DiffInfinite: Large Mask-Image Synthesis via Parallel Random Patch Diffusion in Histopathology
–Neural Information Processing Systems
We present DiffInfinite, a hierarchical diffusion model that generates arbitrarily large histological images while preserving long-range correlation structural information. Our approach first generates synthetic segmentation masks, subsequently used as conditions for the high-fidelity generative diffusion process. The proposed sampling method can be scaled up to any desired image size while only requiring small patches for fast training. Moreover, it can be parallelized more efficiently than previous large-content generation methods while avoiding tiling artifacts. The training leverages classifier-free guidance to augment a small, sparsely annotated dataset with unlabelled data.
Neural Information Processing Systems
Jan-20-2025, 02:56:14 GMT