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Attribute-controlled face photo synthesis from simple line drawing

机译:通过简单的线条画进行属性控制的面部照片合成

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Face photo synthesis from simple line drawing is a one-to-many task as simple line drawing merely contains the contour of human face. Previous exemplar-based methods are over-dependent on the datasets and are hard to generalize to complicated natural scenes. Recently, several works utilize deep neural networks to increase the generalization, but they are still limited in the controllability of the users. In this paper, we propose a deep generative model to synthesize face photo from simple line drawing controlled by face attributes such as hair color and complexion. In order to maximize the controllability of face attributes, an attribute-disentangled variational auto-encoder (AD-VAE) is firstly introduced to learn latent representations disentangled with respect to specified attributes. Then we conduct photo synthesis from simple line drawing based on AD-VAE. Experiments show that our model can well disentangle the variations of attributes from other variations of face photos and synthesize detailed photorealistic face images with desired attributes. Regarding background and illumination as the style and human face as the content, we can also synthesize face photos with the target style of a style photo.
机译:从简单线条绘制的面部照片合成是一对多的任务,因为简单线条绘制仅包含人脸的轮廓。以前的基于示例的方法过于依赖数据集,很难将其推广到复杂的自然场景。近来,一些作品利用深度神经网络来增加泛化性,但是它们在用户的可控制性方面仍然受到限制。在本文中,我们提出了一种深度生成模型,该模型可以根据受头发颜色和肤色等面部属性控制的简单线条绘制来合成面部照片。为了使面部属性的可控制性最大化,首先引入了属性解缠结的可变自动编码器(AD-VAE),以学习相对于指定属性解缠结的潜在表示。然后,我们基于AD-VAE从简单的线条图进行照片合成。实验表明,我们的模型可以很好地区分属性的变化与其他人脸照片的变化,并合成具有所需属性的详细逼真的人脸图像。以背景和照明为风格,以人脸为内容,我们还可以将人脸照片与风格照片的目标风格进行合成。

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