International Journal of Innovative Research in Engineering & Multidisciplinary Physical Sciences
E-ISSN: 2349-7300Impact Factor - 9.907

A Widely Indexed Open Access Peer Reviewed Online Scholarly International Journal

Call for Paper Volume 12 Issue 6 November-December 2024 Submit your research for publication

Image Classification using SVM-RBF in the field of Image Processing

Authors: Jitendra Kumar

DOI: https://doi.org/10.17605/OSF.IO/R4F8K

Short DOI: https://doi.org/ggngsk

Country:

Full-text Research PDF File:   View   |   Download


Abstract: Multi-class classification plays an important role in image classification. In this paper a feature sampling technique of image classification is to be proposed. For the process of optimization we used radial basis function algorithm for the proper selection of feature sub set selection. A function is radial basis (RBF) if its output depends on the distance of the input from a given stored vector. In a RBF network one hidden layer uses neurons with RBF activation functions describing local receptors. Then one output node is used to combine linearly the outputs of the hidden neurons. Different possibilities include: Modify the design of the SVM, as in order to incorporate the multi-class learning directly in the quadratic solving algorithm. Combine several binary classifiers: “One-against- One” (OAO) applies pair wise comparisons between classes, while “One-against-All” (OAA) compares a given class with all the others put together. OAO and OAA classification based on SVM technique is efficient process, but this SVM based feature selection generate result on the unclassified of data. When the scale of data set increases the complexity of pre-processing is also increases, it is difficult to reduce noise and outlier of data set.

Keywords: Image Classification, Feature Generation, Cluster, SVM, RBF


Paper Id: 10

Published On: 2013-11-16

Published In: Volume 1, Issue 2, November-December 2013

Cite This: Image Classification using SVM-RBF in the field of Image Processing - Jitendra Kumar - IJIRMPS Volume 1, Issue 2, November-December 2013. DOI 10.17605/OSF.IO/R4F8K

Share this