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Dr. Hossam El Din Hassanein Aly El Semary :: Publications:

Title:
Semi-automatic general approach to achieve the practical number of clusters for classification of remote sensing MS satellite images
Authors: Hossam H. El Semary, Ahmed Serwa
Year: 2019
Keywords: Keywords Remote sensing Multi spectral scanner (MSS) K-means Unsupervised classification
Journal: Korean Spatial Information Society
Volume: 18 july 2019
Issue: Not Available
Pages: Not Available
Publisher: Springer
Local/International: International
Paper Link: Not Available
Full paper Not Available
Supplementary materials Not Available
Abstract:

Abstract The main objective of this research is to find a semi-automatic method to determine the practical number of clusters in MS satellite images. This study puts a general skeleton for determining the practical number of classes in multi spectral (MS) remote sensing images. The sequence of the research starts with input the reference data, proposed classes’ samples and the MS image of the study area. The unsupervised classification is carried out using Envi software many times with different excessive number of classes. Fuzzy K-means method is applied as an unsupervised classification algorithm. A comparison between the classified image and the proposed classes’ samples is carried out using ADIPRS software to testify if the classification is reliable or not based on appearance. The process continues until the condition of the appearance is satisfied then the comparison with the reference is carried out to test the accuracy limit of the classes.

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