用于对提取的字符特征向量进行分类的新型动态自组织特征图

Dayana Benny, K. Soumya, K. Nageswara Rao
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引用次数: 1

摘要

神经网络在模式识别中的重要性不可避免。离线手写识别是模式识别的一个重要应用。自组织特征图(Self-Organizing Feature Map)或 Kohonen 地图是一种数据可视化方法,可通过对相似数据进行聚类来降低数据维度。本系统采用了一种新的动态 SOFM 分类过程。在将手写图像转换为机器可读格式之前,它可用作字符分类流程。输入数据的分类是通过无监督学习进行的。所提出的动态 DSOFM 将收敛速度提高到普通 SOFM 方法的 2 倍左右。DSOFM 和普通 SOFM 的性能分析比较表明,所提出的方法在字符分类的时间消耗方面是高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Dynamic Self-Organizing Feature Maps for the classification of extracted feature vectors of characters
The importance of neural network in pattern recognition is inevitable. Offline handwritten recognition is a major application of pattern recognition. Self-Organizing Feature Map or Kohonen map is a data visualization method which can decrease the dimensions of data by clustering the similar data. A new dynamic SOFM classification process is used in the proposed system. It can be used as a character classification process before the conversion of the handwritten image into machine readable format. The classification of input data is performed by unsupervised learning. The proposed dynamic DSOFM increases the convergence speed about 2 times as much as the speed of ordinary SOFM method. The comparison of performance analysis of DSOFM and ordinary SOFM shows that the proposed method is efficient in terms of time consumption for character classification.
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