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Papers/Text-Free Prosody-Aware Generative Spoken Language Modeling

Text-Free Prosody-Aware Generative Spoken Language Modeling

Eugene Kharitonov, Ann Lee, Adam Polyak, Yossi Adi, Jade Copet, Kushal Lakhotia, Tu-Anh Nguyen, Morgane Rivière, Abdelrahman Mohamed, Emmanuel Dupoux, Wei-Ning Hsu

2021-09-07ACL 2022 5Language Modelling
PaperPDFCode(official)

Abstract

Speech pre-training has primarily demonstrated efficacy on classification tasks, while its capability of generating novel speech, similar to how GPT-2 can generate coherent paragraphs, has barely been explored. Generative Spoken Language Modeling (GSLM) \cite{Lakhotia2021} is the only prior work addressing the generative aspects of speech pre-training, which replaces text with discovered phone-like units for language modeling and shows the ability to generate meaningful novel sentences. Unfortunately, despite eliminating the need of text, the units used in GSLM discard most of the prosodic information. Hence, GSLM fails to leverage prosody for better comprehension, and does not generate expressive speech. In this work, we present a prosody-aware generative spoken language model (pGSLM). It is composed of a multi-stream transformer language model (MS-TLM) of speech, represented as discovered unit and prosodic feature streams, and an adapted HiFi-GAN model converting MS-TLM outputs to waveforms. We devise a series of metrics for prosody modeling and generation, and re-use metrics from GSLM for content modeling. Experimental results show that the pGSLM can utilize prosody to improve both prosody and content modeling, and also generate natural, meaningful, and coherent speech given a spoken prompt. Audio samples can be found at https://speechbot.github.io/pgslm. Codes and models are available at https://github.com/pytorch/fairseq/tree/main/examples/textless_nlp/pgslm.

Results

TaskDatasetMetricValueModel
Language ModellingSALMonBackground (Domain) Consistency57pGSLM
Language ModellingSALMonBackground (Random) Consistency66pGSLM
Language ModellingSALMonBackground Alignment53.5pGSLM
Language ModellingSALMonGender Consistency88.5pGSLM
Language ModellingSALMonRoom Consistency53.5pGSLM
Language ModellingSALMonSentiment Alignment55.5pGSLM
Language ModellingSALMonSentiment Consistency40.5pGSLM
Language ModellingSALMonSpeaker Consistency83pGSLM

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