Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Interpolating between Images with Diffusion Models

About

One little-explored frontier of image generation and editing is the task of interpolating between two input images, a feature missing from all currently deployed image generation pipelines. We argue that such a feature can expand the creative applications of such models, and propose a method for zero-shot interpolation using latent diffusion models. We apply interpolation in the latent space at a sequence of decreasing noise levels, then perform denoising conditioned on interpolated text embeddings derived from textual inversion and (optionally) subject poses. For greater consistency, or to specify additional criteria, we can generate several candidates and use CLIP to select the highest quality image. We obtain convincing interpolations across diverse subject poses, image styles, and image content, and show that standard quantitative metrics such as FID are insufficient to measure the quality of an interpolation. Code and data are available at https://clintonjwang.github.io/interpolation.

Clinton J. Wang, Polina Golland• 2023

Related benchmarks

TaskDatasetResultRank
Conditional InterpolationHuman Evaluation Dataset (test)
Near Object Score8.75
4
Conditional InterpolationCIFAR-10
Smoothness0.7531
4
Conditional InterpolationLAION Aesthetics
Smoothness0.7424
4
Showing 3 of 3 rows

Other info

Follow for update