论文标题

DIFFACE:基于扩散的面部交换和面部指导

DiffFace: Diffusion-based Face Swapping with Facial Guidance

论文作者

Kim, Kihong, Kim, Yunho, Cho, Seokju, Seo, Junyoung, Nam, Jisu, Lee, Kychul, Kim, Seungryong, Lee, KwangHee

论文摘要

在本文中,我们首次提出了一个基于扩散的面部交换框架,称为Diffface,由训练ID条件DDPM组成,带有面部指导的采样以及具有目标的融合。在培训过程中,在训练过程中,对条件DDPM进行了训练,以生成具有所需身份的面部图像。在抽样过程中,我们使用现成的面部专家模型来使模型传输源标识在忠实地保留目标属性的同时。在此过程中,为了保留目标图像的背景并获得所需的面部交换结果,我们还提出了一个目标保留的混合策略。它有助于我们的模型在传递源面部身份的同时,使目标面的属性避免噪声。此外,如果没有任何重新训练,我们的模型可以灵活地应用额外的面部指导,并自适应地控制ID-ATRIBRITES权衡以实现所需的结果。据我们所知,这是在面部交换任务中应用扩散模型的第一种方法。与以前的基于GAN的方法相比,通过利用面部交换任务的扩散模型,Diffface获得了更好的好处,例如训练稳定性,高保真度,样本的多样性和可控性。广泛的实验表明,我们的差异是在几种标准面部交换基准上的最新方法可比性或优越的。

In this paper, we propose a diffusion-based face swapping framework for the first time, called DiffFace, composed of training ID conditional DDPM, sampling with facial guidance, and a target-preserving blending. In specific, in the training process, the ID conditional DDPM is trained to generate face images with the desired identity. In the sampling process, we use the off-the-shelf facial expert models to make the model transfer source identity while preserving target attributes faithfully. During this process, to preserve the background of the target image and obtain the desired face swapping result, we additionally propose a target-preserving blending strategy. It helps our model to keep the attributes of the target face from noise while transferring the source facial identity. In addition, without any re-training, our model can flexibly apply additional facial guidance and adaptively control the ID-attributes trade-off to achieve the desired results. To the best of our knowledge, this is the first approach that applies the diffusion model in face swapping task. Compared with previous GAN-based approaches, by taking advantage of the diffusion model for the face swapping task, DiffFace achieves better benefits such as training stability, high fidelity, diversity of the samples, and controllability. Extensive experiments show that our DiffFace is comparable or superior to the state-of-the-art methods on several standard face swapping benchmarks.

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