Diffusion-Based Facial Aesthetics Enhancement With 3D Structure Guidance

Lisha Li;Jingwen Hou;Weide Liu;Yuming Fang;Jiebin Yan
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Abstract

Facial Aesthetics Enhancement (FAE) aims to improve facial attractiveness by adjusting the structure and appearance of a facial image while preserving its identity as much as possible. Most existing methods adopted deep feature-based or score-based guidance for generation models to conduct FAE. Although these methods achieved promising results, they potentially produced excessively beautified results with lower identity consistency or insufficiently improved facial attractiveness. To enhance facial aesthetics with less loss of identity, we propose the Nearest Neighbor Structure Guidance based on Diffusion (NNSG-Diffusion), a diffusion-based FAE method that beautifies a 2D facial image with 3D structure guidance. Specifically, we propose to extract FAE guidance from a nearest neighbor reference face. To allow for less change of facial structures in the FAE process, a 3D face model is recovered by referring to both the matched 2D reference face and the 2D input face, so that the depth and contour guidance can be extracted from the 3D face model. Then the depth and contour clues can provide effective guidance to Stable Diffusion with ControlNet for FAE. Extensive experiments demonstrate that our method is superior to previous relevant methods in enhancing facial aesthetics while preserving facial identity.
三维结构引导下基于扩散的面部美学增强
面部美学增强(FAE)旨在通过调整面部图像的结构和外观来提高面部吸引力,同时尽可能保持其身份。现有方法大多采用基于深度特征或基于分数的生成模型指导进行FAE。虽然这些方法取得了令人满意的结果,但它们可能会产生过度美化的结果,降低身份一致性或改善面部吸引力不足。为了在减少身份损失的同时增强面部美感,我们提出了基于扩散的最近邻结构制导(NNSG-Diffusion),这是一种基于扩散的FAE方法,利用3D结构制导对二维面部图像进行美化。具体来说,我们建议从最近邻参考人脸提取FAE制导。为了减少FAE过程中面部结构的变化,通过参考匹配的二维参考人脸和二维输入人脸来恢复三维人脸模型,从而从三维人脸模型中提取深度和轮廓制导。深度和轮廓线索可以为控制网控制FAE的稳定扩散提供有效的指导。大量的实验表明,我们的方法在保持面部身份的同时增强了面部美感,优于以往的相关方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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