SUGAR: A Sweeter Spot for Generative Unlearning of Many Identities
By: Dung Thuy Nguyen , Quang Nguyen , Preston K. Robinette and more
Potential Business Impact:
Removes people's faces from AI-made pictures.
Recent advances in 3D-aware generative models have enabled high-fidelity image synthesis of human identities. However, this progress raises urgent questions around user consent and the ability to remove specific individuals from a model's output space. We address this by introducing SUGAR, a framework for scalable generative unlearning that enables the removal of many identities (simultaneously or sequentially) without retraining the entire model. Rather than projecting unwanted identities to unrealistic outputs or relying on static template faces, SUGAR learns a personalized surrogate latent for each identity, diverting reconstructions to visually coherent alternatives while preserving the model's quality and diversity. We further introduce a continual utility preservation objective that guards against degradation as more identities are forgotten. SUGAR achieves state-of-the-art performance in removing up to 200 identities, while delivering up to a 700% improvement in retention utility compared to existing baselines. Our code is publicly available at https://github.com/judydnguyen/SUGAR-Generative-Unlearn.
Similar Papers
FLUID: Training-Free Face De-identification via Latent Identity Substitution
CV and Pattern Recognition
Changes faces in pictures without losing details.
UniSER: A Foundation Model for Unified Soft Effects Removal
CV and Pattern Recognition
Cleans up blurry or hazy pictures automatically.
Training for Identity, Inference for Controllability: A Unified Approach to Tuning-Free Face Personalization
CV and Pattern Recognition
Makes AI create faces that look like real people.