PSTF-AttControl: Per-Subject-Tuning-Free Personalized Image Generation with Controllable Face Attributes
Xiang liu, Zhaoxiang Liu, Huan Hu, Zipeng Wang, Ping Chen, Zezhou Chen, Kai Wang, Shiguo Lian

TL;DR
This paper presents a novel PSTF personalized image generation method that achieves precise facial attribute control and high identity preservation without individual tuning, using a face recognition model, StyleGAN2, and a Triplet-Decoupled Cross-Attention module.
Contribution
The proposed approach enables fine-grained facial attribute control in personalized image generation without the need for per-subject tuning or additional training data.
Findings
Balances personalization with attribute control
Does not require fine-tuning for individual identities
Achieves high-fidelity facial image synthesis
Abstract
Recent advancements in personalized image generation have significantly improved facial identity preservation, particularly in fields such as entertainment and social media. However, existing methods still struggle to achieve precise control over facial attributes in a per-subject-tuning-free (PSTF) way. Tuning-based techniques like PreciseControl have shown promise by providing fine-grained control over facial features, but they often require extensive technical expertise and additional training data, limiting their accessibility. In contrast, PSTF approaches simplify the process by enabling image generation from a single facial input, but they lack precise control over facial attributes. In this paper, we introduce a novel, PSTF method that enables both precise control over facial attributes and high-fidelity preservation of facial identity. Our approach utilizes a face recognition…
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