On Granularity of Prosodic Representations in Expressive Text-to-Speech

Mikolaj Babianski, Kamil Pokora, Raahil Shah, Rafał Sienkiewicz, Daniel Korzekwa, V. Klimkov
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引用次数: 3

Abstract

In expressive speech synthesis it is widely adopted to use latent prosody representations to deal with variability of the data during training. Same text may correspond to various acoustic realizations, which is known as a one-to-many mapping problem in text-to-speech. Utterance, word, or phoneme-level representations are extracted from target signal in an auto-encoding setup, to complement phonetic input and simplify that mapping. This paper compares prosodic embeddings at different levels of granularity and examines their prediction from text. We show that utterance-level embeddings have insufficient capacity and phoneme-level tend to introduce instabilities when predicted from text. Word-level representations impose balance between capacity and predictability. As a result, we close the gap in naturalness by 90% between synthetic speech and recordings on LibriTTS dataset, without sacrificing intelligibility.
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文本-语音表达中韵律表征的粒度研究
在表达性语音合成中,使用潜在韵律表示来处理训练过程中数据的可变性被广泛采用。同一文本可能对应不同的声学实现,这是文本到语音中的一对多映射问题。在自动编码设置中,从目标信号中提取语音、单词或音素级表示,以补充语音输入并简化映射。本文比较了不同粒度层次的韵律嵌入,并从文本中检验了它们的预测。我们发现,话语级嵌入的容量不足,而从文本预测时,音素级嵌入往往会引入不稳定性。单词级表示在容量和可预测性之间实现平衡。因此,我们在不牺牲可理解性的情况下,将合成语音与LibriTTS数据集上的录音之间的自然度差距缩小了90%。
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