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Blurred Shape Model for binary and grey-level symbol recognition

机译:用于二进制和灰度符号识别的模糊形状模型

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摘要

Many symbol recognition problems require the use of robust descriptors in order to obtain rich information of the data. However, the research of a good descriptor is still an open issue due to the high variability of symbols appearance. Rotation, partial occlusions, elastic deformations, intra-class and inter-class variations, or high variability among symbols due to different writing styles, are just a few problems. In this paper, we introduce a symbol shape description to deal with the changes in appearance that these types of symbols suffer. The shape of the symbol is aligned based on principal components to make the recognition invariant to rotation and reflection. Then, we present the Blurred Shape Model descriptor (BSM), where new features encode the probability of appearance of each pixel that outlines the symbols shape. Moreover, we include the new descriptor in a system to deal with multi-class symbol categorization problems. Adaboost is used to train the binary classifiers, learning the BSM features that better split symbol classes. Then, the binary problems are embedded in an Error-Correcting Output Codes framework (ECOC) to deal with the multi-class case. The methodology is evaluated on different synthetic and real data sets. State-of-the-art descriptors and classifiers are compared, showing the robustness and better performance of the present scheme to classify symbols with high variability of appearance.
机译:为了获得丰富的数据信息,许多符号识别问题都需要使用健壮的描述符。然而,由于符号外观的高度可变性,对好的描述符的研究仍然是一个悬而未决的问题。旋转,部分遮挡,弹性变形,类内和类间变化,或由于书写风格不同而导致的符号间的高可变性只是几个问题。在本文中,我们介绍了符号形状描述以应对这些类型的符号遭受的外观变化。根据主要成分对齐符号的形状,以使识别不变于旋转和反射。然后,我们提出了模糊形状模型描述符(BSM),其中新特征编码了概述符号形状的每个像素的出现概率。此外,我们将新的描述符包含在系统中以处理多类符号分类问题。 Adaboost用于训练二进制分类器,学习可更好地拆分符号类的BSM功能。然后,将二进制问题嵌入纠错输出代码框架(ECOC)中以处理多类情况。该方法论是在不同的综合和真实数据集上进行评估的。对最先进的描述符和分类器进行了比较,显示了本方案对外观具有高度可变性的符号进行分类的鲁棒性和更好的性能。

著录项

  • 来源
    《Pattern recognition letters》 |2009年第15期|1424-1433|共10页
  • 作者单位

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Universitat de Barcelona, Dept. Matematica Aplicada i Analisi, Gran Via 585, 08007 Barcelona, Spain;

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Dept. Computer Science, Universitat Autonoma de Barcelona, Edifici Q, Bellaterra 08193, Spain;

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Universitat de Barcelona, Dept. Matematica Aplicada i Analisi, Gran Via 585, 08007 Barcelona, Spain;

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Universitat de Barcelona, Dept. Matematica Aplicada i Analisi, Gran Via 585, 08007 Barcelona, Spain;

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Dept. Computer Science, Universitat Autonoma de Barcelona, Edifici Q, Bellaterra 08193, Spain;

    Computer Vision Center, Universitat Autonoma de Barcelona, Edifici O, Bellaterra 08193, Spain Dept. Computer Science, Universitat Autonoma de Barcelona, Edifici Q, Bellaterra 08193, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    symbol description; symbol recognition; error-correcting output codes; adaboost; multi-class classification;

    机译:符号说明;符号识别;纠错输出代码;adaboost;多类别分类;

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