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Unsupervised Audiovisual Synthesis via Exemplar Autoencoders

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arxiv 2001.04463 v3 pith:QVPXMWAF submitted 2020-01-13 cs.CV cs.LGcs.MMcs.SDeess.AS

Unsupervised Audiovisual Synthesis via Exemplar Autoencoders

classification cs.CV cs.LGcs.MMcs.SDeess.AS
keywords approachaudiovisualautoencodersdataexemplarspeechinputlearn
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present an unsupervised approach that converts the input speech of any individual into audiovisual streams of potentially-infinitely many output speakers. Our approach builds on simple autoencoders that project out-of-sample data onto the distribution of the training set. We use Exemplar Autoencoders to learn the voice, stylistic prosody, and visual appearance of a specific target exemplar speech. In contrast to existing methods, the proposed approach can be easily extended to an arbitrarily large number of speakers and styles using only 3 minutes of target audio-video data, without requiring {\em any} training data for the input speaker. To do so, we learn audiovisual bottleneck representations that capture the structured linguistic content of speech. We outperform prior approaches on both audio and video synthesis, and provide extensive qualitative analysis on our project page -- https://www.cs.cmu.edu/~exemplar-ae/.

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