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Personalized 3D Generative Avatars from a Single Portrait Contributions: 1. Generate a personalized 3D avatar from a reference portrait image with controllable facial attributes. 2. Create high-quality synthetic 2D video datasets with diverse attribute editing from a reference portrait image. 3. Use latent space regularization with face morphing supervision...

20,507 görüntüleme • 1 yıl önce •via X (Twitter)

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MrNeRF1 yıl önce

Paper: Project:

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Finally I'll know what I would look like with silver hair and a decent silver beard.

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MrNeRF1 yıl önce

Haha, true :)

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AK

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