CLSDASJan 25, 2023

A Holistic Cascade System, benchmark, and Human Evaluation Protocol for Expressive Speech-to-Speech Translation

Meta AI
arXiv:2301.10606v121 citationsh-index: 35
Originality Incremental advance
AI Analysis

This work addresses the lack of standard benchmarks and evaluation protocols in expressive S2ST, which is incremental as it builds on existing techniques but integrates them into a more comprehensive framework.

The paper tackles the problem of expressive speech-to-speech translation by proposing a holistic cascade system that combines multiple prosody transfer techniques, outperforming single-aspect systems and enabling bilingual annotators to assess expressive preservation.

Expressive speech-to-speech translation (S2ST) aims to transfer prosodic attributes of source speech to target speech while maintaining translation accuracy. Existing research in expressive S2ST is limited, typically focusing on a single expressivity aspect at a time. Likewise, this research area lacks standard evaluation protocols and well-curated benchmark datasets. In this work, we propose a holistic cascade system for expressive S2ST, combining multiple prosody transfer techniques previously considered only in isolation. We curate a benchmark expressivity test set in the TV series domain and explored a second dataset in the audiobook domain. Finally, we present a human evaluation protocol to assess multiple expressive dimensions across speech pairs. Experimental results indicate that bi-lingual annotators can assess the quality of expressive preservation in S2ST systems, and the holistic modeling approach outperforms single-aspect systems. Audio samples can be accessed through our demo webpage: https://facebookresearch.github.io/speech_translation/cascade_expressive_s2st.

Foundations

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