计算机科学图理解与拓扑解析

Shaowei Wang, Lingling Zhang, Xuan Luo, Yi Yang, Xin Hu, Tao Qin, Jun Liu
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引用次数: 2

摘要

图表是表示复杂概念、逻辑和知识的一种特殊的视觉表达形式,广泛出现在教科书、博客和百科全书等教育场景中。目前对图表的研究初步集中在生物学、地理学等自然学科,其表达方式仍与自然图像相似。在本文中,我们构建了计算机科学领域第一个新的几何类型的图表数据集,该数据集具有更抽象的表达和复杂的逻辑关系。该数据集对大约1300个图和3500个问答对的对象和关系进行了详尽的注释。引入了基于新数据集的图分类(DC)和图问答(DQA)任务,提出了以分析图的拓扑结构和文本信息为重点的图配对网(DPN)。我们使用基于dnp的模型来解决DC和DQA任务,并将其性能与已知的自然图像分类模型和视觉问答模型进行比较。我们的实验表明了基于dnp的模型在图理解任务上的有效性,也表明我们的数据集比以前的自然图像理解数据集更复杂。提出的数据集为图表理解的研究带来了新的挑战,DPN方法为研究此类数据提供了新的视角。我们的数据集可以从https://github.com/WayneWong97/CSDia获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Science Diagram Understanding with Topology Parsing
Diagram is a special form of visual expression for representing complex concepts, logic, and knowledge, which widely appears in educational scenes such as textbooks, blogs, and encyclopedias. Current research on diagrams preliminarily focuses on natural disciplines such as Biology and Geography, whose expressions are still similar to natural images. In this article, we construct the first novel geometric type of diagrams dataset in Computer Science field, which has more abstract expressions and complex logical relations. The dataset has exhaustive annotations of objects and relations for about 1,300 diagrams and 3,500 question-answer pairs. We introduce the tasks of diagram classification (DC) and diagram question answering (DQA) based on the new dataset, and propose the Diagram Paring Net (DPN) that focuses on analyzing the topological structure and text information of diagrams. We use DPN-based models to solve DC and DQA tasks, and compare the performances to well-known natural images classification models and visual question answering models. Our experiments show the effectiveness of the proposed DPN-based models on diagram understanding tasks, also indicate that our dataset is more complex compared to previous natural image understanding datasets. The presented dataset opens new challenges for research in diagram understanding, and the DPN method provides a novel perspective for studying such data. Our dataset can be available from https://github.com/WayneWong97/CSDia.
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