A deep learning approach for generalized speech animation
Abstract
We introduce a simple and effective deep learning approach to automatically generate natural looking speech animation that synchronizes to input speech. Our approach uses a sliding window predictor that learns arbitrary nonlinear mappings from phoneme label input sequences to mouth movements in a way that accurately captures natural motion and visual coarticulation effects. Our deep learning approach enjoys several attractive properties: it runs in real-time, requires minimal parameter tuning, generalizes well to novel input speech sequences, is easily edited to create stylized and emotional speech, and is compatible with existing animation retargeting approaches. One important focus of our work is to develop an effective approach for speech animation that can be easily integrated into existing production pipelines. We provide a detailed description of our end-to-end approach, including machine learning design decisions. Generalized speech animation results are demonstrated over a wide range of animation clips on a variety of characters and voices, including singing and foreign language input. Our approach can also generate on-demand speech animation in real-time from user speech input.
Additional Information
© 2017 Copyright held by the owner/author(s). Publication rights licensed to ACM. We owe great thanks to our always accommodating and professional actor, Ken Bolden. Barry-John Theobald and Ausdang Thangthai contributed their HMM synthesis implementation. Scott Jones at Lucasilm and Hao Li at USC generously provided facial rigs. Thanks to the diverse members of Disney Research Pittsburgh who recorded foreign language speech examples. The work was supported by EPSRC grant EP/M014053/1.Attached Files
Published - a93-taylor.pdf
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Additional details
- Eprint ID
- 80375
- Resolver ID
- CaltechAUTHORS:20170814-143407341
- Engineering and Physical Sciences Research Council (EPSRC)
- EP/M014053/1
- Created
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2017-08-14Created from EPrint's datestamp field
- Updated
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2021-11-15Created from EPrint's last_modified field