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FastFace: Tuning Identity Preservation in Distilled Diffusion via Guidance and Attention

The FastFace framework accelerates identity-preserving diffusion model adapters through classifier-free guidance and attention manipulation, enabling efficient training-free adaptation and improved identity fidelity.

Year
2025
Venue
arXiv 2025
Authors
4
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arxiv.org/abs/2505.21144v2ARXIV-DEFAULT
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Abstract

In latest years plethora of identity-preserving adapters for a personalized generation with diffusion models have been released. Their main disadvantage is that they are dominantly trained jointly with base diffusion models, which suffer from slow multi-step inference. This work aims to tackle the challenge of training-free adaptation of pretrained ID-adapters to diffusion models accelerated via distillation - through careful re-design of classifier-free guidance for few-step stylistic generation and attention manipulation mechanisms in decoupled blocks to improve identity similarity and fidelity, we propose universal FastFace framework. Additionally, we develop a disentangled public evaluation protocol for id-preserving adapters.

Authors

4