Mode Detection in Online Handwritten Documents Using BLSTM Neural Networks

Emanuel Indermühle, Volkmar Frinken, H. Bunke
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引用次数: 41

Abstract

Mode detection in online handwritten documents refers to the process of distinguishing different types of contents, such as text, formulas, diagrams, or tables, one from another. In this paper a new approach to mode detection is proposed that uses bidirectional long-short term memory (BLSTM) neural networks. The BLSTM neural network is a novel type of recursive neural network that has been successfully applied in speech and handwriting recognition. In this paper we show that it has the potential to significantly outperform traditional methods for mode detection, which are usually based on stroke classification. As a further advantage over previous approaches, the proposed system is trainable and does not rely on user-defined heuristics. Moreover, it can be easily adapted to new or additional types of modes by just providing the system with new training data.
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基于BLSTM神经网络的在线手写文档模式检测
在线手写文档的模式检测是指对文本、公式、图表、表格等不同类型的内容进行区分的过程。本文提出了一种利用双向长短期记忆神经网络进行模式检测的新方法。BLSTM神经网络是一种新型递归神经网络,已成功应用于语音和手写识别。在本文中,我们表明它有潜力显著优于传统的模式检测方法,这些方法通常基于卒中分类。与以前的方法相比,该方法的另一个优点是,所提出的系统是可训练的,并且不依赖于用户定义的启发式。此外,它可以很容易地适应新的或额外类型的模式,只需向系统提供新的训练数据。
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