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Sample Label-based PLS and Feature extraction

机译:基于样品的样品的PLS和特征提取

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摘要

Partial least squares (PLS) method is an effective approach for regression analysis and image feature extraction. Non-iterative PLS based on orthogonal constraints can extract PLS features rapidly and effectively, while the features maybe correlative. PLS based on Uncorrelated Score Constraints can extract Uncorrelated features which make image recognition more effective. 2DPLS can extract features from image matrices directly, which can solve the small sample problems. Considering that the traditional class label encodings don't emphasize the significance of the samples in overlapping regions between classes, fuzzy k-NN method is employed in class label encodings to make use of the sample distributions, then improved algorithms of PLS and 2DPLS based on sample label encodings are given. The results of experiments on ORL face database show that the improved algorithms presented are better than traditional PLS, which can extract discriminative features more efficiently and robustly.
机译:局部最小二乘(PLS)方法是回归分析和图像特征提取的有效方法。基于正交约束的非迭代PLS可以快速且有效地提取PLS特征,而特征可以是相关的。基于不相关的分数约束的PLS可以提取不相关的特征,使图像识别更有效。 2DPL可以直接从图像矩阵中提取特征,可以解决小的样本问题。考虑到传统的类标签编码不会强调样本在类之间的重叠区域中的样本的重要性,模糊K-NN方法在类标签编码中采用,以利用样本分布,然后基于以下方式改进的PLS和2DPL的算法。给出了样本标签编码。 ORL面部数据库的实验结果表明,所提出的改进算法优于传统的PLS,其可以更有效地提取歧视性功能。

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