Poster
in
Workshop: NeurIPS 2023 Workshop on Diffusion Models
SyncDiffusion: Coherent Montage via Synchronized Joint Diffusions
Yuseung Lee · Kunho Kim · Hyunjin Kim · Minhyuk Sung
The remarkable capabilities of pretrained image diffusion models have been utilized not only for generating fixed-size images but also for creating panoramas. However, naive stitching of multiple images often results in visible seams. Recent techniques have attempted to address this issue by performing joint diffusions in multiple windows and averaging latent features in overlapping regions. However, these approaches, which focus on seamless montage generation, often yield incoherent outputs by blending different scenes within a single image. To overcome this limitation, we propose SyncDiffusion, a plug-and-play module that synchronizes multiple diffusions through gradient descent from a perceptual similarity loss. Specifically, we compute the gradient of the perceptual loss using the predicted denoised images at each denoising step, providing meaningful guidance for achieving coherent montages. We demonstrate the versatility of SyncDiffusion by applying our method onto three applications: text-guided panorama generation, conditional panorama generation and 360-degree panorama generation. Moreover, our experimental results suggest that our method produces significantly more coherent outputs compared to previous methods (66.35\% vs. 33.65\% in our user study) while still maintaining fidelity (as assessed by GIQA) and compatibility with the input prompt (as measured by CLIP score).