Recursive InPainting (RIP): how much information is lost under recursive inferences?
Javier Conde, Miguel Gonz\'alez, Gonzalo Mart\'inez, Fernando Moral, Elena Merino-G\'omez, Pedro Reviriego

TL;DR
This paper empirically investigates how recursive inpainting with AI models affects image integrity, revealing that some images retain their original features while others degrade significantly after multiple iterations.
Contribution
The study provides the first systematic analysis of information loss in recursive AI image inpainting using Stable Diffusion across various image styles and datasets.
Findings
Recursive inpainting can preserve image resemblance in some cases.
Repeated inpainting may lead to image degeneration.
Quantitative and qualitative analyses confirm variable effects of recursion.
Abstract
The rapid adoption of generative artificial intelligence (AI) is accelerating content creation and modification. For example, variations of a given content, be it text or images, can be created almost instantly and at a low cost. This will soon lead to the majority of text and images being created directly by AI models or by humans assisted by AI. This poses new risks; for example, AI-generated content may be used to train newer AI models and degrade their performance, or information may be lost in the transformations made by AI which could occur when the same content is processed over and over again by AI tools. An example of AI image modifications is inpainting in which an AI model completes missing fragments of an image. The incorporation of inpainting tools into photo editing programs promotes their adoption and encourages their recursive use to modify images. Inpainting can be…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Aesthetic Perception and Analysis · Image Processing and 3D Reconstruction
MethodsDiffusion · Inpainting
