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Statistical Structure Modeling and Optimal Combined Strategy Based Chinese Components Recognition

机译:基于统计结构建模和最优组合策略的中文成分识别

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摘要

Extracting perceptually meaningful components plays an essential role in Chinese character studying process. This paper proposes an improved statistical structure modeling method to pick up all meaningful components in one character. Each stroke is represented by the distribution of the feature points both in model component and input character. The stroke relations are effectively reflected by the statistical dependency. The mutual information among strokes can be calculated to measure the importance of relationships. Considering the local features of components' difference from the whole character recognition, this paper proposes a method based on local feature to select local components rather than the whole character. At last, we adopt optimal combined strategy to select the best component recognition result. By this method, all the components in one character can be achieved.
机译:在汉字学习过程中,提取具有感知意义的成分至关重要。本文提出了一种改进的统计结构建模方法,可以在一个字符中提取所有有意义的成分。每个笔划都由模型组件和输入字符中特征点的分布表示。笔画关系通过统计依存关系有效地反映出来。笔画之间的相互信息可以计算出来,以衡量关系的重要性。针对局部特征与整体字符识别的差异,提出一种基于局部特征的局部特征选择方法,而不是整体特征。最后,我们采用最优组合策略来选择最佳的组件识别结果。通过这种方法,可以实现一个字符中的所有组件。

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