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Segmentation vs. non-segmentation based neural techniques for cursive word recognition: an experimental analysis

机译:分割与非分割基于非分割的神经技术,用于法学词识别:实验分析

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This paper compares segmentation-based and non-segmentation based techniques for cursive word recognition. In our segmentation based technique, every word is segmented into characters, the chain code features are extracted from segmented characters, the features are fed to neural network classifier and finally the words are constructed using a string compare algorithm. In our non-segmentation based technique, the chain code features are extracted directly from words and the words are fed to a neural network classifier to classify them into word classes. To make fair comparison, CEDAR benchmark database is used, and the parameters such as the number of words, thresholding, resizing, feature extraction techniques, etc., are kept same for both the techniques. Experimental results show that the non-segmentation technique achieves much higher recognition rate than the segmentation based technique.
机译:本文比较了基于分段的基于分割和基于非分割的法学词识别技术。在基于分段的技术中,将每个单词分段为字符,链条代码特征从分段字符中提取,该功能被馈送到神经网络分类器,最后使用串比较算法构造单词。在我们的非分割技术中,链条代码特征直接从单词中提取,并将单词馈送到神经网络分类器,以将它们分类为Word类。为了进行公平的比较,使用CEDAR基准数据库,并且对于这两种技术,诸如单词数,阈值,调整大小,特征提取技术等的参数保持不变。实验结果表明,非分割技术实现了比基于分段的技术更高的识别率。

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