论文标题
IA面:语义面部编辑的双向方法
IA-FaceS: A Bidirectional Method for Semantic Face Editing
论文作者
论文摘要
近年来,语义面部编辑取得了重大进展。潜在的空间操纵被称为一种流行的方法,可以通过更改输入面的潜在代码来使用户摆脱绘画技能,从而表现出面部编辑。但是,以前的潜在空间操纵方法通常将整个面编码为单个低维嵌入,这会限制重建能力和面部成分(例如眼睛和鼻子)的控制灵活性。本文提出了IA面作为双向方法,用于解开面部属性操纵以及灵活的,可控的组件编辑,而无需进行分割掩码或原始图像中的草图。为了在重建能力和控制灵活性之间取得平衡,编码器被设计为一种多头结构,分别为重建和控制的嵌入嵌入:一种具有一致重建的空间特性和四个低维度面部面部嵌入的高维张量。操纵单独的组件嵌入可以帮助实现分离的属性操纵和对面部成分的灵活控制。为了进一步解散高度相关的组件,为解码器提供了组件自适应调制(CAM)模块。语义单眼编辑是第一次开发的,而没有任何输入视觉指导,例如分割掩码或草图。根据实验结果,IA面在保持图像细节和进行柔性面部操纵之间建立了良好的平衡。定量和定性结果都表明,所提出的方法的表现优于重建,面部属性操作和组件转移中的其他技术。
Semantic face editing has achieved substantial progress in recent years. Known as a growingly popular method, latent space manipulation performs face editing by changing the latent code of an input face to liberate users from painting skills. However, previous latent space manipulation methods usually encode an entire face into a single low-dimensional embedding, which constrains the reconstruction capacity and the control flexibility of facial components, such as eyes and nose. This paper proposes IA-FaceS as a bidirectional method for disentangled face attribute manipulation as well as flexible, controllable component editing without the need for segmentation masks or sketches in the original image. To strike a balance between the reconstruction capacity and the control flexibility, the encoder is designed as a multi-head structure to yield embeddings for reconstruction and control, respectively: a high-dimensional tensor with spatial properties for consistent reconstruction and four low-dimensional facial component embeddings for semantic face editing. Manipulating the separate component embeddings can help achieve disentangled attribute manipulation and flexible control of facial components. To further disentangle the highly-correlated components, a component adaptive modulation (CAM) module is proposed for the decoder. The semantic single-eye editing is developed for the first time without any input visual guidance, such as segmentation masks or sketches. According to the experimental results, IA-FaceS establishes a good balance between maintaining image details and performing flexible face manipulation. Both quantitative and qualitative results indicate that the proposed method outperforms the other techniques in reconstruction, face attribute manipulation, and component transfer.