Diffusing Differentiable Representations
- URL: http://arxiv.org/abs/2412.06981v1
- Date: Mon, 09 Dec 2024 20:42:58 GMT
- Title: Diffusing Differentiable Representations
- Authors: Yash Savani, Marc Finzi, J. Zico Kolter,
- Abstract summary: We introduce a novel, training-free method for sampling differentiable representations (diffreps) using pretrained diffusion models.
We identify an implicit constraint on the samples induced by the diffrep and demonstrate that addressing this constraint significantly improves the consistency and detail of the generated objects.
- Score: 60.72992910766525
- License:
- Abstract: We introduce a novel, training-free method for sampling differentiable representations (diffreps) using pretrained diffusion models. Rather than merely mode-seeking, our method achieves sampling by "pulling back" the dynamics of the reverse-time process--from the image space to the diffrep parameter space--and updating the parameters according to this pulled-back process. We identify an implicit constraint on the samples induced by the diffrep and demonstrate that addressing this constraint significantly improves the consistency and detail of the generated objects. Our method yields diffreps with substantially improved quality and diversity for images, panoramas, and 3D NeRFs compared to existing techniques. Our approach is a general-purpose method for sampling diffreps, expanding the scope of problems that diffusion models can tackle.
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