介绍了Sisu语音匹配测试(SVMT)——一种评估汉语语音识别的新工具。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Tianze Xu, Xiaoming Jiang, Peng Zhang, Anni Wang
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引用次数: 0

摘要

现有的语音识别标准化测试主要基于印欧语言,尤其是英语。然而,声音身份感知受到语言熟悉程度的影响,听者通常用母语比用外语表现得更好。为了提供更准确和全面的语音识别评估,开发适合考生母语的测试是至关重要的。作为回应,我们开发了Sisu语音匹配测试(SVMT),这是一个专门为普通话使用者设计的开创性工具。支持向量机的设计是为了模拟现实世界的交流,因为它既包括伪词和伪句子刺激,也包括将相同的声音分类为相同的能力,以及将不同的声音分类为不同的能力。基于神经验证的语音空间模型和项目反应理论,支持向量机测试保证了高的信度、效度、适当的难度和较强的判别能力,同时保持了大约10分钟的简洁测试时间。因此,考虑到语言母语的影响,支持向量机测试补充了现有的基于其他语言音系的语音测试,可以更准确地评估汉语普通话使用者的语音识别能力。未来的研究可以利用支持向量机加深我们对人类语音身份感知机制的理解,特别是在特殊人群中,并研究语音身份识别与其他认知过程之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing the Sisu Voice Matching Test (SVMT): A novel tool for assessing voice discrimination in Chinese.

Existing standardized tests for voice discrimination are based mainly on Indo-European languages, particularly English. However, voice identity perception is influenced by language familiarity, with listeners generally performing better in their native language than in a foreign one. To provide a more accurate and comprehensive assessment of voice discrimination, it is crucial to develop tests tailored to the native language of the test takers. In response, we developed the Sisu Voice Matching Test (SVMT), a pioneering tool designed specifically for Mandarin Chinese speakers. The SVMT was designed to model real-world communication since it includes both pseudo-word and pseudo-sentence stimuli and covers both the ability to categorize identical voices as the same and the ability to categorize distinct voices as different. Built on a neurally validated voice-space model and item response theory, the SVMT ensures high reliability, validity, appropriate difficulty, and strong discriminative power, while maintaining a concise test duration of approximately 10 min. Therefore, by taking into account the effects of language nativeness, the SVMT complements existing voice tests based on other languages' phonologies to provide a more accurate assessment of voice discrimination ability for Mandarin Chinese speakers. Future research can use the SVMT to deepen our understanding of the mechanisms underlying human voice identity perception, especially in special populations, and to examining the relationship between voice identity recognition and other cognitive processes.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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