cs.AI updates on arXiv.org 07月11日 12:04
Geometry Forcing: Marrying Video Diffusion and 3D Representation for Consistent World Modeling
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本文提出一种名为Geometry Forcing的新方法,旨在增强视频扩散模型的几何感知能力,通过引入角对齐和尺度对齐两个互补目标,显著提升生成视频的视觉质量和三维一致性。

arXiv:2507.07982v1 Announce Type: cross Abstract: Videos inherently represent 2D projections of a dynamic 3D world. However, our analysis suggests that video diffusion models trained solely on raw video data often fail to capture meaningful geometric-aware structure in their learned representations. To bridge this gap between video diffusion models and the underlying 3D nature of the physical world, we propose Geometry Forcing, a simple yet effective method that encourages video diffusion models to internalize latent 3D representations. Our key insight is to guide the model's intermediate representations toward geometry-aware structure by aligning them with features from a pretrained geometric foundation model. To this end, we introduce two complementary alignment objectives: Angular Alignment, which enforces directional consistency via cosine similarity, and Scale Alignment, which preserves scale-related information by regressing unnormalized geometric features from normalized diffusion representation. We evaluate Geometry Forcing on both camera view-conditioned and action-conditioned video generation tasks. Experimental results demonstrate that our method substantially improves visual quality and 3D consistency over the baseline methods. Project page: https://GeometryForcing.github.io.

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视频扩散模型 几何增强 几何感知 三维一致性
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