CVMay 4, 2022

An Analysis of Generative Methods for Multiple Image Inpainting

arXiv:2205.02146v13 citationsh-index: 21
Originality Synthesis-oriented
AI Analysis

This is an incremental analysis for researchers in computer vision, focusing on improving inpainting techniques by evaluating existing methods.

The paper analyzes generative methods for multiple image inpainting, comparing their quality and diversity on common datasets to identify the most successful strategies.

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.

Foundations

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