Document Layout Analysis with Deep Learning and Heuristics

PROCEEDINGS OF THE 2023 INTERNATIONAL WORKSHOP ON HISTORICAL DOCUMENT IMAGING AND PROCESSING, HIP 2023(2023)

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摘要
The automated yet highly accurate layout analysis (segmentation) of historical document images remains a key challenge for the improvement of Optical Character Recognition (OCR) results. But historical documents exhibit a wide array of features that disturb layout analysis, such as multiple columns, drop capitals and illustrations, skewed or curved text lines, noise, annotations, etc. We present a document layout analysis (DLA) system for historical documents implemented by pixel-wise segmentation using convolutional neural networks. In addition, heuristic methods are applied to detect marginals and to determine the reading order of text regions. Our system can detect more layout classes (e.g. initials, marginals) and achieves higher accuracy than competitive approaches. We describe the algorithm, the different models and how they were trained and discuss our results in comparison to the state-of-the-art on the basis of three historical document datasets.
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关键词
Document layout analysis,Segmentation,Reading order detection
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