SliderSpace: Decomposing the Visual Capabilities of Diffusion Models - podcast episode cover

SliderSpace: Decomposing the Visual Capabilities of Diffusion Models

Feb 05, 2025•25 min•Ep. 477
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Episode description

🤗 Upvotes: 19 | cs.CV, cs.GR, cs.LG

Authors:
Rohit Gandikota, Zongze Wu, Richard Zhang, David Bau, Eli Shechtman, Nick Kolkin

Title:
SliderSpace: Decomposing the Visual Capabilities of Diffusion Models

Arxiv:
http://arxiv.org/abs/2502.01639v1

Abstract:
We present SliderSpace, a framework for automatically decomposing the visual capabilities of diffusion models into controllable and human-understandable directions. Unlike existing control methods that require a user to specify attributes for each edit direction individually, SliderSpace discovers multiple interpretable and diverse directions simultaneously from a single text prompt. Each direction is trained as a low-rank adaptor, enabling compositional control and the discovery of surprising possibilities in the model's latent space. Through extensive experiments on state-of-the-art diffusion models, we demonstrate SliderSpace's effectiveness across three applications: concept decomposition, artistic style exploration, and diversity enhancement. Our quantitative evaluation shows that SliderSpace-discovered directions decompose the visual structure of model's knowledge effectively, offering insights into the latent capabilities encoded within diffusion models. User studies further validate that our method produces more diverse and useful variations compared to baselines. Our code, data and trained weights are available at https://sliderspace.baulab.info

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