基于签名补丁、微配准和稀疏表示的光学文本识别新框架

R. F. Moghaddam, F. F. Moghaddam, M. Cheriet
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引用次数: 6

摘要

提出了一种不需要行、字、字分割的古代手抄本无分割光学识别器的开发框架。该框架使用签名补丁的概念引入了一种新的视觉文本表示。这些不受传统文本指南(如基线)约束的补丁,使用基于多级分类器(方向图)估计活动区域的微尺度配准方法相互配准。然后,从注册的特征补丁中提取一维特征向量,称为螺旋特征;增量学习过程使用使用螺旋特征原子字典的稀疏表示来执行。将该框架应用于乔治华盛顿数据库,取得了令人满意的结果。
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A new framework based on signature patches, micro registration, and sparse representation for optical text recognition
A framework for development of segmentation-free optical recognizers of ancient manuscripts, which work free from line, word, and character segmentation, is proposed. The framework introduces a new representation of visual text using the concept of signature patches. These patches which are free from traditional guidelines of text, such as the baseline, are registered to each other using a microscale registration method based on the estimation of the active regions using a multilevel classifier, the directional map. Then, an one-dimensional feature vector is extracted from the registered signature patches, named spiral features. The incremental learning process is performed using a sparse representation using a dictionary of spiral feature atoms. The framework is applied to the George Washington database with promising results.
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