DOI: 10.7763/IJCCE.2013.V2.148
Dimensional Reduction of Hyperspectral Image Data Using Band Clustering and Selection Based on Statistical Characteristics of Band Images
Abstract—In this paper an approach for the dimensionality reduction of the hyperspectral image data using the method of band selection based on the statistical measures is introduced. The spread hyperspectral image data is measured in each band and the calculated bands are clustered using the K-means clustering technique. The K-means clustering of bands is performed in such a way that the intra-cluster variance is kept minimize and the inter-cluster variance maximum. The optimal number of band selection is done using the concept of Virtual Dimensionality (VD). The endmember or targets are extracted through Vertex Component Analysis (VCA). The experimental results are compared with other unsupervised band selection techniques to show the effectiveness of the proposed technique.
Index Terms—Dimesionaity reduction, k-means clustering,VD, VCA.
The authors are with the faculty of engineering & technology,International Islamic University, Islamabad, Pakistan.
Cite: Muhammad Sohaib, Ihsan-Ul-Haq, and Qaiser Mushtaq, "Dimensional Reduction of Hyperspectral Image Data Using Band Clustering and Selection Based on Statistical Characteristics of Band Images," International Journal of Computer and Communication Engineering vol. 2, no. 2, pp. 101-105 , 2013.
General Information
-
Dec 29, 2021 News!
IJCCE Vol. 10, No. 1 - Vol. 10, No. 2 have been indexed by Inspec, created by the Institution of Engineering and Tech.! [Click]
-
Mar 17, 2022 News!
IJCCE Vol.11, No.2 is published with online version! [Click]
-
Dec 29, 2021 News!
The dois of published papers in Vol. 9, No. 3 - Vol. 10, No. 4 have been validated by Crossref.
-
Dec 29, 2021 News!
IJCCE Vol.11, No.1 is published with online version! [Click]
-
Sep 16, 2021 News!
IJCCE Vol.10, No.4 is published with online version! [Click]
- Read more>>