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Main Authors: Chen, Yang, Wang, Hui, Wang, Shiyao, Chen, Junyang, He, Jiabei, Zhou, Jiaming, Yang, Xi, Wang, Yequan, Lin, Yonghua, Qin, Yong
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.16578
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author Chen, Yang
Wang, Hui
Wang, Shiyao
Chen, Junyang
He, Jiabei
Zhou, Jiaming
Yang, Xi
Wang, Yequan
Lin, Yonghua
Qin, Yong
author_facet Chen, Yang
Wang, Hui
Wang, Shiyao
Chen, Junyang
He, Jiabei
Zhou, Jiaming
Yang, Xi
Wang, Yequan
Lin, Yonghua
Qin, Yong
contents While voice technologies increasingly serve aging populations, current systems exhibit significant performance gaps due to inadequate training data capturing elderly-specific vocal characteristics like presbyphonia and dialectal variations. The limited data available on super-aged individuals in existing elderly speech datasets, coupled with overly simple recording styles and annotation dimensions, exacerbates this issue. To address the critical scarcity of speech data from individuals aged 75 and above, we introduce SeniorTalk, a carefully annotated Chinese spoken dialogue dataset. This dataset contains 55.53 hours of speech from 101 natural conversations involving 202 participants, ensuring a strategic balance across gender, region, and age. Through detailed annotation across multiple dimensions, it can support a wide range of speech tasks. We perform extensive experiments on speaker verification, speaker diarization, speech recognition, and speech editing tasks, offering crucial insights for the development of speech technologies targeting this age group.
format Preprint
id arxiv_https___arxiv_org_abs_2503_16578
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SeniorTalk: A Chinese Conversation Dataset with Rich Annotations for Super-Aged Seniors
Chen, Yang
Wang, Hui
Wang, Shiyao
Chen, Junyang
He, Jiabei
Zhou, Jiaming
Yang, Xi
Wang, Yequan
Lin, Yonghua
Qin, Yong
Computation and Language
Sound
Audio and Speech Processing
While voice technologies increasingly serve aging populations, current systems exhibit significant performance gaps due to inadequate training data capturing elderly-specific vocal characteristics like presbyphonia and dialectal variations. The limited data available on super-aged individuals in existing elderly speech datasets, coupled with overly simple recording styles and annotation dimensions, exacerbates this issue. To address the critical scarcity of speech data from individuals aged 75 and above, we introduce SeniorTalk, a carefully annotated Chinese spoken dialogue dataset. This dataset contains 55.53 hours of speech from 101 natural conversations involving 202 participants, ensuring a strategic balance across gender, region, and age. Through detailed annotation across multiple dimensions, it can support a wide range of speech tasks. We perform extensive experiments on speaker verification, speaker diarization, speech recognition, and speech editing tasks, offering crucial insights for the development of speech technologies targeting this age group.
title SeniorTalk: A Chinese Conversation Dataset with Rich Annotations for Super-Aged Seniors
topic Computation and Language
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2503.16578