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Laplacian principal components analysis (LPCA)

机译:拉普拉斯主成分分析(LPCA)

摘要

Systems and methods perform Laplacian Principal Components Analysis (LPCA). In one implementation, an exemplary system receives multidimensional data and reduces dimensionality of the data by locally optimizing a scatter of each local sample of the data. The optimization includes summing weighted distances between low dimensional representations of the data and a mean. The weights of the distances can be determined by a coding length of each local data sample. The system can globally align the locally optimized weighted scatters of the local samples and provide a global projection matrix. The LPCA improves performance of such applications as face recognition and manifold learning.
机译:系统和方法执行拉普拉斯主成分分析(LPCA)。在一个实施方式中,示例性系统通过局部优化数据的每个局部样本的散布来接收多维数据并降低数据的维数。优化包括求和数据的低维表示与平均值之间的加权距离。距离的权重可以通过每个局部数据样本的编码长度来确定。该系统可以全局对齐局部样本的局部优化加权散点并提供全局投影矩阵。 LPCA提高了诸如人脸识别和多种学习之类的应用程序的性能。

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