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Scoring voice likability using pair-comparison: Laboratory vs. crowdsourcing approach

机译:使用配对比较评分语音可爱:实验室与众包方法

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Crowdsourcing has established itself as a powerful tool to collect human input for data acquisition and labeling. Conventional laboratory experiments can now be addressed to a wider and diverse audience. This paper presents a study performed both in a laboratory and on a mobile-crowdsourcing platform, adopting a paired-comparison setup to obtain ratings of voice likability. We show considerations taken to adequately adapt the laboratory-based test to the remote-labour approach. Once all pair-comparison answers were collected, preference choice matrices were built and the Bradley-Terry-Luce probabilistic choice model was applied to estimate a ratio scale of preferences, reflecting the voice likability scores. Our results show a strong correlation between the scores obtained by the two approaches considered, which indicates the validity of crowdsourcing for the acquisition of voice likability ratings. This is of great benefit when datasets need to be quickly and reliably labeled for speech applications relying on detection or on synthesis of speaker and voice characteristics.
机译:众包已成为收集数据采集和标签的人为投入的强大工具。现在可以解决传统的实验室实验到更广泛和多样化的受众。本文提出了在实验室和移动众包平台上进行的研究,采用配对的比较设置来获得语音可爱的评级。我们表明考虑到充分适应基于实验室的测试对远程劳动方法。一旦收集了所有对比较答案,就建造了偏好选择矩阵,并应用了布拉德利 - 劳瑞 - 劳动概率选择模型来估计偏好的比例比例,反映了语音可爱分数。我们的结果表明,通过考虑的两种方法获得的分数与众所周知的有效性之间的有效性。当数据集需要快速可靠地标记依赖于检测或扬声器和语音特性的合成时,这是一个很大的好处。

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