Date of Award
12-1991
Document Type
Thesis
Degree Name
Master of Science
Department
Department of Operational Sciences
First Advisor
Thomas S. Kelso, PhD
Abstract
This study investigated the usefulness of personal-computer-based software applying hierarchical clustering theory to try to separate cloud- covered regions from clear regions using Automated Picture Transmission imagery from the National Oceanographic and Atmospheric Administration's Television Infrared Observation Satellite. The algorithms were developed in Turbo Pascal, Version 6, and are part of the Training Software Image Processing program developed by a professor at the Air Force Institute of Technology. The goal of the project was to see if hierarchical clustering could provide better separation of cloud/no-cloud regions than an existing technique, histogram thresholding, while running on a personal computer. Results of the research indicated that it was possible to use a centroid based clustering algorithm to separate cloud-covered regions from clear regions in APT imagery. Seed points were used to start the clustering process. The cloud seed point was chosen to be the brightest pixel in the clustering area. Typical results showed that the automated clustering approach provided results within 15 to 20 percent of those obtained from the histogram method.
AFIT Designator
AFIT-GSO-ENS-91D-12
DTIC Accession Number
ADA244177
Recommended Citation
Martin, Charles J. Jr., "Separation of Cloud/No-Cloud Regions in Satellite Imagery Using a Variation of Hierarchical Clustering Analysis" (1991). Theses and Dissertations. 7641.
https://scholar.afit.edu/etd/7641
Comments
The author's Vita page is omitted.