cs.AI updates on arXiv.org 07月14日
Large Multi-modal Model Cartographic Map Comprehension for Textual Locality Georeferencing
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本文提出一种利用大型多模态模型进行地理编码的新方法,通过多模态能力视觉化空间关系,实现复杂地域描述的地理编码,实验结果表明该方法在地理编码任务上具有显著优势。

arXiv:2507.08575v1 Announce Type: new Abstract: Millions of biological sample records collected in the last few centuries archived in natural history collections are un-georeferenced. Georeferencing complex locality descriptions associated with these collection samples is a highly labour-intensive task collection agencies struggle with. None of the existing automated methods exploit maps that are an essential tool for georeferencing complex relations. We present preliminary experiments and results of a novel method that exploits multi-modal capabilities of recent Large Multi-Modal Models (LMM). This method enables the model to visually contextualize spatial relations it reads in the locality description. We use a grid-based approach to adapt these auto-regressive models for this task in a zero-shot setting. Our experiments conducted on a small manually annotated dataset show impressive results for our approach ($\sim$1 km Average distance error) compared to uni-modal georeferencing with Large Language Models and existing georeferencing tools. The paper also discusses the findings of the experiments in light of an LMM's ability to comprehend fine-grained maps. Motivated by these results, a practical framework is proposed to integrate this method into a georeferencing workflow.

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地理编码 多模态模型 大型语言模型
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