Computer vision and machine learning approaches for metadata enrichment to improve searchability of historical newspaper collections

报纸 数字化 工作流程 元数据 计算机科学 情报检索 信息抽取 数字图书馆 独创性 万维网 数据科学 人工智能 数据库 业务 法学 诗歌 创造力 艺术 文学类 广告 计算机视觉 政治学
作者
Dilawar Ali,Kenzo Milleville,Steven Verstockt,Nico Van de Weghe,Sally Chambers,Julie M. Birkholz
出处
期刊:Journal of Documentation [Emerald Publishing Limited]
卷期号:80 (5): 1031-1056 被引量:6
标识
DOI:10.1108/jd-01-2022-0029
摘要

Purpose Historical newspaper collections provide a wealth of information about the past. Although the digitization of these collections significantly improves their accessibility, a large portion of digitized historical newspaper collections, such as those of KBR, the Royal Library of Belgium, are not yet searchable at article-level. However, recent developments in AI-based research methods, such as document layout analysis, have the potential for further enriching the metadata to improve the searchability of these historical newspaper collections. This paper aims to discuss the aforementioned issue. Design/methodology/approach In this paper, the authors explore how existing computer vision and machine learning approaches can be used to improve access to digitized historical newspapers. To do this, the authors propose a workflow, using computer vision and machine learning approaches to (1) provide article-level access to digitized historical newspaper collections using document layout analysis, (2) extract specific types of articles (e.g. feuilletons – literary supplements from Le Peuple from 1938), (3) conduct image similarity analysis using (un)supervised classification methods and (4) perform named entity recognition (NER) to link the extracted information to open data. Findings The results show that the proposed workflow improves the accessibility and searchability of digitized historical newspapers, and also contributes to the building of corpora for digital humanities research. The AI-based methods enable automatic extraction of feuilletons, clustering of similar images and dynamic linking of related articles. Originality/value The proposed workflow enables automatic extraction of articles, including detection of a specific type of article, such as a feuilleton or literary supplement. This is particularly valuable for humanities researchers as it improves the searchability of these collections and enables corpora to be built around specific themes. Article-level access to, and improved searchability of, KBR's digitized newspapers are demonstrated through the online tool ( https://tw06v072.ugent.be/kbr/ ).
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