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Kernel semi-supervised marginal fisher analysis and its application to face recognition

机译:核半监督边际Fisher分析及其在人脸识别中的应用

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In the recent years, the manifold learning methods, which attempt to project the original data into a lower dimensional feature space by preserving the local neighborhood structure, have received much attention within the research communities of image analysis, computer vision and document data analysis. Among them, the recently proposed marginal fisher analysis (MFA) achieved high performance for face recognition. However, MFA is still a linear technique and usually deteriorates when labeled information is insufficient. In order to resolve those problems, we propose a kernel semi-supervised marginal fisher analysis (KSMFA) which not only exploits the nonlinear features but also preserves the global structure of labeled and unlabeled samples in addition to separating labeled samples in different classes from each other. Experimental results on the face databases indicate that the proposed KSMFA method is more effective than the MFA method and some existing kernel feature extraction algorithms.
机译:近年来,尝试通过保留局部邻域结构将原始数据投影到低维特征空间的多种学习方法在图像分析,计算机视觉和文档数据分析的研究界引起了广泛关注。其中,最近提出的边际费舍尔分析(MFA)在面部识别方面取得了很高的性能。但是,MFA仍然是线性技术,通常在标记信息不足时会恶化。为了解决这些问题,我们提出了一种核半监督边际费舍尔分析(KSMFA),该分析不仅利用非线性特征,而且还保留了标记和未标记样本的全局结构,以及将不同类别的标记样本彼此分开。人脸数据库的实验结果表明,所提出的KSMFA方法比MFA方法和一些现有的核特征提取算法更有效。

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