Computing Multivalued Mathematical Morphology on Multiband Images Using Algorithms for Multicriteria Analysis

Authors

  • Samir L'haddad University of Sciences and Technology Houari Boumediene, Faculty of Electrical Engineering, Department of Telecommunication.
  • Akila Kemmouche University of Sciences and Technology Houari Boumediene, Faculty of Electrical Engineering, Department of Telecommunication, BP32 El Alia Bab Ezzouar, Algiers, Algeria, 16111
  • Aude Nuscia Taïbi University of Angers, CNRS, ESO, SFR CONFLUENCES, 5 bis Boulevard Lavoisier, F-49000 Angers, France

DOI:

https://doi.org/10.5566/ias.3042

Keywords:

hyperspectral imaging, vector ordering, multiband images, multivalued mathematical morphology, multivalued morphological profile

Abstract

Mathematical morphology (MM) is a powerful tool for spatial multispectral and hyperspectral image analyses. However, MM was originally developed for single-band images in which each pixel is represented by a numerical value. The most commonly used method for extending MM to multiband images is to process each band independently without considering its correlations with other bands. This can lead to the creation of artificial false spectral signatures and result in object misidentification. Therefore, extending MM to multiband images requires the use of an adequate vector ordering strategy to fully exploit its potential. This work proposes new vector ordering algorithms for the computation of multivalued MM. A multicriteria analysis (MCA) system is used as a tool for establishing an ordering of vectors. Two MCA approaches, namely, an "analytic hierarchy process" and a "preference ranking organization method for enrichment evaluation," are developed to define ordering relations between vectors. To ensure the validity of the proposed vector ordering algorithms, the computed multivalued morphological profiles are compared using the proposed vector ordering approaches and conventional schemes. The results of applying the proposed vector ordering algorithms for computing morphological profiles show that good classification accuracies were achieved for urban structures in ROSIS hyperspectral images.

Author Biographies

Akila Kemmouche, University of Sciences and Technology Houari Boumediene, Faculty of Electrical Engineering, Department of Telecommunication, BP32 El Alia Bab Ezzouar, Algiers, Algeria, 16111

Akila Kemmouche is originally from Algiers, Algeria. She received her engineering degree in electronics from the Ecole Nationale Polytechnique d'Alger in 1983, her master's degree in image processing from the Université des Sciences and Technologies Houari Boumediene (USTHB) in 1989, and her PhD in remote sensing and image processing in 2005 from the Université des Sciences et Technologies Houari Boumediene (USTHB) in Algeria. Since 1983, she is a professor and researcher at the Image and Radiation Processing Laboratory of the USTHB. Her current research interests include remote sensing, image processing and land cover mapping.

Aude Nuscia Taïbi, University of Angers, CNRS, ESO, SFR CONFLUENCES, 5 bis Boulevard Lavoisier, F-49000 Angers, France

Aude Nuscia Taïbi is a full professor in geography at University of Angers (France) and member the CNRS laboratory ESO. She is interested on socio-ecosystems and sustainable development at the interface between environment and society, she works on current and past environments and landscapes changes under the combined impact of natural (droughts, floods, erosion, etc.) and anthropogenic (development, political crises, migration, heritage, culture, etc.) forcings, using remote sensing, field sampling and surveys, especially in Africa and Indian ocean.

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Published

2024-03-21

How to Cite

L'haddad, S., Kemmouche, A., & Taïbi, A. N. (2024). Computing Multivalued Mathematical Morphology on Multiband Images Using Algorithms for Multicriteria Analysis. Image Analysis and Stereology, 43(1), 23–40. https://doi.org/10.5566/ias.3042

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Section

Original Research Paper