将SOM与KNN相结合用于分类任务

L. A. Silva, E. Del-Moral-Hernandez
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引用次数: 21

摘要

分类是人类在做决定时执行的一项常见任务。人工神经网络(ANN)或统计学技术被用于帮助自动分类。这项工作提出了一种基于自组织地图神经网络(SOM)和k -近邻(KNN)统计分类器的方法,称为SOM-KNN,应用于车牌数字识别。虽然比传统方法快得多,但所提出的SOM-KNN相对于它们保持有竞争力的分类率。将SOM-KNN与个体分类器、SOM和KNN进行对比,分类率分别为89.48±5.6%、84.23±5.9%和91.03±5.1%。SOM-KNN与KNN识别结果的等效性经方差分析证实,p值为0.27。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A SOM combined with KNN for classification task
Classification is a common task that humans perform when making a decision. Techniques of Artificial Neural Networks (ANN) or statistics are used to help in an automatic classification. This work addresses a method based in Self-Organizing Maps ANN (SOM) and K-Nearest Neighbor (KNN) statistical classifier, called SOM-KNN, applied to digits recognition in car plates. While being much faster than more traditional methods, the proposed SOM-KNN keeps competitive classification rates with respect to them. The experiments here presented contrast SOM-KNN with individual classifiers, SOM and KNN, and the results are classification rates of 89.48±5.6, 84.23±5.9 and 91.03±5.1 percent, respectively. The equivalency between SOM-KNN and KNN recognition results are confirmed with ANOVA test, which shows a p-value of 0.27.
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