Similarity Trajectories: Linking Sampling Process to Artifacts in Diffusion-Generated Images
Artifact detection algorithms are crucial to correcting the output generated by diffusion models. However, because of the variety of artifact forms, existing methods require substantial annotated data for training. This requirement limits their scalability and efficiency, which restricts their wide...
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Zusammenfassung: | Artifact detection algorithms are crucial to correcting the output generated
by diffusion models. However, because of the variety of artifact forms,
existing methods require substantial annotated data for training. This
requirement limits their scalability and efficiency, which restricts their wide
application. This paper shows that the similarity of denoised images between
consecutive time steps during the sampling process is related to the severity
of artifacts in images generated by diffusion models. Building on this
observation, we introduce the concept of Similarity Trajectory to characterize
the sampling process and its correlation with the image artifacts presented.
Using an annotated data set of 680 images, which is only 0.1% of the amount of
data used in the prior work, we trained a classifier on these trajectories to
predict the presence of artifacts in images. By performing 10-fold validation
testing on the balanced annotated data set, the classifier can achieve an
accuracy of 72.35%, highlighting the connection between the Similarity
Trajectory and the occurrence of artifacts. This approach enables
differentiation between artifact-exhibiting and natural-looking images using
limited training data. |
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DOI: | 10.48550/arxiv.2412.17109 |