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Not All Modalities Are Equal: Instruction-Aware Gating for Multimodal Videos

About

Pre-trained video large language models excel at visual reasoning. However, they struggle when videos arrive with auxiliary streams, such as audio, depth map, or dense temporal evidence. In such a scenario, uniform fusion induces modality interference, allowing irrelevant channels to distract the model. To address this issue, we present a unified multimodal video understanding framework, named UniMVU, that performs instruction-aware fusion across video, audio, depth map, or any other modality inputs via two levels of dynamic gating: inner-modality gates emphasize salient regions within each modality, whereas modality-level gates re-weight whole streams; both are conditioned on the text instruction to adaptively balance modality importance. Our UniMVU combines cross-modal self-attention with instruction-driven inner-modality gating module and a modality-level gating module with control token; for time-aligned streams we further adopt a fast-to-slow fusion scheme that reduces redundancy. Across six benchmarks (AVQA, AVSD, Music-AVQA, ScanQA, SQA3D and MVBench), our UniMVU achieves consistent gains over static-fusion baselines achieving gains as high as 13.5 in terms of CIDEr metric. Further, our analysis shows that the gating mechanism aligns with the human-interpretable modality relevance, and ablations show the contributions of inner-modality and modality-level gating. Our UniMVU provides a simple, unified recipe for instruction-aware multimodal video understanding that scales to diverse modalities without hand-crafted fusion rules.

Bonan Ding, Umair Nawaz, Ufaq Khan, Abdelrahman M. Shaker, Muhammad Haris Khan, Jiale Cao, Jin Xie, Fahad Shahbaz Khan• 2026

Related benchmarks

TaskDatasetResultRank
3D Question AnsweringScanQA (val)
CIDEr104.2
290
3D Question AnsweringSQA3D (test)
EM@159.4
131
Audio-Visual Question AnsweringMUSIC-AVQA (test)--
76
Audio-Visual Question AnsweringAVQA (test)
Total Accuracy94.3
36
Video Question AnsweringMVBench
Average Score59.5
20
Audio-Visual Question AnsweringAVSD (test)
CIDEr165.1
15
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