CVAIMay 8

BalCapRL: A Balanced Framework for RL-Based MLLM Image Captioning

arXiv:2605.0739474.9
AI Analysis

For researchers working on multimodal LLM captioning, this provides a more balanced RL framework that mitigates trade-offs between competing quality dimensions.

Existing RL-based image captioning methods optimize narrow quality metrics, causing trade-offs between utility, fluency, and informativeness. BalCapRL jointly optimizes correctness, coverage, and linguistic quality via a multi-objective reward with GDPO-style normalization and length-conditional masking, achieving gains of up to +13.6 DCScore, +9.0 CaptionQA, and +29.0 CapArena across LLaVA-1.5-7B and Qwen2.5-VL models.

Image captioning is one of the most fundamental tasks in computer vision. Owing to its open-ended nature, it has received significant attention in the era of multimodal large language models (MLLMs). In pursuit of ever more detailed and accurate captions, recent work has increasingly turned to reinforcement learning (RL). However, existing captioning-RL methods and evaluation metrics often emphasize a narrow notion of caption quality, inducing trade-offs across core dimensions of captioning. For example, utility-oriented objectives can encourage noisy, hallucinated, or overlong captions that improve downstream question answering while harming fluency, whereas arena-style objectives can favor fluent but generic descriptions with limited usefulness. To address this, we propose a more balanced RL framework that jointly optimizes utility-aware correctness, reference coverage, and linguistic quality. In order to effectively optimize the resulting continuous multi-objective reward formulation, we apply GDPO-style reward-decoupled normalization to continuous-valued captioning rewards and show that it improves performance over vanilla GRPO. Additionally, we introduce length-conditional reward masking, yielding a more suitable length penalty for captioning. Across LLaVA-1.5-7B and Qwen2.5-VL 3B and 7B base models, our method consistently improves caption quality, with peak gains of +13.6 DCScore, +9.0 CaptionQA, and +29.0 CapArena across different models.

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