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MMDuet2: Enhancing Proactive Interaction of Video MLLMs with Multi-Turn Reinforcement Learning

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Recent advances in video multimodal large language models (Video MLLMs) have significantly enhanced video understanding and multi-modal interaction capabilities. While most existing systems operate in a turn-based manner where the model can only reply after user turns, proactively deciding when to reply during video playback presents a promising yet challenging direction for real-time applications. In this work, we propose a novel text-to-text approach to proactive interaction, where the model autonomously determines whether to respond or remain silent at each turn based on dialogue history and visual context up to current frame of an streaming video. To overcome difficulties in previous methods such as manually tuning response decision thresholds and annotating precise reply times, we introduce a multi-turn RL based training method that encourages timely and accurate responses without requiring precise response time annotations. We train our model MMDuet2 on a dataset of 52k videos with two types of dialogues via SFT and RL. Experimental results demonstrate that MMDuet2 outperforms existing proactive Video MLLM baselines in response timing and quality, achieving state-of-the-art performance on the ProactiveVideoQA benchmark.

Yueqian Wang, Songxiang Liu, Disong Wang, Nuo Xu, Guanglu Wan, Huishuai Zhang, Dongyan Zhao• 2025

Related benchmarks

TaskDatasetResultRank
Video UnderstandingMVBench
Accuracy66.4
247
Streaming Video UnderstandingStreamingBench proactive
Accuracy34.69
8
Proactive Video Question AnsweringProactiveVideoQA WEB
PAUC (0.5)53.3
4
Proactive Video Question AnsweringProactiveVideoQA TV
PAUC (ω = 0.5)43.4
4
Proactive Video Question AnsweringProactiveVideoQA VAD
PAUC (ω = 0.5)28.9
4
Offline Video UnderstandingVideo-MME
Accuracy (with subtitle)67.5
4
Offline Video UnderstandingLongVideo-Bench
Accuracy53.3
4
Proactive Video Question AnsweringProactiveVideoQA EGO
PAUC (ω=0.5)33.6
4
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