Recent deep generative models have achieved promising performance in image inpainting. However, it is still very challenging for a neural network to generate realistic image details and textures, due to its inherent spectral bias. By our understanding of how artists work, we suggest to adopt a `structure first detail next' workflow for image inpainting. To this end, we propose to build a Pyramid Generator by stacking several sub-generators, where lower-layer sub-generators focus on restoring image structures while the higher-layer sub-generators emphasize image details. Given an input image, it will be gradually restored by going through the entire pyramid in a bottom-up fashion. Particularly, our approach has a learning scheme of progressively increasing hole size, which allows it to restore large-hole images. In addition, our method could fully exploit the benefits of learning with high-resolution images, and hence is suitable for high-resolution image inpainting. Extensive experimental results on benchmark datasets have validated the effectiveness of our approach compared with state-of-the-art methods.
翻译:最近深层的基因模型在图像油漆方面取得了有希望的绩效。然而,神经网络由于其固有的光谱偏差,产生现实的图像细节和纹理仍然非常困难。根据我们对艺术家如何工作的了解,我们建议采用“结构第一细节下一个”的图像油漆工作流程。为此,我们提议通过堆叠若干次生成器来建造一个金字塔生成器,低层次生成器侧重于恢复图像结构,而高层次生成器则强调图像细节。根据输入图像,它将通过以自下而上的方式穿过整个金字塔逐渐恢复。特别是,我们的方法有一个逐渐增加洞积规模的学习计划,使其能够恢复大孔图像。此外,我们的方法可以充分利用高分辨率图像学习的好处,从而适合高分辨率图像油漆。基准数据集的广泛实验结果证实了我们的方法与最新方法相比的有效性。