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Main Authors: Fan, Xiang, Girish, Sharath, Ramanujan, Vivek, Wang, Chaoyang, Mirzaei, Ashkan, Sushko, Petr, Siarohin, Aliaksandr, Tulyakov, Sergey, Krishna, Ranjay
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.10940
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author Fan, Xiang
Girish, Sharath
Ramanujan, Vivek
Wang, Chaoyang
Mirzaei, Ashkan
Sushko, Petr
Siarohin, Aliaksandr
Tulyakov, Sergey
Krishna, Ranjay
author_facet Fan, Xiang
Girish, Sharath
Ramanujan, Vivek
Wang, Chaoyang
Mirzaei, Ashkan
Sushko, Petr
Siarohin, Aliaksandr
Tulyakov, Sergey
Krishna, Ranjay
contents Prior approaches injecting camera control into diffusion models have focused on specific subsets of 4D consistency tasks: novel view synthesis, text-to-video with camera control, image-to-video, amongst others. Therefore, these fragmented approaches are trained on disjoint slices of available 3D/4D data. We introduce OmniView, a unified framework that generalizes across a wide range of 4D consistency tasks. Our method separately represents space, time, and view conditions, enabling flexible combinations of these inputs. For example, OmniView can synthesize novel views from static, dynamic, and multiview inputs, extrapolate trajectories forward and backward in time, and create videos from text or image prompts with full camera control. OmniView is competitive with task-specific models across diverse benchmarks and metrics, improving image quality scores among camera-conditioned diffusion models by up to 33\% in multiview NVS LLFF dataset, 60\% in dynamic NVS Neural 3D Video benchmark, 20\% in static camera control on RE-10K, and reducing camera trajectory errors by 4x in text-conditioned video generation. With strong generalizability in one model, OmniView demonstrates the feasibility of a generalist 4D video model. Project page is available at https://snap-research.github.io/OmniView/
format Preprint
id arxiv_https___arxiv_org_abs_2512_10940
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OmniView: An All-Seeing Diffusion Model for 3D and 4D View Synthesis
Fan, Xiang
Girish, Sharath
Ramanujan, Vivek
Wang, Chaoyang
Mirzaei, Ashkan
Sushko, Petr
Siarohin, Aliaksandr
Tulyakov, Sergey
Krishna, Ranjay
Computer Vision and Pattern Recognition
Artificial Intelligence
Prior approaches injecting camera control into diffusion models have focused on specific subsets of 4D consistency tasks: novel view synthesis, text-to-video with camera control, image-to-video, amongst others. Therefore, these fragmented approaches are trained on disjoint slices of available 3D/4D data. We introduce OmniView, a unified framework that generalizes across a wide range of 4D consistency tasks. Our method separately represents space, time, and view conditions, enabling flexible combinations of these inputs. For example, OmniView can synthesize novel views from static, dynamic, and multiview inputs, extrapolate trajectories forward and backward in time, and create videos from text or image prompts with full camera control. OmniView is competitive with task-specific models across diverse benchmarks and metrics, improving image quality scores among camera-conditioned diffusion models by up to 33\% in multiview NVS LLFF dataset, 60\% in dynamic NVS Neural 3D Video benchmark, 20\% in static camera control on RE-10K, and reducing camera trajectory errors by 4x in text-conditioned video generation. With strong generalizability in one model, OmniView demonstrates the feasibility of a generalist 4D video model. Project page is available at https://snap-research.github.io/OmniView/
title OmniView: An All-Seeing Diffusion Model for 3D and 4D View Synthesis
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.10940