Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

AutoVQA-G: Self-Improving Agentic Framework for Automated Visual Question Answering and Grounding Annotation

About

Manual annotation of high-quality visual question answering with grounding (VQA-G) datasets, which pair visual questions with evidential grounding, is crucial for advancing vision-language models (VLMs), but remains unscalable. Existing automated methods are often hindered by two key issues: (1) inconsistent data fidelity due to model hallucinations; (2) brittle verification mechanisms based on simple heuristics. To address these limitations, we introduce AutoVQA-G, a self-improving agentic framework for automated VQA-G annotation. AutoVQA-G employs an iterative refinement loop where a Consistency Evaluation module uses Chain-of-Thought (CoT) reasoning for fine-grained visual verification. Based on this feedback, a memory-augmented Prompt Optimization agent analyzes critiques from failed samples to progressively refine generation prompts. Our experiments show that AutoVQA-G generates VQA-G datasets with superior visual grounding accuracy compared to leading multimodal LLMs, offering a promising approach for creating high-fidelity data to facilitate more robust VLM training and evaluation. Code: https://github.com/rohnson1999/AutoVQA-G

Rongsheng Hu, Runwei Guan, Yicheng Di, Jiayu Bao, Yuan Liu• 2026

Related benchmarks

TaskDatasetResultRank
Grounded Visual Question AnsweringVisual7W (test)
Accuracy89.6
8
Visual Question Answering and GroundingVizWiz (test)
CLIPScore0.757
6
Showing 2 of 2 rows

Other info

Follow for update