CVAIDec 8, 2025

START: Spatial and Textual Learning for Chart Understanding

arXiv:2512.07186v12 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses the challenge of precise chart analysis for applications like scientific paper and technical report processing, representing an incremental advancement in multimodal AI.

The paper tackles the problem of chart understanding in multimodal large language models by proposing START, which integrates spatial and textual learning to improve fine-grained chart reasoning, resulting in consistent performance gains across model sizes and benchmarks over prior state-of-the-art methods.

Chart understanding is crucial for deploying multimodal large language models (MLLMs) in real-world scenarios such as analyzing scientific papers and technical reports. Unlike natural images, charts pair a structured visual layout (spatial property) with an underlying data representation (textual property) -- grasping both is essential for precise, fine-grained chart reasoning. Motivated by this observation, we propose START, the Spatial and Textual learning for chART understanding. Specifically, we introduce (i) chart-element grounding and (ii) chart-to-code generation to strengthen an MLLM's understanding of both chart visual layout and data details. To facilitate spatial and textual learning, we propose the START-Dataset generated with a novel data-generation pipeline that first leverages an MLLM to translate real chart images into executable chart code, recovering the underlying data representation while preserving the visual distribution of real-world charts. We then evolve the code with a Large Language Model (LLM) to ascertain the positions of chart elements that capture the chart's visual structure, addressing challenges that existing methods cannot handle. To evaluate a model's ability to understand chart spatial structures, we propose the Chart Spatial understanding Benchmark (CS-Bench), filling a critical gap in comprehensive chart understanding evaluation. Leveraging spatial and textual learning, START delivers consistent gains across model sizes and benchmarks over the base models and surpasses prior state-of-the-art by a clear margin. Code, data and models will be publicly available.

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