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Preselection of support vector candidates by relative neighborhood graph for large-scale character recognition

机译:相对邻域图对大规模字符识别的相对邻域图预先选择

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We propose a pre-selection method for training support vector machines (SVM) with a large-scale dataset. Specifically, the proposed method selects patterns around the class boundary and the selected data is fed to train an SVM. For the selection, that is, searching for boundary patterns, we utilize a relative neighborhood graph (RNG). An RNG has an edge for each pair of neighboring patterns and thus, we can find boundary patterns by looking for edges connecting patterns from different classes. Through large-scale handwritten digit pattern recognition experiments, we show that the proposed pre-selection method accelerates SVM training process 5-15 times faster without degrading recognition accuracy.
机译:我们提出了一种具有大型数据集的培训支持向量机(SVM)的预选方法。具体地,所提出的方法选择类边界周围的图案,并且所选择的数据被馈送以训练SVM。对于选择,即寻找边界模式,我们利用相对邻域图(RNG)。 RNG具有每对相邻模式的边缘,因此,我们可以通过寻找来自不同类别的图案的边缘来找到边界模式。通过大规模的手写数字模式识别实验,我们表明所提出的预选方法加速SVM训练过程5-15倍而不会降低识别精度。

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