Statistical Approach for Text and Non-text Classifier in Off-line Handwritten Document

B. Pravalpruk, S. Watcharabutsarakham
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引用次数: 1

Abstract

Hand writing and hand drawing are natural ways to take note. A pen and papers are used to make a note for a long time. In digital era, the notes are often converted into a durable and formal format for further use. Therefore, the conversion application was developed in many fields with many skill such as handwritten recognition, object recognition, object classification, and others. In this paper, we demonstrate a method to classify connected components as flowchart and text. We use the Online Handwritten Flowchart Dataset (OHFD) which contained 419 handwritten flowcharts to benchmark our methodology. The result shown our classification technique get F1-score 77.6%.
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离线手写文档中文本和非文本分类器的统计方法
手写和手绘是自然的记录方式。笔和纸是用来长时间记笔记的。在数字时代,笔记通常被转换成耐用和正式的格式以供进一步使用。因此,在手写体识别、对象识别、对象分类等多个领域开发了转换应用程序。在本文中,我们展示了一种将连接组件分类为流程图和文本的方法。我们使用包含419个手写流程图的在线手写流程图数据集(OHFD)来测试我们的方法。结果表明,我们的分类技术达到了f1 - 77.6%。
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