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BROS: A Pre-trained Language Model for Understanding Texts in Document

Teakgyu Hong, Donghyun Kim, Mingi Ji, Wonseok Hwang, Dae‐Hyun Nam, Sungrae Park

202125 citations

Abstract

Understanding document from their visual snapshots is an emerging and challenging problem that requires both advanced computer vision and NLP methods. Although the recent advance in OCR enables the accurate extraction of text segments, it is still challenging to extract key information from documents due to the diversity of layouts. To compensate for the difficulties, this paper introduces a pre-trained language model, BERT Relying On Spatiality (BROS), that represents and understands the semantics of spatially distributed texts. Different from previous pre-training methods on 1D text, BROS is pre-trained on large-scale semi-structured documents with a novel area-masking strategy while efficiently including the spatial layout information of input documents. Also, to generate structured outputs in various document understanding tasks, BROS utilizes a powerful graph-based decoder that can capture the relation between text segments. BROS achieves state-of-the-art results on four benchmark tasks: FUNSD, SROIE*, CORD, and SciTSR. Our experimental settings and implementation codes will be publicly available.

Topics & Concepts

Computer scienceNatural language processingLanguage modelArtificial intelligenceKey (lock)Information retrievalGraphMasking (illustration)Semantics (computer science)Relation (database)Data miningProgramming languageVisual artsTheoretical computer scienceArtComputer securityHandwritten Text Recognition TechniquesMultimodal Machine Learning ApplicationsImage Retrieval and Classification Techniques
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