Error detection of grapheme-to-phoneme conversion in text-to-speech synthesis using speech signal and lexical context

Kevin Vythelingum, Y. Estève, O. Rosec
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引用次数: 5

Abstract

In unit selection text-to-speech synthesis, voice creation involved a phonemic transcription of read speech. This is produced by an automatic grapheme-to-phoneme conversion of the text read, followed by a manual correction. Although grapheme-to-phoneme conversion makes few errors, the manual correction is time consuming as every generated phoneme should be checked. We propose a method to automatically detect grapheme-to-phoneme conversion errors by comparing contrastives phonemisation hypothesis. A lattice-based forced alignment system is implemented, allowing for signal-dependent phonemisation. We implement also a sequence-to-sequence neural network model to obtain a context-dependent grapheme-to-phoneme conversion. On a French dataset, we show that we can detect to 86.3% of the errors made by a commercial grapheme-to-phoneme system. Moreover, the amount of data annotated as erroneous is kept under 10% of the total evaluation data. The time spent for phoneme manual checking can thus been drastically reduced without decreasing significantly the phonemic transcription quality.
基于语音信号和词汇语境的文本-语音合成中字素-音素转换的错误检测
在单元选择中,文本到语音合成,语音的创造涉及到读语音的音位转录。这是通过将所读文本的自动字素到音素转换产生的,然后进行手动校正。虽然字素到音素的转换产生的错误很少,但人工校正非常耗时,因为每个生成的音素都需要检查。提出了一种通过对比音素转换假设自动检测字素到音素转换错误的方法。实现了基于晶格的强制对准系统,允许依赖于信号的声发射。我们还实现了一个序列到序列的神经网络模型,以获得上下文相关的字素到音素转换。在一个法语数据集上,我们表明我们可以检测到86.3%的商用字素到音素系统所犯的错误。此外,标注为错误的数据量保持在总评估数据的10%以下。因此,在不显著降低音位转录质量的情况下,可以大大减少人工检查音位所花费的时间。
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