基于合成数据和DAG-SVM分类器的无分词满词识别

Di Huang, Min Li, Rui-rui Zheng, Shuang Xu, Jiajing Bi
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引用次数: 3

摘要

目前对满文识别的研究较少,现有的方法主要是基于汉字或笔画的分割。因此,它们的性能强烈依赖于分割精度。本文提出了一种无分词的满词全词识别方法,以避免满词的分词错误。首先,我们建立了一个初始的满词图像数据集,然后通过对满词图像的结构扭曲来获取合成数据。其次,采用多项式核函数与有向无环图相结合的支持向量机分类器对2 ~ 100类的满语词进行分类;实验结果表明,对于100路分类问题,准确率达到78%,对于小于40个类别的分类准确率甚至达到90%以上。本文提出的综合数据方法是扩充满词识别训练和测试数据集的有效方法。
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Synthetic Data and DAG-SVM Classifier for Segmentation-Free Manchu Word Recognition
There are a few studies on Manchu recognition, and the existing methods are mainly based on segmentation on characters or strokes. Thus, their performances are strongly dependent on segmentation accuracy. In this paper, a whole word recognition method for segmentation-free Manchu word is proposed to avoid the mis-segmentation of Manchu word. Firstly, we build an initial Manchu word image dataset, and then augment it with synthetic data, which are harvested via structural distortions on Manchu word image. Secondly, the support vector machine classifier with polynomial kernel function combined with directed acyclic graph is used for classification of Manchu words from 2 to 100 classes. The experiment results show that the precise is 78% for the 100-way classification problem, even above 90% for classes less than 40. The synthetic data method proposed in this paper is an effective way to augment the training and test dataset for Manchu word recognition.
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