A pipeline combining specialized OCR with Vision-Language Models improves transcription quality and speaker identification for Italian parliamentary speeches preserved as scanned documents.
Transcription and Recognition of Italian Parliamentary Speeches Using Vision-Language Models
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Parliamentary proceedings represent a rich yet challenging resource for computational analysis, particularly when preserved only as scanned historical documents. Existing efforts to transcribe Italian parliamentary speeches have relied on traditional Optical Character Recognition pipelines, resulting in transcription errors and limited semantic annotation. In this paper, we propose a pipeline based on Vision-Language Models for the automatic transcription, semantic segmentation, and entity linking of Italian parliamentary speeches. The pipeline employs a specialised OCR model to extract text while preserving reading order, followed by a large-scale Vision-Language Model that performs transcription refinement, element classification, and speaker identification by jointly reasoning over visual layout and textual content. Extracted speakers are then linked to the Chamber of Deputies knowledge base through SPARQL queries and a multi-strategy fuzzy matching procedure. Evaluation against an established benchmark demonstrates substantial improvements both in transcription quality and speaker tagging.
fields
cs.DL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Transcription and Recognition of Italian Parliamentary Speeches Using Vision-Language Models
A pipeline combining specialized OCR with Vision-Language Models improves transcription quality and speaker identification for Italian parliamentary speeches preserved as scanned documents.