Title of article :
Classification of hyperspectral remote-sensing data with primal SVM for small-sized training dataset problem Original Research Article
Author/Authors :
Mingmin Chi، نويسنده , , Rui Feng، نويسنده , , Lorenzo Bruzzone، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2008
Pages :
7
From page :
1793
To page :
1799
Abstract :
With recent technological advances in remote sensing, very high-dimensional (hyperspectral) data are available for a better discrimination among different complex land-cover classes having similar spectral signatures. However, this large number of bands makes very complex the task of automatic data analysis. In the real application, it is difficult and expensive for the expert to acquire enough training samples to learn a classifier. This results in a classification problem with small-size training sample set. Recently, a regularization-based algorithm is usually proposed to handle such problem, such as Support Vector Machine (SVM), which usually are implemented in the dual form with Lagrange theory. However, it can be solved directly in primal formulation. In this paper, we introduces an alternative implementation technique for SVM to address the classification problem with small-size training sample set. It has been empirically proven that the effectiveness of the introduced implementation technique which has been evaluated by benchmark datasets.
Keywords :
Primal Support Vector Machine (SVM) , Small-size training dataset problem , Hyperspectral remote-sensing data , classification
Journal title :
Advances in Space Research
Serial Year :
2008
Journal title :
Advances in Space Research
Record number :
1132147
Link To Document :
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