Papers
arxiv:2603.17117

MosaicMem: Hybrid Spatial Memory for Controllable Video World Models

Published on Mar 17
· Submitted by
Ligong Han
on Mar 19
#2 Paper of the day
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Abstract

Video diffusion models use hybrid spatial memory to maintain consistency under camera motion and enable long-term scene editing and navigation.

AI-generated summary

Video diffusion models are moving beyond short, plausible clips toward world simulators that must remain consistent under camera motion, revisits, and intervention. Yet spatial memory remains a key bottleneck: explicit 3D structures can improve reprojection-based consistency but struggle to depict moving objects, while implicit memory often produces inaccurate camera motion even with correct poses. We propose Mosaic Memory (MosaicMem), a hybrid spatial memory that lifts patches into 3D for reliable localization and targeted retrieval, while exploiting the model's native conditioning to preserve prompt-following generation. MosaicMem composes spatially aligned patches in the queried view via a patch-and-compose interface, preserving what should persist while allowing the model to inpaint what should evolve. With PRoPE camera conditioning and two new memory alignment methods, experiments show improved pose adherence compared to implicit memory and stronger dynamic modeling than explicit baselines. MosaicMem further enables minute-level navigation, memory-based scene editing, and autoregressive rollout.

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Paper submitter

TL;DR: MosaicMem is a hybrid spatial memory for video world models that bridges explicit 3D memory and implicit latent frames. It retrieves spatially aligned 3D patches to preserve persistent scene structure, improving camera consistency while supporting dynamic scene modeling, long-horizon navigation, and memory-based editing.

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