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Syntactic Pattern Recognition by Error Correcting Analysis on Tree Automata

机译:基于树自动机的纠错分析的句法模式识别

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摘要

Although the multidimensional primitives are more powerful than string primitives and there also exist some works concerning distance measure between multidimensional objects, there are no many applications of this kind of languages to syntactic pattern recognition tasks. In this work, multidimensional primitives are used for object modelling in a handwritten digit recognition task under a syntactic approach. Two well-known tree language inference algorithms are considered to build the models, using as error model an algorithm obtaining the editing distance between a tree automaton and a tree; the editing distance algorithm gives the measure needed to complete the classification. The experiments carried out show the good performance of the approach.
机译:尽管多维基元比字符串基元更强大,并且也存在一些有关多维对象之间距离度量的工作,但是这种语言在句法模式识别任务中的应用并不多。在这项工作中,多维原语在句法方法下用于手写数字识别任务中的对象建模。考虑使用两种众所周知的树语言推理算法来构建模型,其中使用获取树自动机与树之间的编辑距离的算法作为错误模型。编辑距离算法给出完成分类所需的度量。进行的实验表明该方法的良好性能。

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