Relevant information in documents is often summarized in tables, helping the reader to identify useful facts. Most benchmark datasets support either document layout analysis or table understanding, but lack in providing data to apply both tasks in a unified way. We define the task of Contextualized Table Extraction (CTE), which aims to extract and define the structure of tables considering the textual context of the document. The dataset comprises 75k fully annotated pages of scientific papers, including more than 35k tables. Data are gathered from PubMed Central, merging the information provided by annotations in the PubTables-1M and PubLayNet datasets. The dataset can support CTE and adds new classes to the original ones. The generated annotations can be used to develop end-to-end pipelines for various tasks, including document layout analysis, table detection, structure recognition, and functional analysis. We formally define CTE and evaluation metrics, showing which subtasks can be tackled, describing advantages, limitations, and future works of this collection of data. Annotations and code will be accessible at https://github.com/AILab-UniFI/cte-dataset.

CTE: A Dataset for Contextualized Table Extraction / Gemelli A.; Vivoli E.; Marinai S.. - ELETTRONICO. - 3365:(2023), pp. 197-208. (Intervento presentato al convegno 19th Conference on Information and Research Science Connecting to Digital and Library Science, IRCDL 2023 tenutosi a ita nel 2023).

CTE: A Dataset for Contextualized Table Extraction

Gemelli A.;Vivoli E.;Marinai S.
2023

Abstract

Relevant information in documents is often summarized in tables, helping the reader to identify useful facts. Most benchmark datasets support either document layout analysis or table understanding, but lack in providing data to apply both tasks in a unified way. We define the task of Contextualized Table Extraction (CTE), which aims to extract and define the structure of tables considering the textual context of the document. The dataset comprises 75k fully annotated pages of scientific papers, including more than 35k tables. Data are gathered from PubMed Central, merging the information provided by annotations in the PubTables-1M and PubLayNet datasets. The dataset can support CTE and adds new classes to the original ones. The generated annotations can be used to develop end-to-end pipelines for various tasks, including document layout analysis, table detection, structure recognition, and functional analysis. We formally define CTE and evaluation metrics, showing which subtasks can be tackled, describing advantages, limitations, and future works of this collection of data. Annotations and code will be accessible at https://github.com/AILab-UniFI/cte-dataset.
2023
CEUR Workshop Proceedings
19th Conference on Information and Research Science Connecting to Digital and Library Science, IRCDL 2023
ita
2023
Gemelli A.; Vivoli E.; Marinai S.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1307268
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