JISE


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Journal of Information Science and Engineering, Vol. 38 No. 6, pp. 1305-1315


Deformable Convolutional Neuron Network Model for Detecting Tables and Columns from Document Images


WEN-TIN LEE+ AND CHUAN-CHUN HUANG
Department of Software Engineering and Management
National Kaohsiung Normal University
Kaohsiung, 802 Taiwan
E-mail: wtlee@mail.nknu.edu.tw; 610877105@o365.nknu.edu.tw


Tables are usually used to present the main points of a document so that readers can quickly understand the content of the document. This study proposed a novel deformable convolutional neural network model for table detection to identify and extract tables from electronic document images. The model can perform table detection and table structure recognition at the same time, and more effectively detect the location of tables and columns. The proposed model is evaluated using Marmot extended dataset and the experimental results show that the table detection cycle is reduced, the computation time is shortened, and the overall efficiency is improved. Compared with other studies, the proposed model has achieved better table detection results in terms of precision, recall, and F1-score.


Keywords: table detection, table structure recognition, column identification, deformable CNN, deep learning

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