of these models in vocal transcription. |
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JIANG, Jinjing NICOLE ANNE HUI-YING TEO, PEN, Haibo HO, Seng-Beng WANG, Zhaoxia |
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JIANG, Jinjing NICOLE ANNE HUI-YING TEO, PEN, Haibo HO, Seng-Beng WANG, Zhaoxia |
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JIANG, Jinjing |
title |
Converting vocal performances into sheet music leveraging large language models |
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Converting vocal performances into sheet music leveraging large language models |
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Converting vocal performances into sheet music leveraging large language models |
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Converting vocal performances into sheet music leveraging large language models |
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Converting vocal performances into sheet music leveraging large language models |
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converting vocal performances into sheet music leveraging large language models |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/sis_research/9704 https://ink.library.smu.edu.sg/context/sis_research/article/10704/viewcontent/sentire2024teo.pdf |
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