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ICDAR2017 Competition on Page Object Detection

机译:ICDAR2017页面对象检测竞争

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摘要

This paper presents the results of ICDAR2017 Competition on Page Object Detection (POD). POD is to detect page objects (tables, mathematical equations, graphics, figures, etc.) from document images. This competition makes use of a dataset consists of 2,000 document page images This dataset contains abundant page objects with various types and layouts. During the competition, we received 13 different teams' registrations and finally 8 of them submitted their results. All teams used deep learning as the basic method, then combined different traditional features or methods to improve the detection performance. The team NLPR-PAL achieved the averaged F1 of 0.898 and mAPs of 0.805 in the detection of all page objects under the IOU threshold 0.8. In this overview paper, we summarize the task design, dataset, results, and the approaches used by those teams of this competitions.
机译:本文介绍了ICDAR2017竞争的结果,页面对象检测(POD)。 POD是从文档图像中检测页面对象(表,数学方程式,图形,图表等)。本次竞争使用数据集由2,000个文档页面图像组成此数据集包含具有各种类型和布局的丰富页面对象。在比赛期间,我们收到了13个不同的团队的注册,最后有8个他们的结果提交了结果。所有球队都使用深入学习作为基本方法,然后组合不同的传统功能或方法来提高检测性能。 NLPR-PAL团队在检测到IOU阈值下的所有页面对象时,NLPR-PAL的平均F1和0.805的映射为0.8。在此概述纸张中,我们总结了本次比赛团队使用的任务设计,数据集,结果和方法。

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