论文标题
分析用于多个图像的生成方法
An Analysis of Generative Methods for Multiple Image Inpainting
论文作者
论文摘要
图像介入是指与观察者无法检测到的丢失区域的图像的恢复。覆盖区域可以具有任何大小和形状。这是一个没有独特解决方案的逆问题。在这项工作中,我们专注于基于学习的图像完成方法,用于多个和多样化的介入,哪个目标是为给定损坏的图像提供一组不同的解决方案。这些方法利用某些生成模型的概率性质来采样各种解决方案,以相干恢复缺失的内容。在本章中,我们将分析基本理论,并分析有关多个镶嵌的最新建议。为了调查每种方法的利弊,我们在通用数据集上介绍了定量和定性的比较,涉及对底漆解决方案集的质量和多样性。我们的分析使我们能够确定质量质量和介入多样性中最成功的生成策略。此任务与学习图像的准确概率分布密切相关。根据所使用的数据集,将通过分析讨论需要培训此类模型的挑战。
Image inpainting refers to the restoration of an image with missing regions in a way that is not detectable by the observer. The inpainting regions can be of any size and shape. This is an ill-posed inverse problem that does not have a unique solution. In this work, we focus on learning-based image completion methods for multiple and diverse inpainting which goal is to provide a set of distinct solutions for a given damaged image. These methods capitalize on the probabilistic nature of certain generative models to sample various solutions that coherently restore the missing content. Along the chapter, we will analyze the underlying theory and analyze the recent proposals for multiple inpainting. To investigate the pros and cons of each method, we present quantitative and qualitative comparisons, on common datasets, regarding both the quality and the diversity of the set of inpainted solutions. Our analysis allows us to identify the most successful generative strategies in both inpainting quality and inpainting diversity. This task is closely related to the learning of an accurate probability distribution of images. Depending on the dataset in use, the challenges that entail the training of such a model will be discussed through the analysis.