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Keyword Spotting from Online Chinese Handwritten Documents Using One-vs-All Trained Character Classifier

机译:使用一对多训练过的字符分类器从在线中文手写文档中发现关键词

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This paper presents a text query-based method for keyword spotting from online Chinese handwritten documents. The similarity between a text word and handwriting is obtained by combining the character similiarity scores given by a character classifier. To overcome the ambiguity of character segmentation, multiple candidates of character patterns are generated by over-segmentation, and sequences of candidate characters are matched with the query word in beam search. The character classifier is trained by one-vs-all strategy so that it gives high similarity to the target class and low scores to the others. Particularly, we use a one-vs-all trained prototype classifier and a support vector machine (SVM) classifier for similarity scoring. The method yielded promising performance in experiments on a database containing 550 pages of 110 writers. For words of four characters, the recall, precision and F measure are 87.25%, 94.84% and 90.88%, respectively.
机译:本文提出了一种基于文本查询的在线中文手写文档关键词识别方法。文字和笔迹之间的相似度是通过组合由字符分类器给出的相似度得分获得的。为了克服字符分割的歧义,通过过度分割来生成多个字符图案候选,并且在波束搜索中将候选字符的序列与查询词进行匹配。角色分类器是通过一对多策略进行训练的,因此它与目标类具有很高的相似性,而其他类则具有较低的分数。特别地,我们使用一对多人训练的原型分类器和一个支持向量机(SVM)分类器进行相似性评分。该方法在包含550页的110位作家的数据库上进行的实验中取得了令人鼓舞的性能。对于四个字符的单词,查全率,精确度和F量度分别为87.25%,94.84%和90.88%。

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