Document Layout Annotation: Database and Benchmark in the Domain of Public Affairs
June 12, 2023 Β· Declared Dead Β· π ICDAR Workshops
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Authors
Alejandro PeΓ±a, Aythami Morales, Julian Fierrez, Javier Ortega-Garcia, Marcos Grande, IΓ±igo Puente, Jorge Cordova, Gonzalo Cordova
arXiv ID
2306.10046
Category
cs.IR: Information Retrieval
Cross-listed
cs.CV,
cs.DB
Citations
3
Venue
ICDAR Workshops
Last Checked
4 months ago
Abstract
Every day, thousands of digital documents are generated with useful information for companies, public organizations, and citizens. Given the impossibility of processing them manually, the automatic processing of these documents is becoming increasingly necessary in certain sectors. However, this task remains challenging, since in most cases a text-only based parsing is not enough to fully understand the information presented through different components of varying significance. In this regard, Document Layout Analysis (DLA) has been an interesting research field for many years, which aims to detect and classify the basic components of a document. In this work, we used a procedure to semi-automatically annotate digital documents with different layout labels, including 4 basic layout blocks and 4 text categories. We apply this procedure to collect a novel database for DLA in the public affairs domain, using a set of 24 data sources from the Spanish Administration. The database comprises 37.9K documents with more than 441K document pages, and more than 8M labels associated to 8 layout block units. The results of our experiments validate the proposed text labeling procedure with accuracy up to 99%.
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