Image completion is widely used in photo restoration and editing applications, e.g. for object removal. Recently, there has been a surge of research on generating diverse completions for missing regions. However, existing methods require large training sets from a specific domain of interest, and often fail on general-content images. In this paper, we propose a diverse completion method that does not require a training set and can thus treat arbitrary images from any domain. Our internal diverse completion (IDC) approach draws inspiration from recent single-image generative models that are trained on multiple scales of a single image, adapting them to the extreme setting in which only a small portion of the image is available for training. We illustrate the strength of IDC on several datasets, using both user studies and quantitative comparisons.
翻译:图像的完成被广泛用于照片的恢复和编辑应用,例如用于清除物体。最近,关于为缺失区域制作各种成品的研究激增,然而,现有方法需要特定感兴趣的领域的大型培训组,而且往往无法使用一般内容图像。在本文中,我们提出一种不同的完成方法,不需要培训组,从而可以处理任何领域的任意图像。我们内部的完成方法从最近以单一图像的多重尺度培训的单一图像基因化模型中得到启发,使这些模型适应于只有一小部分图像可供培训的极端环境。我们用用户研究和定量比较来说明IDC在若干数据集上的力量。