Diffusion-Based Makeup Transfer with Facial Region-Aware Makeup Features
Zheng Gao, Debin Meng, Yunqi Miao, Zhensong Zhang, Songcen Xu, Ioannis Patras, Jifei Song

TL;DR
This paper introduces a novel diffusion-based makeup transfer method that leverages facial region-aware features and fine-tuned CLIP models, enabling more precise and controllable makeup style transfer across facial regions.
Contribution
The work proposes Facial Region-Aware Makeup features (FRAM), combining fine-tuned CLIP with region-specific makeup injection for improved regional control in makeup transfer.
Findings
Enhanced regional controllability in makeup transfer.
Superior performance compared to existing diffusion-based methods.
Effective identity preservation during makeup transfer.
Abstract
Current diffusion-based makeup transfer methods commonly use the makeup information encoded by off-the-shelf foundation models (e.g., CLIP) as condition to preserve the makeup style of reference image in the generation. Although effective, these works mainly have two limitations: (1) foundation models pre-trained for generic tasks struggle to capture makeup styles; (2) the makeup features of reference image are injected to the diffusion denoising model as a whole for global makeup transfer, overlooking the facial region-aware makeup features (i.e., eyes, mouth, etc) and limiting the regional controllability for region-specific makeup transfer. To address these, in this work, we propose Facial Region-Aware Makeup features (FRAM), which has two stages: (1) makeup CLIP fine-tuning; (2) identity and facial region-aware makeup injection. For makeup CLIP fine-tuning, unlike prior works using…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Face recognition and analysis · Image Enhancement Techniques
