Repository logoCyprus University of Technology
Log In(current)
Ελληνικά
English
  1. Home
  2. Cyprus University of Technology (Research Output)
  3. Άρθρα/Articles
  4. Monitoring olive mills waste disposal areas in Crete using very high resolution satellite data
  • Details

Monitoring olive mills waste disposal areas in Crete using very high resolution satellite data

Journal
Egyptian Journal of Remote Sensing and Space Science
Date Issued
December 1, 2016
Author(s)
Agapiou, Athos  
Papadopoulos, Nikos G.  
Sarris, Apostolos  
DOI
10.1016/j.ejrs.2016.03.003
Abstract
This paper evaluates the efficiency of different image analysis techniques applied to high resolution multispectral satellite data so as to identify olive oil waste disposal areas in the island of Crete where huge quantities of wastes are produced. For this purpose very high spatial resolution images including Pleiades, SPOT 6, QuickBird, WorldView-2 and GeoEye 1 have been exploited. The research included the application of the Normalised Difference Vegetation Index, Olive Oil Mill Waste Index as well as Principal Component Analysis. Moreover Intensity-Hue-Saturation transformation was carried out. Furthermore, unsupervised classification was performed for a variety of classes (5; 10 and 15) over the same area for two different periods. In addition, supervised linear constrained spectral un-mixing technique has been applied for the WorldView-2 image, to evaluate the potential use of sub-pixel analysis. Indeed, as it is demonstrated NDVI and OOMW indices may be used to enhance the exposure of disposal areas in high resolution satellite datasets, while the application of the PCA and HIS transformations seems to be able to further improve the results. Unsupervised classification techniques, with no ground truth data, can sufficiently work; however temporal changes of the disposal areas can affect the performance of the classifier. The use of spectral library was able to detect OOMW areas with a relatively high rate of success improving the results from the unsupervised classification. Finally, a COSMO-SkyMed radar image has been examined and fused with a hyperspectral EO-ALI image, indicating that such kind of datasets might be also explored for this purpose.
Subjects

Remote sensing

Very high resolution ...

Crete

Olive mill disposal a...

Explore by
  • Collections
  • Research Outputs
  • Researchers
  • Faculty & Departments
  • Theses
  • Patents
  • Projects
  • Journals
  • Conferences
Useful Links
  • Researcher Portfolio Guide
  • Researcher Profile
  • Create an ORCID ID
  • CUT Open Access Author Fund
  • ETDS Guide
Copyright Policies

Use Sherpa/Romeo to find publisher copyright policies

Go
Go
  • SPARC Author Addendum Engine
  • National Open Access Policy in Cyprus
Deposit your work to Ktisis
  • Self-archiving. Please sign in to Ktisis.
  • Email your work to:
    library.dspace@cut.ac.cy
  • Contact your subject librarian

Member of

OpenAIREre3dataOpenDOARCOREDART
Cyprus University of Technology
Library and
Information
Services

Copyright © 2022 - Library and Information Services Feedback - Built with DSpace-CRIS - 4Science

  • Accessibility settings
  • Privacy policy
  • End User Agreement
COAR NotifyCOAR Notify