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One improvement to two-dimensional locality preserving projection method for use with face recognition

机译:一种用于人脸识别的二维局部保留投影方法的改进

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摘要

While locality preserving projection (LPP) is directly applicable to only vector data, two-dimensional locality preserving projection (2DLPP) is directly applicable to two-dimensional data. As a result, 2DLPP is computationally more efficient than LPP. On the other hand, when determining the transform axes, both conventional 2DLPP and LPP do not exploit the class label information of training samples, the use of which is usually advantageous for producing good classification result. In order to exploit the class label information, we proposed one novel LPP method, i.e. two-dimensional discriminant supervised LPP (2DDSLPP). We also analyzed the characteristics and advantages of 2DDSLPP and presented the difference and relationship between 2DDSLPP and other methods. Compared with two-dimensional discriminant LPP (2DDLPP), 2DDSLPP has a stronger capability to preserve the distance relation of samples from different classes. We used two face databases to test 2DDSLPP and several other two-dimensional dimensionality reduction methods. Experimental results show that 2DDSLPP can obtain a higher classification right rate.
机译:虽然局部性保留投影(LPP)仅直接适用于矢量数据,但二维局部性保留投影(2DLPP)直接适用于二维数据。结果,2DLPP在计算上比LPP更有效。另一方面,当确定变换轴时,常规的2DLPP和LPP都没有利用训练样本的类别标签信息,通常使用它们对于产生良好的分类结果是有利的。为了利用类别标签信息,我们提出了一种新颖的LPP方法,即二维判别监督LPP(2DDSLPP)。我们还分析了2DDSLPP的特点和优点,并提出了2DDSLPP与其他方法的区别和关系。与二维判别LPP(2DDLPP)相比,2DDSLPP具有更强的能力来保留不同类别的样本之间的距离关系。我们使用了两个人脸数据库来测试2DDSLPP和其他几种二维降维方法。实验结果表明,2DDSLPP可以获得较高的分类正确率。

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