MexPub: Deep Transfer Learning for Metadata Extraction from German Publications

In contrast to most of the English scientific publications that follow standard and simple layouts, the order, content, position and size of metadata in German publications vary greatly among publications. This variety makes traditional NLP methods fail to accurately extract metadata from these publ...

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Bibliographic Details
Published in:2021 ACM/IEEE Joint Conference on Digital Libraries (JCDL) pp. 250 - 253
Main Authors: Boukhers, Zeyd, Beili, Nada, Hartmann, Timo, Goswami, Prantik, Zafar, Muhammad Arslan
Format: Conference Proceeding
Language:English
Published: IEEE 01.09.2021
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Summary:In contrast to most of the English scientific publications that follow standard and simple layouts, the order, content, position and size of metadata in German publications vary greatly among publications. This variety makes traditional NLP methods fail to accurately extract metadata from these publications. In this paper, we present a method that extracts metadata from PDF documents with different layouts and styles by viewing the document as an image. We used Mask R-CNN which is trained on COCO dataset and finetuned with PubLayNet dataset that consists of 200K PDF snapshots with five basic classes (e.g, text, figure, etc). We refine-tuned the model on our proposed synthetic dataset consisting of 30K article snapshots to extract nine patterns (i.e. author, title, etc). Our synthetic dataset is generated using contents in both languages German and English and a finite set of challenging templates obtained from German publications. Our method achieved an average accuracy of around 90% which validates its capability to accurately extract metadata from a variety of PDF documents with challenging templates.
DOI:10.1109/JCDL52503.2021.00076