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An efficient fusion method of distance metric learning and random forests distance for image verification

机译:一种有效的距离度量学习与随机森林距离融合的图像验证方法

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Generally, the distance metric learning method using sample classifier (such as Euclidean distance computing) can not achieve perfect classification performance for the image verification. Nevertheless, the random forests distance method (RFD) can overcome the shortcoming of distance metric learning since it can handle the heterogeneous data well. In addition, the distance metric learning method can reduce the training time of RFD because it can remove the data correlation. Therefore this paper proposes a fusion method of distance metric learning and random forests distance. We obtain a matrix M using the distance metric learning method and use it to linearly transform the sample space, then we classify new samples by RFD. We experiment on LFW, Pubfig and ToyCars datasets and the results show that our proposed fusion method outperforms the single distance metric learning method or RFD in the recognition accuracy; the training time of RFD is much less in the transformed sample space.
机译:通常,使用样本分类器的距离度量学习方法(例如欧几里得距离计算)不能实现用于图像验证的完美分类性能。然而,随机森林距离方法(RFD)可以克服距离度量学习的缺点,因为它可以很好地处理异构数据。另外,距离度量学习方法可以减少数据相关性,因此可以减少RFD的训练时间。因此,本文提出了一种距离度量学习与随机森林距离的融合方法。我们使用距离度量学习方法获得矩阵M并将其用于线性变换样本空间,然后通过RFD对新样本进行分类。我们对LFW,Pubfig和ToyCars数据集进行了实验,结果表明,我们提出的融合方法在识别精度上优于单距离度量学习方法或RFD。在变换后的样本空间中,RFD的训练时间要少得多。

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