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Hierarchical Recurrent Neural Network for Handwritten Strokes Classification

机译:手写笔划分类的分层经常性神经网络

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The paper presents an original solution to the online handwritten document processing in a free form, which is aimed at separating multi-class handwritten documents into texts, tables, formulas, drawings, etc. Stroke classification is an important step in automatic document layout analysis (DLA) in handwritten document recognition systems. Major DLA challenges arise due to a wide diversity of handwritten content, various writing styles, a lack of contextual knowledge, and the complicated structure of freeform handwritten documents. In this paper, we propose the hierarchical recurrent neural network (RNN) architecture to address the hierarchical structure inherent to the handwritten document. The novelty of feature aggregation pooling technique for transferring data between hierarchical levels allows achieving higher computational efficiency for using the suggested approach in on-device mobile computing. The presented approach gives an access to new state-of-the-art results in the task of multi-class classification with an accuracy of 97.25% on the IAMonDo dataset. This result can serve as the basis for efficient mobile applications for freeform handwriting document recognition.
机译:本文以自由形式提供了一个原始解决方案,以自由形式为旨在将多级手写文档分离为文本,表格,公式,图纸等。笔划分类是自动文档布局分析中的一个重要步骤( DLA)在手写文档识别系统中。主要的DLA挑战由于手写内容广泛,各种书写风格,缺乏上下文知识以及自由形式手写文件的复杂结构而产生。在本文中,我们提出了分层经常性神经网络(RNN)架构来解决手写文档固有的分层结构。用于在层级之间传输数据的特征聚合池技术的新颖性允许在设备移动计算中使用所提出的方法来实现更高的计算效率。呈现的方法可以访问新的最先进导致多级分类的任务,精度为Iamondo数据集的准确性为97.25%。该结果可以作为自由形式手写文档识别的高效移动应用的基础。

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