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PRADA: Probability-Ratio-Based Attribution and Detection of Autoregressive-Generated Images

About

Autoregressive (AR) image generation has recently emerged as a powerful paradigm for image synthesis. Leveraging the generation principle of large language models, they allow for efficiently generating deceptively real-looking images, further increasing the need for reliable detection methods. However, to date there is a lack of work specifically targeting the detection of images generated by AR image generators. In this work, we present PRADA (Probability-Ratio-Based Attribution and Detection of Autoregressive-Generated Images), a simple and interpretable approach that can reliably detect AR-generated images and attribute them to their respective source model. The key idea is to inspect the ratio of a model's conditional and unconditional probability for the autoregressive token sequence representing a given image. Whenever an image is generated by a particular model, its probability ratio shows unique characteristics which are not present for images generated by other models or real images. We exploit these characteristics for threshold-based attribution and detection by calibrating a simple, model-specific score function. Our experimental evaluation shows that PRADA is highly effective against eight class-to-image and four text-to-image models. We release our code and data at github.com/jonasricker/prada.

Simon Damm, Jonas Ricker, Henning Petzka, Asja Fischer• 2025

Related benchmarks

TaskDatasetResultRank
Generated Image DetectionDARG Text-to-Image
Infinity-2B Score99.7
12
Generated Image DetectionDARG Class-to-Image
HMAR-2085.9
12
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