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Incorporation of Relational Information in Feature Representation for Online Handwriting Recognition of Arabic Characters.

机译:将关系信息并入特征表示中以实现阿拉伯字符的在线手写识别。

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摘要

Interest in online handwriting recognition is increasing due to market demand for both improved performance and for extended supporting scripts for digital devices. Robust handwriting recognition of complex patterns of arbitrary scale, orientation and location is elusive to date because reaching a target recognition rate is not trivial for most of the applications in this field. Cursive scripts such as Arabic and Persian with complex character shapes make the recognition task even more difficult. Challenges in the discrimination capability of handwriting recognition systems depend heavily on the effectiveness of the features used to represent the data, the types of classifiers deployed and inclusive databases used for learning and recognition which cover variations in writing styles that introduce natural deformations in character shapes. This thesis aims to improve the efficiency of online recognition systems for Persian and Arabic characters by presenting new formal feature representations, algorithms, and a comprehensive database for online Arabic characters. The thesis contains the development of the first public collection of online handwritten data for the Arabic complete-shape character set. New ideas for incorporating relational information in a feature representation for this type of data are presented. The proposed techniques are computationally efficient and provide compact, yet representative, feature vectors. For the first time, a hybrid classifier is used for recognition of online Arabic complete-shape characters based on the idea of decomposing the input data into variables representing factors of the complete-shape characters and the combined use of the Bayesian network inference and support vector machines. We advocate the usefulness and practicality of the features and recognition methods with respect to the recognition of conventional metrics, such as accuracy and timeliness, as well as unconventional metrics. In particular, we evaluate a feature representation for different character class instances by its level of separation in the feature space. Our evaluation results for the available databases and for our own database of the characters' main shapes confirm a higher efficiency than previously reported techniques with respect to all metrics analyzed. For the complete-shape characters, our techniques resulted in a unique recognition efficiency comparable with the state-of-the-art results for main shape characters.
机译:由于市场对提高性能和扩展数字设备支持脚本的需求,对在线手写识别的兴趣日益增加。迄今为止,对任意规模,方向和位置的复杂模式进行可靠的手写识别尚难以实现,因为对于该领域的大多数应用而言,达到目标识别率并不是一件容易的事。具有复杂字符形状的草书(例如阿拉伯语和波斯语)使识别任务更加困难。手写识别系统辨别能力的挑战在很大程度上取决于用于表示数据的功能的有效性,部署的分类器的类型以及用于学习和识别的包容性数据库,这些数据库涵盖了书写样式中的各种变化,这些变化会导致字符形状自然变形。本文旨在通过提供新的形式特征表示,算法和全面的在线阿拉伯字符数据库来提高波斯和阿拉伯字符在线识别系统的效率。本文包含了第一个公开收集阿拉伯完整形状字符集的在线手写数据的信息。提出了将关系信息合并到此类数据的特征表示中的新思路。所提出的技术在计算上是有效的,并且提供了紧凑但又具有代表性的特征向量。基于将输入数据分解为代表完整形状字符因子的变量以及贝叶斯网络推断和支持向量的组合使用的思想,混合分类器首次用于在线阿拉伯完整形状字符的识别机器。我们提倡功能和识别方法在识别常规指标(如准确性和及时性以及非常规指标)方面的实用性和实用性。特别是,我们通过特征空间中的分离度来评估不同字符类实例的特征表示。我们对可用数据库和我们自己的角色主要形状数据库的评估结果证实,在分析所有指标方面,效率均高于以前报道的技术。对于完整形状的字符,我们的技术所产生的独特识别效率可与主要形状字符的最新结果相媲美。

著录项

  • 作者

    Nia, Sara Izadi.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 179 p.
  • 总页数 179
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:52

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