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Recognition of Handwritten Kannada Numerals Using Directional Features and K-Means

机译:使用方向特征和K均值识别手写卡纳达语数字

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Data Clustering is considered as an interesting approach for finding similarities in data and putting similar data into groups. Clustering partitions a data set into several groups such that the similarity within a group is larger than that among groups. This paper explores the cluster-based classification scheme in the context of recognition of handwritten Kannada numerals. In this paper, K-Means clustering algorithm is being used for the classification. The features used for the classification are obtained from the directional chain code information of the contour points of the numerals. The proposed algorithm is experimented on nearly 1000 samples of handwritten Kannada numerals and obtained 96% of recognition accuracy.
机译:数据聚类被认为是寻找数据相似性并将相似数据分组的有趣方法。群集将数据集划分为几个组,以使组内的相似度大于组间的相似度。本文在手写卡纳达语数字识别的背景下探索了基于聚类的分类方案。本文采用K-Means聚类算法进行分类。用于分类的特征是从数字轮廓点的定向链码信息中获得的。该算法在将近1000个手写卡纳达语数字样本上进行了实验,获得了96%的识别精度。

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