CASPER: A Large Scale Spontaneous Speech Dataset
- URL: http://arxiv.org/abs/2506.00267v3
- Date: Wed, 11 Jun 2025 08:02:37 GMT
- Title: CASPER: A Large Scale Spontaneous Speech Dataset
- Authors: Cihan Xiao, Ruixing Liang, Xiangyu Zhang, Mehmet Emre Tiryaki, Veronica Bae, Lavanya Shankar, Rong Yang, Ethan Poon, Emmanuel Dupoux, Sanjeev Khudanpur, Leibny Paola Garcia Perera,
- Abstract summary: This paper introduces our dataset and methodology, laying the groundwork for addressing the shortage of spontaneous speech data.<n>We plan to expand this dataset in future stages, offering a growing resource for the research community.
- Score: 25.446606381490025
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The success of large language models has driven interest in developing similar speech processing capabilities. However, a key challenge is the scarcity of high-quality spontaneous speech data, as most existing datasets contain scripted dialogues. To address this, we present a novel pipeline for eliciting and recording natural dialogues and release our dataset with 100+ hours of spontaneous speech. Our approach fosters fluid, natural conversations while encouraging a diverse range of topics and interactive exchanges. Unlike traditional methods, it facilitates genuine interactions, providing a reproducible framework for future data collection. This paper introduces our dataset and methodology, laying the groundwork for addressing the shortage of spontaneous speech data. We plan to expand this dataset in future stages, offering a growing resource for the research community.
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