SDAIASSPFeb 28, 2023

CrossSpeech: Speaker-independent Acoustic Representation for Cross-lingual Speech Synthesis

arXiv:2302.14370v210 citationsh-index: 11
AI Analysis

This addresses the performance gap in cross-lingual TTS for applications requiring high-quality, speaker-consistent speech synthesis across languages.

The paper tackled the speaker-language entanglement problem in cross-lingual text-to-speech (TTS) by proposing CrossSpeech, which disentangles speaker and language information in the acoustic feature space, resulting in significant improvements in speaker similarity to the target speaker.

While recent text-to-speech (TTS) systems have made remarkable strides toward human-level quality, the performance of cross-lingual TTS lags behind that of intra-lingual TTS. This gap is mainly rooted from the speaker-language entanglement problem in cross-lingual TTS. In this paper, we propose CrossSpeech which improves the quality of cross-lingual speech by effectively disentangling speaker and language information in the level of acoustic feature space. Specifically, CrossSpeech decomposes the speech generation pipeline into the speaker-independent generator (SIG) and speaker-dependent generator (SDG). The SIG produces the speaker-independent acoustic representation which is not biased to specific speaker distributions. On the other hand, the SDG models speaker-dependent speech variation that characterizes speaker attributes. By handling each information separately, CrossSpeech can obtain disentangled speaker and language representations. From the experiments, we verify that CrossSpeech achieves significant improvements in cross-lingual TTS, especially in terms of speaker similarity to the target speaker.

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