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Using Nearest Neighbor Rule to Improve Performance of Multi-Class SVMs for Face Recognition

机译:使用最近邻规则提高多类支持向量机的人脸识别性能

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The classification time required by conventional multi-class SVMs greatly increases as the number of pattern classes increases. This is due to the fact that the needed set of binary class SVMs gets quite large. In this paper, we propose a method to reduce the number of classes by using nearest neighbor rule (NNR) in the principle component analysis and linear discriminant analysis (PCA+LDA) feature subspace. The proposed method reduces the number of face classes by selecting a few classes closest to the test data projected in the PCA+LDA feature subspace. Results of experiment show that our proposed method has a lower error rate than nearest neighbor classification (NNC) method. Though our error rate is comparable to the conventional multi-class SVMs, the classification process of our method is much faster.
机译:常规的多类别SVM所需的分类时间随着模式类别数量的增加而大大增加。这是由于以下事实:所需的二进制类SVM集变得非常大。在本文中,我们提出了一种在主成分分析和线性判别分析(PCA + LDA)特征子空间中使用最近邻规则(NNR)来减少类数的方法。所提出的方法通过选择一些最接近PCA + LDA特征子空间中投影的测试数据的类别来减少面部类别的数量。实验结果表明,本文提出的方法比最近邻分类法的错误率更低。尽管我们的错误率可以与传统的多类SVM相提并论,但是我们方法的分类过程要快得多。

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