Facial Attributes Guided Deep Sketch-to-Photo Synthesis

Hadi Kazemi, S. M. Iranmanesh, Ali Dabouei, Sobhan Soleymani, N. Nasrabadi
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引用次数: 30

Abstract

Face sketch-photo synthesis is a critical application in law enforcement and digital entertainment industry. Despite the significant improvements in sketch-to-photo synthesis techniques, existing methods have still serious limitations in practice, such as the need for paired data in the training phase or having no control on enforcing facial attributes over the synthesized image. In this work, we present a new framework, which is a conditional version of Cycle-GAN, conditioned on facial attributes. The proposed network forces facial attributes, such as skin and hair color, on the synthesized photo and does not need a set of aligned face-sketch pairs during its training. We evaluate the proposed network by training on two real and synthetic sketch datasets. The hand-sketch images of the FERET dataset and the color face images from the WVU Multi-modal dataset are used as an unpaired input to the proposed conditional CycleGAN with the skin color as the controlled face attribute. For more attribute guided evaluation, a synthetic sketch dataset is created from the CelebA dataset and used to evaluate the performance of the network by forcing several desired facial attributes on the synthesized faces.
面部属性引导深度素描到照片合成
人脸素描-照片合成是执法和数字娱乐行业的重要应用。尽管素描到照片合成技术有了很大的进步,但现有的方法在实践中仍然存在严重的局限性,例如在训练阶段需要配对数据,或者无法控制在合成图像上强制执行面部属性。在这项工作中,我们提出了一个新的框架,这是一个循环gan的条件版本,以面部属性为条件。所提出的网络将面部属性(如皮肤和头发颜色)强加到合成照片上,并且在训练过程中不需要一组对齐的面部草图对。我们通过在两个真实和合成的草图数据集上训练来评估所提出的网络。将FERET数据集的手绘图像和WVU多模态数据集的彩色人脸图像作为非配对输入,以肤色作为受控人脸属性,输入到所提出的条件CycleGAN中。对于更多的属性导向评估,从CelebA数据集创建了一个合成草图数据集,并通过在合成的面部上强制几个所需的面部属性来评估网络的性能。
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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