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Diag2graph: Representing Deep Learning Diagrams In Research Papers As Knowledge Graphs

机译:Diag2graph:将研究论文中的深度学习图表示为知识图

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Which are the segmentation algorithms proposed during 2018-2019 in CVPR that have CNN architecture?’ Answering this question involves identifying and analyzing the deep learning architecture diagrams from several research papers. Retrieving such information poses significant challenge as most of the existing academic search engines are primarily based on only the text content. In this paper, we introduce Diag2Graph, an end-to-end framework for parsing deep learning diagram-figures, that enables powerful search and retrieval of architectural details in research papers. Our proposed approach automatically localizes figures from research papers, classifies them, and analyses the content of the diagram-figures. The key steps in analyzing the Figure content is the extraction of the different components data and finding their structural relation. Finally, the extracted components and their relations are represented in the form of a deep knowledge graph. A thorough evaluation on a real-word annotated dataset has been done to demonstrate the efficacy of our approach.
机译:哪些是在2018-2019年期间在CVPR中提出的具有CNN架构的分割算法?’要回答这个问题,需要从几篇研究论文中识别和分析深度学习架构图。由于大多数现有的学术搜索引擎主要仅基于文本内容,因此检索此类信息提出了巨大的挑战。在本文中,我们介绍了Diag2Graph,这是一个用于解析深度学习图数据的端到端框架,可在研究论文中进行强大的架构细节搜索和检索。我们提出的方法可以自动定位研究论文中的图形,对它们进行分类,并分析图形数据的内容。分析图形内容的关键步骤是提取不同组件数据并找到它们的结构关系。最后,提取的组件及其关系以深度知识图的形式表示。已经对实词注释数据集进行了全面评估,以证明我们方法的有效性。

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