论文标题
Cafe-Gan:具有互补注意功能的任意面部属性编辑
CAFE-GAN: Arbitrary Face Attribute Editing with Complementary Attention Feature
论文作者
论文摘要
面部属性编辑的目标是根据给定的目标属性(例如头发颜色,胡须,性别等)更改面部图像。它属于图像到图像域的传输问题,其中一组被认为是独特的域。多域转移问题有一些作品,重点是采用生成对抗网络(GAN)的面部属性编辑。这些方法报告了一些成功,但也导致面部区域的意外变化 - 这意味着发电机改变与指定属性无关的区域。为了解决这个意外的改变问题,我们提出了一个新颖的GAN模型,该模型旨在仅通过补充注意功能的概念(CAFE)编辑与目标属性相关的面部部分。咖啡馆通过考虑两个目标属性和互补属性来确定要转换的面部区域,我们将其定义为输入面部图像中不存在的属性。此外,我们还引入了互补功能匹配,以帮助训练生成器利用属性的空间信息。通过最先进的方法分析和比较研究证明了所提出的方法的有效性。
The goal of face attribute editing is altering a facial image according to given target attributes such as hair color, mustache, gender, etc. It belongs to the image-to-image domain transfer problem with a set of attributes considered as a distinctive domain. There have been some works in multi-domain transfer problem focusing on facial attribute editing employing Generative Adversarial Network (GAN). These methods have reported some successes but they also result in unintended changes in facial regions - meaning the generator alters regions unrelated to the specified attributes. To address this unintended altering problem, we propose a novel GAN model which is designed to edit only the parts of a face pertinent to the target attributes by the concept of Complementary Attention Feature (CAFE). CAFE identifies the facial regions to be transformed by considering both target attributes as well as complementary attributes, which we define as those attributes absent in the input facial image. In addition, we introduce a complementary feature matching to help in training the generator for utilizing the spatial information of attributes. Effectiveness of the proposed method is demonstrated by analysis and comparison study with state-of-the-art methods.