Perceptual artifacts localization for image synthesis tasks

L Zhang, Z Xu, C Barnes, Y Zhou… - Proceedings of the …, 2023 - openaccess.thecvf.com
Proceedings of the IEEE/CVF International Conference on …, 2023openaccess.thecvf.com
Recent advancements in deep generative models have facilitated the creation of photo-
realistic images across various tasks. However, these generated images often exhibit
perceptual artifacts in specific regions, necessitating manual correction. In this study, we
present a comprehensive empirical examination of Perceptual Artifacts Localization (PAL)
spanning diverse image synthesis endeavors. We introduce a novel dataset comprising
10,168 generated images, each annotated with per-pixel perceptual artifact labels across …
Abstract
Recent advancements in deep generative models have facilitated the creation of photo-realistic images across various tasks. However, these generated images often exhibit perceptual artifacts in specific regions, necessitating manual correction. In this study, we present a comprehensive empirical examination of Perceptual Artifacts Localization (PAL) spanning diverse image synthesis endeavors. We introduce a novel dataset comprising 10,168 generated images, each annotated with per-pixel perceptual artifact labels across ten synthesis tasks. A segmentation model, trained on our proposed dataset, effectively localizes artifacts across a range of tasks. Additionally, we illustrate its proficiency in adapting to previously unseen models using minimal training samples. We further propose an innovative zoom-in inpainting pipeline that seamlessly rectifies perceptual artifacts in the generated images. Through our experimental analyses, we elucidate several invaluable downstream applications, such as automated artifact rectification, non-referential image quality evaluation, and abnormal region detection in images. The dataset and code are released here: https://owenzlz. github. io/PAL4VST
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