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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B, Cybernetics >Recognition of merged characters based on forepart prediction, necessity-sufficiency matching, and character-adaptive masking
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Recognition of merged characters based on forepart prediction, necessity-sufficiency matching, and character-adaptive masking

机译:基于事前预测,必要性匹配和字符自适应掩盖的合并字符识别

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摘要

Merged characters are the major cause of recognition errors. We classify the merging relationship between two involved characters into three types: "linear", " nonlinear", and "overlapped". Most segmentation methods handle the first type well, however, their capabilities of handling the other two types are limited. The weakness of handling the nonlinear and overlapped types results from character segmentation by linear, usually vertical, cuts assumed in these methods. This paper proposes a novel merged character segmentation and recognition method based on forepart prediction, necessity-sufficiency matching and character-adaptive masking. This method utilizes the information obtained from the forepart of merged characters to predict candidates for the leftmost character, and then applies character-adaptive masking and character recognition to verifying the prediction. Therefore, the arbitrary-shaped cutting path will follow the right shape of the leftmost character so as to preserve the shape of the next character. This method handles the first two types well and greatly improves the segmentation accuracy of the overlapped type. The experimental results and the performance comparisons with other methods demonstrate the effectiveness of the proposed method.
机译:合并字符是识别错误的主要原因。我们将两个涉及的字符之间的合并关系分为三种类型:“线性”,“非线性”和“重叠”。大多数分割方法都能很好地处理第一种类型,但是它们处理其他两种类型的能力却很有限。处理非线性和重叠类型的弱点是由这些方法中假定的线性(通常是垂直)切割进行字符分割引起的。提出了一种基于事前预测,必要性充分匹配和字符自适应掩蔽的融合字符分割与识别方法。此方法利用从合并字符的前部获得的信息来预测最左边字符的候选,然后将字符自适应屏蔽和字符识别应用于验证预测。因此,任意形状的切割路径将遵循最左边字符的正确形状,以保留下一个字符的形状。该方法很好地处理了前两种类型,大大提高了重叠类型的分割精度。实验结果以及与其他方法的性能比较证明了该方法的有效性。

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