Multimodal LLMs for OCR, OCR Post-Correction, and Named Entity Recognition in Historical Documents
Journal:
arXiv
Published Date:
Apr 1, 2025
Abstract
We explore how multimodal Large Language Models (mLLMs) can help researchers
transcribe historical documents, extract relevant historical information, and
construct datasets from historical sources. Specifically, we investigate the
capabilities of mLLMs in performing (1) Optical Character Recognition (OCR),
(2) OCR Post-Correction, and (3) Named Entity Recognition (NER) tasks on a set
of city directories published in German between 1754 and 1870. First, we
benchmark the off-the-shelf transcription accuracy of both mLLMs and
conventional OCR models. We find that the best-performing mLLM model
significantly outperforms conventional state-of-the-art OCR models and other
frontier mLLMs. Second, we are the first to introduce multimodal
post-correction of OCR output using mLLMs. We find that this novel approach
leads to a drastic improvement in transcription accuracy and consistently
produces highly accurate transcriptions (<1% CER), without any image
pre-processing or model fine-tuning. Third, we demonstrate that mLLMs can
efficiently recognize entities in transcriptions of historical documents and
parse them into structured dataset formats. Our findings provide early evidence
for the long-term potential of mLLMs to introduce a paradigm shift in the
approaches to historical data collection and document transcription.