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Poster

HiFi-Portrait: Zero-shot Identity-preserved Portrait Generation with High-fidelity Multi-face Fusion

Yifang Xu · BenXiang Zhai · Yunzhuo Sun · Ming Li · Yang Li · Sidan Du


Abstract:

Recent advancements in diffusion-based technologies have made significant strides, particularly in identity-preserved portrait generation (IPG). However, when using multiple reference images from the same ID, existing methods typically produce lower-fidelity portraits and struggle to customize face attributes precisely. To address these issues, this paper presents Method, a high-fidelity method for zero-shot portrait generation. Specifically, we first introduce the face refiner and landmark generator to obtain fine-grained multi-face features and 3D-aware face landmarks. The landmarks include the reference ID and the target attributes. Then, we design HiFi-Net to fuse multi-face features and align them with landmarks, which improves ID fidelity and face control. In addition, we devise an automated pipeline to construct an ID-based dataset for training Method. Extensive experimental results demonstrate that our method surpasses the state-of-the-art approaches in face similarity and controllability. Furthermore, our method is also compatible with previous SDXL-based works. Our code is available at -.

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