PEGASUS: Personalized Generative 3D Avatars with Composable Attributes
We present PEGASUS, a method for constructing a personalized generative 3D face avatar from monocular video sources. Our generative 3D avatar enables disentangled controls to selectively alter the facial attributes (e.g., hair or nose) while preserving the identity. Our approach consists of two stag...
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Zusammenfassung: | We present PEGASUS, a method for constructing a personalized generative 3D
face avatar from monocular video sources. Our generative 3D avatar enables
disentangled controls to selectively alter the facial attributes (e.g., hair or
nose) while preserving the identity. Our approach consists of two stages:
synthetic database generation and constructing a personalized generative
avatar. We generate a synthetic video collection of the target identity with
varying facial attributes, where the videos are synthesized by borrowing the
attributes from monocular videos of diverse identities. Then, we build a
person-specific generative 3D avatar that can modify its attributes
continuously while preserving its identity. Through extensive experiments, we
demonstrate that our method of generating a synthetic database and creating a
3D generative avatar is the most effective in preserving identity while
achieving high realism. Subsequently, we introduce a zero-shot approach to
achieve the same goal of generative modeling more efficiently by leveraging a
previously constructed personalized generative model. |
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DOI: | 10.48550/arxiv.2402.10636 |