:: Volume 10, Issue 33 (7-2016) ::
jwmseir 2016, 10(33): 73-84 Back to browse issues page
Comparison of Three Classification Algorithms (ANN, SVM and Maximum Likelihood) for Preparing Land Use Map (Case Study: Abolabbas Basin)
Maedeh Shanani Hoveyzeh * , Heidar Zarei
Abstract:   (9778 Views)

One of the most important tasks of remote sensing technology is to producing land use maps. In this study, in order to produce land use map of abolabbas basin, landsat satellite image of TM scanner acquired on 01 June 2009 were employed. the image classified by using three-layer perceptron neural network, support vector machine with the radial basis kernel function and Maximum Likelihood algorithm. So, The performance of different classification algorithms in producing land use maps were investigated using overall accuracy and kappa coefficient. Results showed that Nonparametric algorithms such as artificial neural network (with 95.8% overall accuracy and 0.95 kappa coefficient) and support vector machine with the radial basis kernel function (with 95.8% overall accuracy and 0.94 Kappa coefficient) with the same performance were better than the third method which is Parametric maximum likelihood algorithm (with 93.7% overall accuracy and 0.91 Kappa coefficient). Overall, this study showed that three classification algorithms, neural network, support vector machine and maximum likelihood are capable to generate land use maps with high accuracy.

Keywords: Satellite image, Classification algorithms, Land use map, Overall accuracy, Kappa coefficient, Abolabbas basin.
Full-Text [PDF 965 kb]   (2029 Downloads)    
Type of Study: Research | Subject: Special
Received: 2015/05/21 | Accepted: 2016/04/24 | Published: 2016/06/19


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Volume 10, Issue 33 (7-2016) Back to browse issues page