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引用次数: 8

摘要

提出了一种无分割的离线光学字符识别方法。该方法通过从整个单词中提取字符来实现识别,避免了分割过程。为特征选择包含位置向量和属性向量的控制点集。在训练模式下,每个样本字符被映射到一组控制点,并存储在一个属于字母表的存档中。在识别模式中,首先提取输入图像的控制点。然后,将每个控制点根据其属性与字母表中的控制点进行匹配。在匹配过程中,构造一个概率矩阵,其中包含一些用于识别字符的匹配度量(概率)。实验结果表明,该方法对草书字符的提取具有较好的鲁棒性。
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Optical character recognition without segmentation
A segmentation-free approach for off-line optical character recognition is presented. The proposed method performs the recognition by extracting the characters from the whole word, avoiding the segmentation process. A control point set which includes position and attribute vectors is selected for the features. In the training mode, each sample character is mapped to a set of control points and is stored in an archive which belongs to an alphabet. In the recognition mode, the control points of the input image are first extracted. Then, each control point is matched to the control points in the alphabet according to its attributes. During the matching process, a probability matrix is constructed which holds some matching measures (probabilities) for identifying the characters. Experimental results indicate that the proposed method is very robust in extracting the characters from a cursive script.
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