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VideoCap-R1: Enhancing MLLMs for Video Captioning via Structured Thinking

2 June 2025
Desen Meng
Rui Huang
Zhilin Dai
Xinhao Li
Yifan Xu
Jun Zhang
Z. Huang
Meng Zhang
L. Zhang
Yi Liu
Limin Wang
    OffRLVLMLRM
ArXiv (abs)PDFHTML
Main:9 Pages
15 Figures
Bibliography:3 Pages
5 Tables
Appendix:9 Pages
Abstract

While recent advances in reinforcement learning have significantly enhanced reasoning capabilities in large language models (LLMs), these techniques remain underexplored in multi-modal LLMs for video captioning. This paper presents the first systematic investigation of GRPO-based RL post-training for video MLLMs, with the goal of enhancing video MLLMs' capability of describing actions in videos. Specifically, we develop the VideoCap-R1, which is prompted to first perform structured thinking that analyzes video subjects with their attributes and actions before generating complete captions, supported by two specialized reward mechanisms: a LLM-free think scorer evaluating the structured thinking quality and a LLM-assisted caption scorer assessing the output quality. The RL training framework effectively establishes the connection between structured reasoning and comprehensive description generation, enabling the model to produce captions with more accurate actions. Our experiments demonstrate that VideoCap-R1 achieves substantial improvements over the Qwen2VL-7B baseline using limited samples (1.5k) across multiple video caption benchmarks (DREAM1K: +4.4 event F1, VDC: +4.2 Acc, CAREBENCH: +3.1 action F1, +6.9 object F1) while consistently outperforming the SFT-trained counterparts, confirming GRPO's superiority in enhancing MLLMs' captioning capabilities.

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@article{meng2025_2506.01725,
  title={ VideoCap-R1: Enhancing MLLMs for Video Captioning via Structured Thinking },
  author={ Desen Meng and Rui Huang and Zhilin Dai and Xinhao Li and Yifan Xu and Jun Zhang and Zhenpeng Huang and Meng Zhang and Lingshu Zhang and Yi Liu and Limin Wang },
  journal={arXiv preprint arXiv:2506.01725},
  year={ 2025 }
}
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