2021
DOI: 10.48550/arxiv.2108.13297
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VTLayout: Fusion of Visual and Text Features for Document Layout Analysis

Abstract: Documents often contain complex physical structures, which make the Document Layout Analysis (DLA) task challenging. As a preprocessing step for content extraction, DLA has the potential to capture rich information in historical or scientific documents on a large scale. Although many deep-learning-based methods from computer vision have already achieved excellent performance in detecting Figure from documents, they are still unsatisfactory in recognizing the List, Table , Text and Title category blocks in DLA.… Show more

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