支持向量选择与自适应及其在遥感中的应用

Gülsen Taskin Kaya, O. Ersoy, M. Kamasak
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引用次数: 6

摘要

用非线性支持向量机对非线性可分数据进行分类通常是一项困难的任务,特别是由于需要选择方便的核类型。此外,为了使非线性支持向量机获得较高的分类精度,在分类前需要使用交叉验证算法确定核参数。然而,这个过程非常耗时。在本研究中,我们提出了一种新的分类方法,我们将其命名为支持向量选择与自适应(SVSA)。SVSA不需要任何核选择,适用于线性和非线性可分数据。结果表明,该方法与传统的线性和非线性支持向量机方法相比,具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Selection and Adaptation and its application in remote sensing
Classification of nonlinearly separable data by nonlinear support vector machines is often a difficult task, especially due to the necessity of a choosing a convenient kernel type. Moreover, in order to get high classification accuracy with the nonlinear SVM, kernel parameters should be determined by using a cross validation algorithm before classification. However, this process is time consuming. In this study, we propose a new classification method that we name Support Vector Selection and Adaptation (SVSA). SVSA does not require any kernel selection and it is applicable to both linearly and nonlinearly separable data. The results show that the SVSA has promising performance that is competitive with the traditional linear and nonlinear SVM methods.
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