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引用次数: 0

摘要

汉字的形状变化范围很广,因此需要对汉字的识别特征进行充分的表征。对于拉丁字符或数字的识别,归一化光栅图像的像素值是达到非常好的识别率的适当特征。但是汉字需要更高分辨率的归一化栅格图像来识别复杂形状的字符,这导致分类的特征空间维度难以计算。因此,需要一种能够以紧凑的形式捕获字符形状的判别特征的特征提取算法。过去提出了几种算法,其中许多算法都是基于等高线数据的。本文还介绍了一种基于轮廓线的方法,该方法非常省时,并且克服了各向异性尺寸归一化过程中线消失的问题。
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New features for Chinese character recognition
The wide range of shape variations for Chinese characters requires an adequate representation of the discriminating features for classification. For the recognition of Latin characters or numerals pixel values of a normalized raster image are proper features to reach very good recognition rates. But Chinese characters require a much higher resolution of the normalized raster image to enable a discrimination of complex shaped characters which leads to a feature space dimensionality of prohibitive computational effort for classification. Therefore feature extraction algorithms are needed which capture the discriminative characteristics of character shapes in a compact form. Several algorithms were proposed in the past and many of them are based on the contour data. This paper also introduces a contour based approach which is very time efficient and overcomes the problem of vanishing lines during anisotropic size normalization.
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Document layout analysis based on emergent computation Offline handwritten Chinese character recognition via radical extraction and recognition Boundary normalization for recognition of non-touching non-degraded characters Words recognition using associative memory Image and text coupling for creating electronic books from manuscripts
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