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首页> 外文期刊>Neural processing letters >Locally Minimizing Embedding and Globally Maximizing Variance: Unsupervised Linear Difference Projection for Dimensionality Reduction
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Locally Minimizing Embedding and Globally Maximizing Variance: Unsupervised Linear Difference Projection for Dimensionality Reduction

机译:局部最小化嵌入和全局最大化方差:用于降维的无监督线性差分投影

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摘要

Recently, many dimensionality reduction algorithms, including local methods and global methods, have been presented. The representative local linear methods are locally linear embedding (LLE) and linear preserving projections (LPP), which seek to find an embedding space that preserves local information to explore the intrinsic characteristics of high dimensional data. However, both of them still fail to nicely deal with the sparsely sampled or noise contaminated datasets, where the local neighborhood structure is critically distorted. On the contrary, principal component analysis (PCA), the most frequently used global method, preserves the total variance by maximizing the trace of feature variance matrix. But PCA cannot preserve local information due to pursuing maximal variance. In order to integrate the locality and globality together and avoid the drawback in LLE and PCA, in this paper, inspired by the dimensionality reduction methods of LLE and PCA, we propose a new dimensionality reduction method for face recognition, namely, unsupervised linear difference projection (ULDP). This approach can be regarded as the integration of a local approach (LLE) and a global approach (PCA), so that it has better performance and robustness in applications. Experimental results on the ORL, YALE and AR face databases show the effectiveness of the proposed method on face recognition.
机译:最近,已经提出了许多降维算法,包括局部方法和全局方法。代表性的局部线性方法是局部线性嵌入(LLE)和线性保留投影(LPP),它们试图找到一个保留局部信息的嵌入空间,以探索高维数据的内在特征。但是,它们两者仍然无法很好地处理稀疏采样或受噪声污染的数据集,在这些数据集中,局部邻域结构严重失真。相反,主成分分析(PCA)是最常用的全局方法,它通过最大化特征方差矩阵的迹线来保留总方差。但是由于追求最大方差,PCA无法保留本地信息。为了将局部性和全局性整合在一起,避免LLE和PCA的弊端,在LLE和PCA的降维方法的启发下,我们提出了一种新的人脸识别降维方法,即无监督线性差分投影(ULDP)。这种方法可以看作是本地方法(LLE)和全局方法(PCA)的集成,因此在应用程序中具有更好的性能和鲁棒性。在ORL,YALE和AR人脸数据库上的实验结果表明了该方法在人脸识别中的有效性。

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