World Library  


Add to Book Shelf
Flag as Inappropriate
Email this Book

Texture Based Hyperspectral Image Classification : Volume Xl-8, Issue 1 (28/11/2014)

By Kumar, B.

Click here to view

Book Id: WPLBN0004016297
Format Type: PDF Article :
File Size: Pages 6
Reproduction Date: 2015

Title: Texture Based Hyperspectral Image Classification : Volume Xl-8, Issue 1 (28/11/2014)  
Author: Kumar, B.
Volume: Vol. XL-8, Issue 1
Language: English
Subject: Science, Isprs, International
Collections: Periodicals: Journal and Magazine Collection (Contemporary), Copernicus Publications
Historic
Publication Date:
2014
Publisher: Copernicus Publications, Göttingen, Germany
Member Page: Copernicus Publications

Citation

APA MLA Chicago

Kumar, B., & Dikshit, O. (2014). Texture Based Hyperspectral Image Classification : Volume Xl-8, Issue 1 (28/11/2014). Retrieved from http://worldlibrary.in/


Description
Description: Department of Civil Engineering, Indian Institute of Technology Kanpur, India. This research work presents a supervised classification framework for hyperspectral data that takes into account both spectral and spatial information. Texture analysis is performed to model spatial characteristics that provides additional information, which is used along with rich spectral measurements for better classification of hyperspectral imagery. The moment invariants of an image can derive shape characteristics, elongation, and orientation along its axis. In this investigation second order geometric moments within small window around each pixel are computed which are further used to compute texture features. The textural and spectral features of the image are combined to form a joint feature vector that is used for classification. The experiments are performed on different types of hyperspectral images using multi-class one-vs-one support vector machine (SVM) classifier to evaluate the robustness of the proposed methodology. The results demonstrate that integration of texture features produced statistically significantly better results than spectral classification.

Summary
Texture Based Hyperspectral Image Classification

 

Click To View

Additional Books


  • High Resolution Remote Sensing Image Seg... (by )
  • Dense Tracking and Mapping with a Quadro... (by )
  • Hydroperiod Classification of Cervantes ... (by )
  • A Versatile and Low-cost 3D Acquisition ... (by )
  • Ecological Niche Modelling Using Satelli... (by )
  • A Method for Monitoring Hydrological Con... (by )
  • 3D Web Visualization of Huge Citygml Mod... (by )
  • Emulation of Liss III Images for High Te... (by )
  • Recent Results from Eo Studies on Indian... (by )
  • Developing a 3D Waveform Lidar Simulator... (by )
  • Height Gradient Approach for Occlusion D... (by )
  • Tooteko: a Case Study of Augmented Reali... (by )
Scroll Left
Scroll Right

 



Copyright © World Library Foundation. All rights reserved. eBooks from World Library are sponsored by the World Library Foundation,
a 501c(4) Member's Support Non-Profit Organization, and is NOT affiliated with any governmental agency or department.