Feb. 6, 2024, 5:44 a.m. | Qiyao Liang Ziming Liu Ila Fiete

cs.LG updates on arXiv.org arxiv.org

Diffusion models are capable of impressive feats of image generation with uncommon juxtapositions such as astronauts riding horses on the moon with properly placed shadows. These outputs indicate the ability to perform compositional generalization, but how do the models do so? We perform controlled experiments on conditional DDPMs learning to generate 2D spherical Gaussian bumps centered at specified $x$- and $y$-positions. Our results show that the emergence of semantically meaningful latent representations is key to achieving high performance. En route …

astronauts cs.ai cs.cv cs.lg diffusion diffusion models generate horses image image generation learn moon the moon

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