半监督分类的laplace - hessian正则化

Hongli Liu, Weifeng Liu, Dapeng Tao, Yanjiang Wang
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引用次数: 4

摘要

半监督学习利用了少量有标记的图像和大量未标记的图像,近年来引起了人们的关注。具有代表性的是拉普拉斯正则化方法和黑森正则化方法。然而,拉普拉斯方法在分类过程中趋向于定值,泛化性差。虽然Hessian能量可以很好地预测超出域范围的数据点,但它的正则化器在回归过程中可能导致无用的结果。为此,提出了一种既能预测数据点又能提高Hessian正则化器稳定性的拉普拉斯-Hessian回归图像分类方法。为了对Laplacian-Hessian方法进行评价,本文采用了哥伦比亚消费者视频数据库。实验结果表明,该方法在分类和稳定性方面都优于拉普拉斯和Hessian方法。
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Laplacian-Hessian regularization for semi-supervised classification
With exploiting a small number of labeled images and a large number of unlabeled images, semi-supervised learning has attracted centralized attention in recent years. The representative works are Laplacian and Hessian regularization methods. However, Laplacian method tends to a constant value and poor generalization in the process of classification. Although Hessian energy can properly forecast the data points beyond the range of the domain, its regularizer probably leads to useless results in the process of regression. So the Laplacian-Hessian regression method for image classification is proposed, which can both predict the data points and enhance the stability of Hessian regularizer. To evaluate the Laplacian-Hessian method, Columbia Consumer Video database is employed in the paper. Experimental results demonstrate that the proposed method perform better than Laplacian or Hessian method in the matter of classification and stability.
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