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Progressive Disentangled Representation Learning for Fine-Grained Controllable Talking Head Synthesis

A novel one-shot talking head synthesis method achieves disentangled control over lip motion, eye gaze, head pose, and emotional expression using a progressive disentangled representation learning strategy.

Year
2022
Venue
CVPR 2023 1
Authors
5
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arxiv.org/abs/2211.14506ARXIV-DEFAULT
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Abstract

We present a novel one-shot talking head synthesis method that achieves disentangled and fine-grained control over lip motion, eye gaze&blink, head pose, and emotional expression. We represent different motions via disentangled latent representations and leverage an image generator to synthesize talking heads from them. To effectively disentangle each motion factor, we propose a progressive disentangled representation learning strategy by separating the factors in a coarse-to-fine manner, where we first extract unified motion feature from the driving signal, and then isolate each fine-grained motion from the unified feature. We introduce motion-specific contrastive learning and regressing for non-emotional motions, and feature-level decorrelation and self-reconstruction for emotional expression, to fully utilize the inherent properties of each motion factor in unstructured video data to achieve disentanglement. Experiments show that our method provides high quality speech&lip-motion synchronization along with precise and disentangled control over multiple extra facial motions, which can hardly be achieved by previous methods.

Authors

5