DIVA-HisDB:一个具有挑战性的中世纪手稿的精确注释大数据集

Fotini Simistira, Mathias Seuret, Nicole Eichenberger, A. Garz, M. Liwicki, R. Ingold
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引用次数: 74

摘要

本文介绍了一个公开可用的历史手稿数据库DIVA-HisDB,用于评估几个文档图像分析(DIA)任务。该数据库包括150页注释的三种不同的中世纪手稿具有挑战性的布局。此外,我们提供了一个布局分析的基础事实,这是由中世纪研究专家反复,审查和完善的。DIVA-HisDB和ground truth可用于训练和评估DIA任务,如布局分析、文本行分割、二值化和作者识别。本文还介绍了几种具有代表性的基线技术的布局分析结果,以帮助研究人员评估其方法并推进复杂历史手稿分析的前沿。经过优化的最先进的卷积自动编码器(CAE)的准确率约为95%,这表明对于这种具有挑战性的布局,还有很大的改进空间。最后,我们证明了现有的文本线分割方法由于行间和边缘文本元素而失败。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DIVA-HisDB: A Precisely Annotated Large Dataset of Challenging Medieval Manuscripts
This paper introduces a publicly available historical manuscript database DIVA-HisDB for the evaluation of several Document Image Analysis (DIA) tasks. The database consists of 150 annotated pages of three different medieval manuscripts with challenging layouts. Furthermore, we provide a layout analysis ground-truth which has been iterated on, reviewed, and refined by an expert in medieval studies. DIVA-HisDB and the ground truth can be used for training and evaluating DIA tasks, such as layout analysis, text line segmentation, binarization and writer identification. Layout analysis results of several representative baseline technologies are also presented in order to help researchers evaluate their methods and advance the frontiers of complex historical manuscripts analysis. An optimized state-of-the-art Convolutional Auto-Encoder (CAE) performs with around 95% accuracy, demonstrating that for this challenging layout there is much room for improvement. Finally, we show that existing text line segmentation methods fail due to interlinear and marginal text elements.
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