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Kernel Uncorrelated Supervised Discriminant Projections with Its Application to Face Recognition

机译:内核不相关的监督判别预测,其应用于面对识别

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Feature extraction is an important step towards pattern recognition. Unsupervised Discriminant Projection (UDP) shows desirable performance for face recognition, but it is unsupervised and the features extracted are correlated; besides it is a linear method in nature. To solve these problems, a new feature extraction method called kernel uncorrelated supervised discriminant projection (KUSDP) is proposed. In the proposed algorithm, the data in the original space are first mapped into one high dimensional space by kernel trick, then one supervised discriminant method is performed in this high dimensional space, meanwhile an uncorrelated constraint is imposed. As a result, the proposed algorithm can handle the nonlinearity, and the locality of the intra-classs can be preserved and the separability of inter-class is enlarged, also the uncorrelated vectors reduce the redundancy to its minimum, so it has more discriminative power. Experiments on face recognition demonstrate the correctness and effectiveness of the proposed algorithm.
机译:特征提取是朝着模式识别的重要一步。无监督的判别投影(UDP)显示了对人脸识别的理想性能,但是无监测,提取的特征是相关的;除此之外,本质上是一种线性方法。为了解决这些问题,提出了一种新的特征提取方法,称为内核不相关的监督判别投影(KUSDP)。在所提出的算法中,原始空间中的数据首先通过内核特征映射到一个高维空间,然后在该高维空间中执行一个监督判别方法,同时施加不相关的约束。结果,所提出的算法可以处理非线性,并且可以保留帧内类的局部性,并且放大了帧间的可分离的矢量,因此不相关的矢量将冗余降低到其最小值,因此它具有更大的辨别力。人脸识别实验证明了所提出的算法的正确性和有效性。

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