Demystifying Foreground-Background Memorization in Diffusion Models

Authors

  • Jimmy Z. Di University of Wisconsin - Madison
  • Yiwei Lu University of Ottawa Vector Institute
  • Yaoliang Yu University of Waterloo Vector Institute
  • Gautam Kamath University of Waterloo Vector Institute
  • Adam Dziedzic CISPA Helmholtz Center for Information Security
  • Franziska Boenisch CISPA Helmholtz Center for Information Security

DOI:

https://doi.org/10.1609/aaai.v40i25.39215

Abstract

Diffusion models (DMs) memorize training images and can reproduce near-duplicates during generation. Current detection methods identify verbatim memorization but fail to capture two critical aspects: quantifying partial memorization occurring in small image regions, and memorization patterns beyond specific prompt-image pairs. To address these limitations, we propose Foreground Background Memorization (FB-Mem), a novel segmentation-based metric that classifies and quantifies memorized regions within generated images. Our method reveals that memorization is more pervasive than previously understood: (1) individual generations from single prompts may be linked to clusters of similar training images, revealing complex memorization patterns that extend beyond one-to-one correspondences; and (2) existing model-level mitigation methods, such as neuron deactivation and pruning, fail to eliminate local memorization, which persists particularly in foreground regions. Our work establishes an effective framework for measuring memorization in diffusion models, demonstrates the inadequacy of current mitigation approaches, and proposes a stronger mitigation method using a clustering approach.

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Published

2026-03-14

How to Cite

Di, J. Z., Lu, Y., Yu, Y., Kamath, G., Dziedzic, A., & Boenisch, F. (2026). Demystifying Foreground-Background Memorization in Diffusion Models. Proceedings of the AAAI Conference on Artificial Intelligence, 40(25), 20763–20771. https://doi.org/10.1609/aaai.v40i25.39215

Issue

Section

AAAI Technical Track on Machine Learning II