• DocumentCode
    3632226
  • Title

    Support Vector Selection and Adaptation and its application in remote sensing

  • Author

    Gulsen Taskin Kaya;Okan K. Ersoy;Mustafa E. Kamasak

  • Author_Institution
    Computational Science and Engineering, Istanbul Technical University, Turkey
  • fYear
    2009
  • Firstpage
    408
  • Lastpage
    412
  • Abstract
    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.
  • Keywords
    "Remote sensing","Support vector machines","Support vector machine classification","Kernel","Data engineering","Training data","Testing","Machine learning algorithms","Application software","Classification algorithms"
  • Publisher
    ieee
  • Conference_Titel
    Recent Advances in Space Technologies, 2009. RAST ´09. 4th International Conference on
  • Print_ISBN
    978-1-4244-3626-2;978-1-4244-3627-9
  • Type

    conf

  • DOI
    10.1109/RAST.2009.5158235
  • Filename
    5158235