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CooGAN: A Memory-Efficient Framework for High-Resolution Facial Attribute Editing

机译:Coogan:高分辨率面部属性编辑的记忆有效框架

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摘要

In contrast to great success of memory-consuming face editing methods at a low resolution, to manipulate high-resolution (HR) facial images, i.e., typically larger than 7682 pixels, with very limited memory is still challenging. This is due to the reasons of 1) intractable huge demand of memory; 2) inefficient multi-scale features fusion. To address these issues, we propose a NOVEL pixel translation framework called Cooperative GAN(CooGAN) for HR facial image editing. This framework features a local path for fine-grained local facial patch generation (i.e., patch-level HR, LOW memory) and a global path for global low-resolution (LR) facial structure monitoring (i.e., image-level LR, LOW memory), which largely reduce memory requirements. Both paths work in a cooperative manner under a local-to-global consistency objective (i.e., for smooth stitching). In addition, we propose a lighter selective transfer unit for more efficient multi-scale features fusion, yielding higher fidelity facial attributes manipulation. Extensive experiments on CelebA-HQ well demonstrate the memory efficiency as well as the high image generation quality of the proposed framework.
机译:与低分辨率以低分辨率的内存消耗面部编辑方法的巨大成功相比,以操纵高分辨率(HR)面部图像,即通常大于7682像素,内存非常有限仍然具有挑战性。这是由于1)棘手的记忆需求的原因; 2)低效的多尺度特征融合。为了解决这些问题,我们提出了一种称为HR面部图像编辑的合作GaN(Coogan)的新像素翻译框架。该框架具有用于整体颗粒本地面部贴片生成(即,补丁级HR,低存储器)的本地路径和全球低分辨率(LR)面部结构监测的全局路径(即图像级LR,低内存),这在很大程度上降低了内存要求。这两条路径都以合作方式在局部到全局的一致性目标(即,用于平滑拼接)。此外,我们提出了一种更轻的选择性转移单元,用于更有效的多尺度特征融合,产生更高的保真面部属性操纵。 Celeba-HQ的广泛实验良好地证明了所提出的框架的存储器效率以及高图像生成质量。

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