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Statistical character structure modeling and its application to handwritten Chinese character recognition

机译:统计字符结构建模及其在手写汉字识别中的应用

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This paper proposes a statistical character structure modeling method. It represents each stroke by the distribution of the feature points. The character structure is represented by the joint distribution of the component strokes. In the proposed model, the stroke relationship is effectively reflected by the statistical dependency. It can represent all kinds of stroke relationship effectively in a systematic way. Based on the character representation, a stroke neighbor selection method is also proposed. It measures the importance of a stroke relationship by the mutual information among the strokes. With such a measure, the important neighbor relationships are selected by the nth order probability approximation method. The neighbor selection algorithm reduces the complexity significantly because we can reflect only some important relationships instead of all existing relationships. The proposed character modeling method was applied to a handwritten Chinese character recognition system. Applying a model-driven stroke extraction algorithm that cooperates with a selective matching algorithm, the proposed system is better than conventional structural recognition systems in analyzing degraded images. The effectiveness of the proposed methods was visualized by the experiments. The proposed method successfully detected and reflected the stroke relationships that seemed intuitively important. The overall recognition rate was 98.45 percent, which confirms the effectiveness of the proposed methods.
机译:本文提出了一种统计字符结构建模方法。它通过特征点的分布表示每个笔划。字符结构由组成笔画的联合分布表示。在提出的模型中,笔划关系有效地反映了统计依赖性。它可以系统地有效代表各种笔画关系。基于字符表示,提出了一种笔画邻居选择方法。它通过笔划之间的相互信息来衡量笔划关系的重要性。通过这种措施,通过n阶概率近似方法选择重要的邻居关系。邻居选择算法显着降低了复杂性,因为我们只能反映一些重要关系,而不是所有现有关系。提出的字符建模方法被应用于手写汉字识别系统。应用与选择性匹配算法配合的模型驱动笔画提取算法,该系统在分析退化图像方面优于常规结构识别系统。实验证明了所提方法的有效性。所提出的方法成功地检测并反映了直观上重要的笔画关系。总体识别率为98.45%,证实了所提方法的有效性。

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