Improving Text Recognition using Optical and Language Model Writer Adaptation

Yann Soullard, Wassim Swaileh, Pierrick Tranouez, T. Paquet, Clément Chatelain
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引用次数: 13

Abstract

State-of-the-art methods for handwriting text recognition are based on deep learning approaches and language modeling that require large data sets during training. In practice, there are some applications where the system processes mono-writer documents, and would thus benefit from being trained on examples from that writer. However, this is not common to have numerous examples coming from just one writer. In this paper, we propose an approach to adapt both the optical model and the language model to a particular writer, from a generic system trained on large data sets with a variety of examples. We show the benefits of the optical and language model writer adaptation. Our approach reaches competitive results on the READ 2018 data set, which is dedicated to model adaptation to particular writers.
利用光学和语言模型书写器自适应改进文本识别
最先进的手写文本识别方法基于深度学习方法和语言建模,这些方法在训练期间需要大量数据集。在实践中,有一些应用程序,其中系统处理单作者文档,因此将受益于来自该作者的示例的训练。然而,这是不常见的,有大量的例子来自一个作家。在本文中,我们提出了一种方法,使光学模型和语言模型适应于特定的作者,从一个通用系统训练的大型数据集与各种各样的例子。我们展示了视觉和语言模式作家适应的好处。我们的方法在READ 2018数据集上取得了有竞争力的结果,该数据集致力于对特定作家的模型适应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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