陈俊英

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Shape Classification using Multiple Classifiers with Different Feature Sets

发布时间:2024-08-09  点击次数:

所属单位:信息与控制工程学院

发表刊物:Advanced Materials Research

关键字:中文关键字:图形分类;多分类器;特征集,英文关键字:shape classification; multiple classifiers; featur

摘要:In this paper, a new shape classification method based on different feature sets using multiple classifiers is proposed. Different feature sets are derived from the shapes by using different extraction methods. The implements of feature extraction are based on two ways: Fourier descriptors and Zernike moments. Multiple classifiers comprise Normal densities based linear classifier, k-nearest neighbor classifier, Feed-Forward neural network, Radial Basis Function neural network classifier. Each classifier is trained by two feature sets respectively to form two classification results. The final classification results are a combined response of the individual classifier using six different classifier combination rules and the results were compared with those derived from multiple classifiers based on the same feature sets and individual classifier. In this study we examined the different classification tasks on Kimia dataset. For the tasks the best combination strategy was found using the product rule, giving an average recognition rate of 95.83%.

备注:陈俊英

合写作者:JingChen,ZengxiFeng

第一作者:陈俊英

论文类型:期刊论文

卷号:卷:368-373

期号:期:1583

页面范围:页:1583-1587

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发表时间:2012-10-01

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