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Generating coherent spontaneous speech and gesture from text (2101.05684v1)

Published 14 Jan 2021 in cs.LG, cs.GR, cs.SD, and eess.AS

Abstract: Embodied human communication encompasses both verbal (speech) and non-verbal information (e.g., gesture and head movements). Recent advances in machine learning have substantially improved the technologies for generating synthetic versions of both of these types of data: On the speech side, text-to-speech systems are now able to generate highly convincing, spontaneous-sounding speech using unscripted speech audio as the source material. On the motion side, probabilistic motion-generation methods can now synthesise vivid and lifelike speech-driven 3D gesticulation. In this paper, we put these two state-of-the-art technologies together in a coherent fashion for the first time. Concretely, we demonstrate a proof-of-concept system trained on a single-speaker audio and motion-capture dataset, that is able to generate both speech and full-body gestures together from text input. In contrast to previous approaches for joint speech-and-gesture generation, we generate full-body gestures from speech synthesis trained on recordings of spontaneous speech from the same person as the motion-capture data. We illustrate our results by visualising gesture spaces and text-speech-gesture alignments, and through a demonstration video at https://simonalexanderson.github.io/IVA2020 .

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Authors (5)
  1. Simon Alexanderson (12 papers)
  2. Éva Székely (14 papers)
  3. Gustav Eje Henter (51 papers)
  4. Taras Kucherenko (21 papers)
  5. Jonas Beskow (24 papers)
Citations (22)

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