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Autores principales: Wang, Zihao, Yuan, Ruibin, Geng, Ziqi, Li, Hengjia, Qu, Xingwei, Li, Xinyi, Chen, Songye, Fu, Haoying, Dannenberg, Roger B., Zhang, Kejun
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2512.07005
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author Wang, Zihao
Yuan, Ruibin
Geng, Ziqi
Li, Hengjia
Qu, Xingwei
Li, Xinyi
Chen, Songye
Fu, Haoying
Dannenberg, Roger B.
Zhang, Kejun
author_facet Wang, Zihao
Yuan, Ruibin
Geng, Ziqi
Li, Hengjia
Qu, Xingwei
Li, Xinyi
Chen, Songye
Fu, Haoying
Dannenberg, Roger B.
Zhang, Kejun
contents Singing accent research is underexplored compared to speech accent studies, primarily due to the scarcity of suitable datasets. Existing singing datasets often suffer from detail loss, frequently resulting from the vocal-instrumental separation process. Additionally, they often lack regional accent annotations. To address this, we introduce the Multi-Accent Mandarin Dry-Vocal Singing Dataset (MADVSD). MADVSD comprises over 670 hours of dry vocal recordings from 4,206 native Mandarin speakers across nine distinct Chinese regions. In addition to each participant recording audio of three popular songs in their native accent, they also recorded phonetic exercises covering all Mandarin vowels and a full octave range. We validated MADVSD through benchmark experiments in singing accent recognition, demonstrating its utility for evaluating state-of-the-art speech models in singing contexts. Furthermore, we explored dialectal influences on singing accent and analyzed the role of vowels in accentual variations, leveraging MADVSD's unique phonetic exercises.
format Preprint
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institution arXiv
publishDate 2025
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spellingShingle Multi-Accent Mandarin Dry-Vocal Singing Dataset: Benchmark for Singing Accent Recognition
Wang, Zihao
Yuan, Ruibin
Geng, Ziqi
Li, Hengjia
Qu, Xingwei
Li, Xinyi
Chen, Songye
Fu, Haoying
Dannenberg, Roger B.
Zhang, Kejun
Sound
Artificial Intelligence
Singing accent research is underexplored compared to speech accent studies, primarily due to the scarcity of suitable datasets. Existing singing datasets often suffer from detail loss, frequently resulting from the vocal-instrumental separation process. Additionally, they often lack regional accent annotations. To address this, we introduce the Multi-Accent Mandarin Dry-Vocal Singing Dataset (MADVSD). MADVSD comprises over 670 hours of dry vocal recordings from 4,206 native Mandarin speakers across nine distinct Chinese regions. In addition to each participant recording audio of three popular songs in their native accent, they also recorded phonetic exercises covering all Mandarin vowels and a full octave range. We validated MADVSD through benchmark experiments in singing accent recognition, demonstrating its utility for evaluating state-of-the-art speech models in singing contexts. Furthermore, we explored dialectal influences on singing accent and analyzed the role of vowels in accentual variations, leveraging MADVSD's unique phonetic exercises.
title Multi-Accent Mandarin Dry-Vocal Singing Dataset: Benchmark for Singing Accent Recognition
topic Sound
Artificial Intelligence
url https://arxiv.org/abs/2512.07005