ZoomLDM: Latent Diffusion Model for multi-scale image generation
Diffusion models have revolutionized image generation, yet several challenges restrict their application to large-image domains, such as digital pathology and satellite imagery. Given that it is infeasible to directly train a model on 'whole' images from domains with potential gigapixel si...
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Zusammenfassung: | Diffusion models have revolutionized image generation, yet several challenges
restrict their application to large-image domains, such as digital pathology
and satellite imagery. Given that it is infeasible to directly train a model on
'whole' images from domains with potential gigapixel sizes, diffusion-based
generative methods have focused on synthesizing small, fixed-size patches
extracted from these images. However, generating small patches has limited
applicability since patch-based models fail to capture the global structures
and wider context of large images, which can be crucial for synthesizing
(semantically) accurate samples. In this paper, to overcome this limitation, we
present ZoomLDM, a diffusion model tailored for generating images across
multiple scales. Central to our approach is a novel magnification-aware
conditioning mechanism that utilizes self-supervised learning (SSL) embeddings
and allows the diffusion model to synthesize images at different 'zoom' levels,
i.e., fixed-size patches extracted from large images at varying scales. ZoomLDM
achieves state-of-the-art image generation quality across all scales, excelling
particularly in the data-scarce setting of generating thumbnails of entire
large images. The multi-scale nature of ZoomLDM unlocks additional capabilities
in large image generation, enabling computationally tractable and globally
coherent image synthesis up to $4096 \times 4096$ pixels and $4\times$
super-resolution. Additionally, multi-scale features extracted from ZoomLDM are
highly effective in multiple instance learning experiments. We provide
high-resolution examples of the generated images on our website
https://histodiffusion.github.io/docs/publications/zoomldm/. |
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DOI: | 10.48550/arxiv.2411.16969 |