Classification of Buildings and Roads Using Support Vector Machine

Digital Image Computing: Techniques and Applications(2008)

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摘要
In this paper, it is intended to accurately separate pixels related to two spectrally similar classes of building and road in Shiraz urban area. To achieve this goal, Support Vector Machine (SVM) classification algorithm has been applied to a Landsat ETM+ image of Shiraz City. In order to assess the accuracy of the results, Maximum Likelihood Classification (MLC) as an approved and conventional algorithm has been applied on the image too. A visual and numerical comparison between these classification methods is carried out. Numerical comparison has been performed through overall accuracy and kappa coefficient applied on confusion matrices. From the assessment, it can be concluded that SVM classification method yields better results in the separation of pixels, especially on those related to two spectrally similar classes of building and road in this urban area.
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关键词
spectrally similar class,overall accuracy,conventional algorithm,support vector machine,classification method,urban area,classification algorithm,svm classification method yield,shiraz city,shiraz urban area,numerical comparison,classification algorithms,kappa coefficient,image classification,training data,image resolution,kernel,support vector machines,pixel
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