Architecture Proposal for Data Extraction of Chart Images Using Convolutional Neural Network

P. R. S. C. Junior, Alexandre Abreu de Freitas, Rafael Daisuke Akiyama, B. Miranda, Tiago Araújo, Carlos G. R. Santos, B. Meiguins, J. Morais
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引用次数: 12

Abstract

Different information visualization techniques can be found in the literature due to the quantity and variety of data stored in computational systems. In this context, the classification of chart images becomes important because it allows various types of graphs to be detected automatically in different contexts, allowing a more specific processing for each type of visualization, for example, data extraction. Several techniques of image classification can be used, where the most common are based on the extraction of features of the images, and a later classification using these features. However, one technique that has been gaining prominence in the context of image classification is the Convolutional Neural Network (CNN). This technique is based on deep learning and, in a way, encapsulates the feature extraction process. In this way, the proposal of this article is to use an architecture of a client-server based model to do the chart image classification and later data extraction from this image. The main advantage is doing the CNN processing on the server side, so the application does not rely on client device limitations. For this, an image dataset was generated from the web, and it has ten classes of graphs. From the experiments done, it was seen that the use of this technique was feasible, and modifications in the architecture can be made as a proposal to improve the accuracy of the model.
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基于卷积神经网络的图表图像数据提取架构方案
由于计算系统中存储的数据的数量和种类不同,在文献中可以找到不同的信息可视化技术。在这种情况下,图表图像的分类变得非常重要,因为它允许在不同的上下文中自动检测各种类型的图形,从而允许对每种类型的可视化进行更具体的处理,例如,数据提取。可以使用几种图像分类技术,其中最常见的是基于图像特征的提取,然后使用这些特征进行分类。然而,在图像分类的背景下,卷积神经网络(CNN)已经获得了突出的技术。该技术基于深度学习,在某种程度上封装了特征提取过程。因此,本文的建议是使用基于客户机-服务器模型的体系结构对图表图像进行分类,然后从该图像中提取数据。其主要优点是在服务器端进行CNN处理,因此应用程序不依赖于客户机设备的限制。为此,从网络上生成了一个图像数据集,它有十类图。实验结果表明,该方法是可行的,可以对模型的结构进行修改,以提高模型的精度。
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