Yin_ToolVQA_A_Dataset_for_Multi-step_Reasoning_VQA_with_External_Tools@ICCV2025@CVF

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#1 ToolVQA: A Dataset for Multi-step Reasoning VQA with External Tools [PDF] [Copy] [Kimi] [REL]

Authors: Shaofeng Yin, Ting Lei, Yang Liu

Integrating external tools into Large Foundation Models (LFMs) has emerged as a promising approach to enhance their problem-solving capabilities. While existing studies have demonstrated strong performance in tool-augmented Visual Question Answering (VQA), recent benchmarks re- veal significant gaps in real-world tool-use proficiency, particularly in functionally diverse multimodal settings re- quiring multi-step reasoning. In this work, we intro- duce ToolVQA, a large-scale multimodal dataset compris- ing 23K samples, designed to bridge this gap. Unlike pre- vious datasets that rely on synthetic scenarios and sim- plified queries, ToolVQA features real-world visual con- texts and challenging implicit multi-step reasoning tasks, better aligning with real user interactions. To construct this dataset, we propose ToolEngine, a novel data genera- tion pipeline that employs image-guided Depth-First Search (DFS) with a Longest Common Subsequence (LCS)-based example matching mechanism to simulate human-like tool- use reasoning. ToolVQA encompasses 10 multimodal tools across 7 diverse domains, with an average inference length of 2.78 reasoning steps per sample. The LLaVA-7B model fine-tuned on ToolVQA not only achieves impressive per- formance on the ToolVQA test set, but also surpasses the large closed-source model GPT-3.5-turbo on five out-of- distribution (OOD) datasets, showing strong generalizabil- ity in real-world tool-use scenarios. Code is available at https://github.com/Fugtemypt123/ToolVQA-release.

Subject: ICCV.2025 - Poster