论文标题

高分辨率的零击域适应合成的面部图像

High Resolution Zero-Shot Domain Adaptation of Synthetically Rendered Face Images

论文作者

Garbin, Stephan J., Kowalski, Marek, Johnson, Matthew, Shotton, Jamie

论文摘要

使用计算机图形方法,大规模生成人脸的感性图像仍然是一项非常困难的任务。这是因为这些需要模拟光真逼真,这又需要对头部和周围场景的几何形状,材料和光源进行物理准确的建模。但是,非遗迹渲染越来越容易产生。与计算机图形方法相反,已经证明从更容易获得的2D图像数据中学到的生成模型可产生人体样本,这些样本很难与真实数据区分开。学习过程通常对应于失去对生成图像的形状和外观的控制。例如,即使是简单的解开任务,例如独立于面部修改头发(在计算机图形方法中实现的琐碎)仍然是一个开放的研究问题,这是一个开放的研究问题。在这项工作中,我们提出了一种算法,该算法将非代理,合成生成的图像与预审计的stylegan2模型的潜在矢量相匹配,然后将矢量映射到相同姿势,表达,头发,头发和照明的人的感性图像。与大多数以前的工作相反,我们不需要合成培训数据。据我们所知,这是同类算法以1K的分辨率起作用,并且代表了视觉现实主义的重大飞跃。

Generating photorealistic images of human faces at scale remains a prohibitively difficult task using computer graphics approaches. This is because these require the simulation of light to be photorealistic, which in turn requires physically accurate modelling of geometry, materials, and light sources, for both the head and the surrounding scene. Non-photorealistic renders however are increasingly easy to produce. In contrast to computer graphics approaches, generative models learned from more readily available 2D image data have been shown to produce samples of human faces that are hard to distinguish from real data. The process of learning usually corresponds to a loss of control over the shape and appearance of the generated images. For instance, even simple disentangling tasks such as modifying the hair independently of the face, which is trivial to accomplish in a computer graphics approach, remains an open research question. In this work, we propose an algorithm that matches a non-photorealistic, synthetically generated image to a latent vector of a pretrained StyleGAN2 model which, in turn, maps the vector to a photorealistic image of a person of the same pose, expression, hair, and lighting. In contrast to most previous work, we require no synthetic training data. To the best of our knowledge, this is the first algorithm of its kind to work at a resolution of 1K and represents a significant leap forward in visual realism.

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