High Impact Factor : 4.396 icon | Submit Manuscript Online icon |

An Improved Way of Segmentation and Classification of Remote Sensing Images Using Kernel Induced Possiblistic C-Means Clustering Algorithm with Statistical Measures

Author(s):

D. Napoleon , Bharathiar University, Coimbatore, India; Dr. E.Ramaraj, Alagappa University, Karaikudi, India

Keywords:

Image Processing, Image analysis, Statistical Measures, Image Features

Abstract

The Ultimate significance of Images lies in processing the digital image which stems from two principal application areas: Advances of pictorial information for human interpretation; and dispensation of image data for storage, communication, and illustration for self-sufficient machine perception. The objective of this research work is to define the meaning and possibility of image segmentation based on remote sensing images which are successively classified with statistical measures. In this paper kernel induced Possiblistic C-means clustering algorithm has been implemented for classifying remote sensing image data with image features. As a final point of the proposed work is to point out that this algorithm works well for segmenting and classifying the image with better accuracy with statistical metrices.

Other Details

Paper ID: IJSRDV2I9222
Published in: Volume : 2, Issue : 9
Publication Date: 01/12/2014
Page(s): 221-224

Article Preview

Download Article