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CoVFT: Context-aware Visual Fine-tuning for Multimodal Large Language Models

About

Multimodal large language models (MLLMs) achieve remarkable progress in cross-modal perception and reasoning, yet a fundamental question remains unresolved: should the vision encoder be fine-tuned or frozen? Despite the success of models such as LLaVA and Qwen-VL, inconsistent design choices and heterogeneous training setups hinder a unified understanding of visual fine-tuning (VFT) in MLLMs. Through a configuration-aligned benchmark, we find that existing VFT methods fail to consistently outperform the frozen baseline across multimodal tasks. Our analysis suggests that this instability arises from visual preference conflicts, where the context-agnostic nature of vision encoders induces divergent parameter updates under diverse multimodal context. To address this issue, we propose the Context-aware Visual Fine-tuning (CoVFT) framework, which explicitly incorporates multimodal context into visual adaptation. By integrating a Context Vector Extraction (CVE) and a Contextual Mixture-of-Experts (CoMoE) module, CoVFT decomposes conflicting optimization signals and enables stable, context-sensitive visual updates. Extensive experiments on 12 multimodal benchmarks demonstrate that CoVFT achieves state-of-the-art performance with superior stability. Notably, fine-tuning a 7B MLLM with CoVFT surpasses the average performance of its 13B counterpart, revealing substantial untapped potential in visual encoder optimization within MLLMs.

Nan Zhou, Huiqun Wang, Yaoyan Zheng, Di Huang• 2026

Related benchmarks

TaskDatasetResultRank
Diagram Question AnsweringAI2D--
232
Text-based Visual Question AnsweringTextVQA
Score61.79
112
Visual Question AnsweringCOCO
Score66.96
106
Visual Question AnsweringGQA
GQA Score63.84
85
Multimodal Visual PerceptionMMVP
Accuracy38.67
72
Real-world Question AnsweringRealworldQA
Overall Score58.04
58
Multimodal Perception AssessmentMME Perception
MME-P1.59e+3
54
Science Question AnsweringScienceQA image
Score72.9
51
Multimodal Question AnsweringMMBench CN
Accuracy64.52
23
3D Visual Question AnsweringOMNI3D BENCH
Accuracy67.58
20
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