支持向量机的切距离核

B. Haasdonk, Daniel Keysers
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引用次数: 129

摘要

在处理模式识别问题时,人们会遇到不同类型的先验知识。将这些知识纳入手边的分类方法是很重要的。一种非常常见的先验知识是输入数据的变换不变性,例如图像数据的几何变换,如移位、缩放等。基于距离的分类方法可以通过一种称为切线距离的改进距离度量来利用这一点。我们为支持向量机引入了一类新的核,它包含了切线距离,因此适用于已知这种变换不变性的情况。我们报告的实验结果表明,我们的方法的性能可与其他最先进的方法相媲美,同时避免了现有方法的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tangent distance kernels for support vector machines
When dealing with pattern recognition problems one encounters different types of a-priori knowledge. It is important to incorporate such knowledge into the classification method at hand. A very common type of a-priori knowledge is transformation invariance of the input data, e.g. geometric transformations of image-data like shifts, scaling etc. Distance based classification methods can make use of this by a modified distance measure called tangent distance. We introduce a new class of kernels for support vector machines which incorporate tangent distance and therefore are applicable in cases where such transformation invariances are known. We report experimental results which show that the performance of our method is comparable to other state-of-the-art methods, while problems of existing ones are avoided.
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