March 2020
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23 Reads
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59 Citations
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March 2020
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23 Reads
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59 Citations
October 2019
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69 Reads
All previous methods for audio-driven talking head generation assume the input audio to be clean with a neutral tone. As we show empirically, one can easily break these systems by simply adding certain background noise to the utterance or changing its emotional tone (to such as sad). To make talking head generation robust to such variations, we propose an explicit audio representation learning framework that disentangles audio sequences into various factors such as phonetic content, emotional tone, background noise and others. We conduct experiments to validate that conditioned on disentangled content representation, the generated mouth movement by our model is significantly more accurate than previous approaches (without disentangled learning) in the presence of noise and emotional variations. We further demonstrate that our framework is compatible with current state-of-the-art approaches by replacing their original audio learning component with ours. To our best knowledge, this is the first work which improves the performance of talking head generation from disentangled audio representation perspective, which is important for many real-world applications.
... Following these researches, several methods have been proposed to deal with the talking head challenge, and these approaches are divided into two main categories: image-based method and video-based editing method. Firstly, several approaches, such as Speech2Vid [3], Conditional Recurrent Adversarial Network [4], the method proposed by Mittal et al. [5], and Sinha et al. [6] try to animate one or a few frames of cropped. The second group of approaches are video-based editing methods such as EVP [7], SSP-NeRF [8], and EAMM [9], which strive to edit target video clips' faces directly. ...
March 2020