Image Reconstruction Using Multi Layer Perceptron MLP And Support Vector Machine SVM Classifier And Study Of Classification Accuracy
Journal: International Journal of Scientific & Technology Research (Vol.4, No. 2)Publication Date: 2015-02-15
Authors : Shovasis Kumar Biswas; Mohammad Mahmudul Alam Mia;
Page : 226-231
Keywords : Index Terms Neural networks; Classification; Support Vector Machine; Kernel functions; Multi layer perceptron.;
Abstract
Abstract Support Vector Machine SVM and back-propagation neural network BPNN has been applied successfully in many areas for example rule extraction classification and evaluation. In this paper we studied the back-propagation algorithm for training the multilayer artificial neural network and a support vector machine for data classification and image reconstruction aspects. A model focused on SVM with Gaussian RBF kernel is utilized here for data classification. Back propagation neural network is viewed as one of the most straightforward and is most general methods used for supervised training of multilayered neural network. We compared a support vector machine SVM with a back-propagation neural network BPNN for the task of data classification and image reconstruction. We made a comparison between the performances of the multi-class classification of these two learning methods. Comparing with these two methods we can conclude that the classification accuracy of the support vector machine is better and algorithm is much faster than the MLP with back propagation algorithm.
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Last modified: 2015-06-28 04:08:23