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Papers/DrishtiKon: Multi-Granular Visual Grounding for Text-Rich ...

DrishtiKon: Multi-Granular Visual Grounding for Text-Rich Document Images

Badri Vishal Kasuba, Parag Chaudhuri, Ganesh Ramakrishnan

2025-06-26Question AnsweringVisual Groundingdocument understandingVisual Question Answering (VQA)Visual Question AnsweringOptical Character Recognition (OCR)
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Abstract

Visual grounding in text-rich document images is a critical yet underexplored challenge for document intelligence and visual question answering (VQA) systems. We present \drishtikon, a multi-granular visual grounding framework designed to enhance interpretability and trust in VQA for complex, multilingual documents. Our approach integrates robust multi-lingual OCR, large language models, and a novel region matching algorithm to accurately localize answer spans at block, line, word, and point levels. We curate a new benchmark from the CircularsVQA test set, providing fine-grained, human-verified annotations across multiple granularities. Extensive experiments demonstrate that our method achieves state-of-the-art grounding accuracy, with line-level granularity offering the best trade-off between precision and recall. Ablation studies further highlight the benefits of multi-block and multi-line reasoning. Comparative evaluations with leading vision-language models reveal the limitations of current VLMs in precise localization, underscoring the effectiveness of our structured, alignment-based approach. Our findings pave the way for more robust and interpretable document understanding systems in real-world, text-centric scenarios. Code and dataset has been made available at https://github.com/kasuba-badri-vishal/DhrishtiKon.

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