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It's Never Too Late: Noise Optimization for Collapse Recovery in Trained Diffusion Models

MCML Authors

Link to Profile Almut Sophia Koepke PI Matchmaking

Almut Sophia Koepke

Dr.

JRG Leader Multi-Modal Learning

Abstract

Contemporary text-to-image models exhibit a surprising degree of mode collapse, as can be seen when sampling several images given the same text prompt. While previous work has attempted to address this issue by steering the model using guidance mechanisms, or by generating a large pool of candidates and refining them, in this work we take a different direction and aim for diversity in generations via noise optimization. Specifically, we show that a simple noise optimization objective can mitigate mode collapse while preserving the fidelity of the base model. We also analyze the frequency characteristics of the noise and show that alternative noise initializations with different frequency profiles can improve both optimization and search. Our experiments demonstrate that noise optimization yields superior results in terms of generation quality and variety.

misc HKK+25a


Preprint

Dec. 2025

Authors

A. Harrington • A. S. Koepke • S. Karthik • T. Darrell • A. A. Efros

Links

arXiv

In Collaboration

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Research Area

 B1 | Computer Vision

BibTeXKey: HKK+25a

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