CVOct 8, 2025

MATRIX: Mask Track Alignment for Interaction-aware Video Generation

arXiv:2510.07310v13 citationsh-index: 9
Originality Incremental advance
AI Analysis

This addresses a key limitation in video generation models for applications requiring accurate interaction modeling, though it is incremental as it builds on existing video DiT frameworks.

The paper tackled the problem of video diffusion transformers struggling to model multi-instance or subject-object interactions by introducing MATRIX, a regularization method that aligns attention with mask tracks, which improved interaction fidelity and semantic alignment while reducing drift and hallucination.

Video DiTs have advanced video generation, yet they still struggle to model multi-instance or subject-object interactions. This raises a key question: How do these models internally represent interactions? To answer this, we curate MATRIX-11K, a video dataset with interaction-aware captions and multi-instance mask tracks. Using this dataset, we conduct a systematic analysis that formalizes two perspectives of video DiTs: semantic grounding, via video-to-text attention, which evaluates whether noun and verb tokens capture instances and their relations; and semantic propagation, via video-to-video attention, which assesses whether instance bindings persist across frames. We find both effects concentrate in a small subset of interaction-dominant layers. Motivated by this, we introduce MATRIX, a simple and effective regularization that aligns attention in specific layers of video DiTs with multi-instance mask tracks from the MATRIX-11K dataset, enhancing both grounding and propagation. We further propose InterGenEval, an evaluation protocol for interaction-aware video generation. In experiments, MATRIX improves both interaction fidelity and semantic alignment while reducing drift and hallucination. Extensive ablations validate our design choices. Codes and weights will be released.

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