利用潜在语音表征模拟母语演讲者影子,进行非母语语音评估

Haopeng Geng, Daisuke Saito, Minematsu Nobuaki
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引用次数: 0

摘要

评估语音可懂度是计算机辅助语言学习系统中的一项重要任务。传统方法通常依赖自动语音识别(ASR)提供的单词错误率(WER)作为可懂度评分,但由于人类语音识别(HSR)和自动语音识别(ASR)之间存在显著差异,这种方法存在很大局限性。一个很有前途的替代方法是让母语(L1)说话者对非母语(L2)说话者所说的话进行跟读,母语(L1)说话者跟读语篇中的断句或错误发音可以作为评估 L2 语音可懂度的指标。在这项研究中,我们提出了一种语音生成系统,该系统利用语音转换(VC)技术和潜在语音表征来模拟 L1 阴影过程。实验结果表明,这种方法有效地复制了 L1 阴影过程,为评估 L2 语音智能提供了一种创新工具。值得注意的是,利用自我监督语音表征(S3R)的系统在语言准确性和自然度方面都与真实的 L1 阴影表现出更高的相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulating Native Speaker Shadowing for Nonnative Speech Assessment with Latent Speech Representations
Evaluating speech intelligibility is a critical task in computer-aided language learning systems. Traditional methods often rely on word error rates (WER) provided by automatic speech recognition (ASR) as intelligibility scores. However, this approach has significant limitations due to notable differences between human speech recognition (HSR) and ASR. A promising alternative is to involve a native (L1) speaker in shadowing what nonnative (L2) speakers say. Breakdowns or mispronunciations in the L1 speaker's shadowing utterance can serve as indicators for assessing L2 speech intelligibility. In this study, we propose a speech generation system that simulates the L1 shadowing process using voice conversion (VC) techniques and latent speech representations. Our experimental results demonstrate that this method effectively replicates the L1 shadowing process, offering an innovative tool to evaluate L2 speech intelligibility. Notably, systems that utilize self-supervised speech representations (S3R) show a higher degree of similarity to real L1 shadowing utterances in both linguistic accuracy and naturalness.
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