CVAICLSep 26, 2025

CapRL: Stimulating Dense Image Caption Capabilities via Reinforcement Learning

arXiv:2509.22647v118 citationsh-index: 32Has Code
Originality Highly original
AI Analysis

This addresses the limitation of supervised fine-tuning in image captioning for large vision-language models by offering a scalable, data-efficient alternative that enhances generality and diversity.

The paper tackles the problem of generating diverse and creative image captions by proposing CapRL, a reinforcement learning framework that uses a vision-free language model to evaluate caption quality based on its utility for answering questions about the image. The result shows substantial gains across 12 benchmarks, with CapRL achieving performance comparable to a large model and exceeding the baseline by an average margin of 8.4%.

Image captioning is a fundamental task that bridges the visual and linguistic domains, playing a critical role in pre-training Large Vision-Language Models (LVLMs). Current state-of-the-art captioning models are typically trained with Supervised Fine-Tuning (SFT), a paradigm that relies on expensive, non-scalable data annotated by humans or proprietary models. This approach often leads to models that memorize specific ground-truth answers, limiting their generality and ability to generate diverse, creative descriptions. To overcome the limitation of SFT, we propose applying the Reinforcement Learning with Verifiable Rewards (RLVR) paradigm to the open-ended task of image captioning. A primary challenge, however, is designing an objective reward function for the inherently subjective nature of what constitutes a "good" caption. We introduce Captioning Reinforcement Learning (CapRL), a novel training framework that redefines caption quality through its utility: a high-quality caption should enable a non-visual language model to accurately answer questions about the corresponding image. CapRL employs a decoupled two-stage pipeline where an LVLM generates a caption, and the objective reward is derived from the accuracy of a separate, vision-free LLM answering Multiple-Choice Questions based solely on that caption. As the first study to apply RLVR to the subjective image captioning task, we demonstrate that CapRL significantly enhances multiple settings. Pretraining on the CapRL-5M caption dataset annotated by CapRL-3B results in substantial gains across 12 benchmarks. Moreover, within the Prism Framework for caption quality evaluation, CapRL achieves performance comparable to Qwen2.5-VL-72B, while exceeding the baseline by an average margin of 8.4%. Code is available here: https://github.com/InternLM/CapRL.

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