An enhanced approach to character recognition by Fourier descriptor

G. Man, J. Poon
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引用次数: 5

Abstract

A new algorithm of utilizing Fourier descriptors (FDs) as unique features in representation and classification of contours is proposed. It enhances the description of local information and distinguishes similar contours. The characteristic of this algorithm is to represent the object by several sets of FDs which represent different portions of the object in contrast to only one set of FDs which represents the whole object. The authors use a model-based approach in the recognition stage in which these sets, say k sets, of FDs of the input numeral will be matched with each predefined model of the numeral class. It is shown that a higher accuracy rate can be achieved by using a multicategory classifier incorporated with an artificial neural network classifier. Finally, an experiment on numeral recognition by the proposed algorithm is reported.<>
傅里叶描述符字符识别的改进方法
提出了一种利用傅里叶描述子作为轮廓表示和分类的独特特征的新算法。它增强了对局部信息的描述,并区分了相似的轮廓。该算法的特点是用几组fd来表示对象,这些fd代表对象的不同部分,而不是只用一组fd代表整个对象。作者在识别阶段使用基于模型的方法,其中输入数字的fd的这些集(例如k集)将与数字类的每个预定义模型相匹配。结果表明,将多类别分类器与人工神经网络分类器相结合可以达到较高的准确率。最后,对该算法进行了数字识别实验。
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