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AN IMPLEMENTATION FRAMEWORK FOR KERNEL METHODS WITH HIGH-DIMENSIONAL PATTERNS

机译:高维模式核方法的实现框架

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As nonlinear feature extraction methods, kernel methods have been widely applied in pattern recognition. However, for high dimensional data such as face images, a kernel method will correspond to a high computational cost. In this paper, a novel idea and framework are presented to implement the kernel methods on high-dimensional data. A remarkable character of the framework is that there are two feature extraction processes. The first feature extraction process is performed to transform high dimensional samples into low dimensional data. And, the second feature extraction process is implemented based on the obtained low dimensional data. With the novel framework, the kernel methods will become much efficient. Moreover, all kernel methods can work with the framework. The experiments on face images show the validity of this framework. Further more, with this framework,kernel methods can achieve higher classification accuracies in comparison with the naive kernel methods.
机译:作为非线性特征提取方法,核方法已广泛应用于模式识别。然而,对于诸如面部图像之类的高维数据,核方法将对应于高计算成本。本文提出了一种在高维数据上实现核方法的新颖思想和框架。该框架的显着特征是有两个特征提取过程。执行第一特征提取过程以将高维样本转换成低维数据。并且,基于所获得的低维数据来实施第二特征提取处理。有了新颖的框架,内核方法将变得更加高效。而且,所有内核方法都可以与该框架一起使用。对人脸图像的实验证明了该框架的有效性。此外,与单纯的内核方法相比,使用此框架,内核方法可以实现更高的分类精度。

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