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Identifying Prompted Artist Names from Generated Images

24 July 2025
Grace Su
Sheng-Yu Wang
Aaron Hertzmann
Eli Shechtman
Jun-Yan Zhu
Richard Zhang
    VLM
ArXiv (abs)PDFHTML
Main:10 Pages
14 Figures
Bibliography:4 Pages
15 Tables
Appendix:8 Pages
Abstract

A common and controversial use of text-to-image models is to generate pictures by explicitly naming artists, such as "in the style of Greg Rutkowski". We introduce a benchmark for prompted-artist recognition: predicting which artist names were invoked in the prompt from the image alone. The dataset contains 1.95M images covering 110 artists and spans four generalization settings: held-out artists, increasing prompt complexity, multiple-artist prompts, and different text-to-image models. We evaluate feature similarity baselines, contrastive style descriptors, data attribution methods, supervised classifiers, and few-shot prototypical networks. Generalization patterns vary: supervised and few-shot models excel on seen artists and complex prompts, whereas style descriptors transfer better when the artist's style is pronounced; multi-artist prompts remain the most challenging. Our benchmark reveals substantial headroom and provides a public testbed to advance the responsible moderation of text-to-image models. We release the dataset and benchmark to foster further research:this https URL

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