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Locality Preserving Discriminant Projections

机译:保留局部差异的投影

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摘要

A new manifold learning algorithm called locality preserving discriminant projections (LPDP) is proposed by adding between-class scatter matrix and within-class scatter matrix into locality preserving projections (LPP). LPDP can preserve locality and utilize label information in the projection. It is shown that the LPDP can successfully find the subspace which has better discrimination between different pattern classes. The subspace obtained by LPDP has more discriminant power than LPP, and is more suitable for recognition tasks. The proposed method was applied to USPS handwriting database and compared with LPP. Experimental results show the effectiveness of the proposed algorithm.
机译:通过将类间散布矩阵和类内散布矩阵添加到局部性保留投影(LPP)中,提出了一种新的流形学习算法,称为局部性保留判别投影(LPDP)。 LPDP可以保留局部性并在投影中利用标签信息。结果表明,LPDP可以成功找到在不同模式类别之间具有更好区分度的子空间。 LPDP获得的子空间比LPP具有更大的判别能力,并且更适合识别任务。将该方法应用于USPS手写数据库,并与LPP进行了比较。实验结果表明了该算法的有效性。

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