A Review of Landsat TM/ETM based Vegetation Indices as Applied to Wetland Ecosystems

Authors

  • Gema Marco Dos Santos Departamento de Agroquímica y Medio Ambiente. Universidad Miguel Hernández de Elche. Av. Universidad, s/n. E-03202. Elche, Spain
  • Ignacio Meléndez-Pastor Departamento de Agroquímica y Medio Ambiente. Universidad Miguel Hernández de Elche. Av. Universidad, s/n. E-03202. Elche, Spain
  • Jose Navarro-Pedreño Departamento de Agroquímica y Medio Ambiente. Universidad Miguel Hernández de Elche. Av. Universidad, s/n. E-03202. Elche, Spain
  • Ignacio Gómez Lucas Departamento de Agroquímica y Medio Ambiente. Universidad Miguel Hernández de Elche. Av. Universidad, s/n. E-03202. Elche, Spain

DOI:

https://doi.org/10.30564/jgr.v2i1.499

Abstract

A review of vegetation indices as applied to Landsat-TM and ETM+ multispectral data is presented. The review focuses on indices that have been developed to produce biophysical information about vegetation biomass/greenness, moisture and pigments.In addition, a set of biomass/greenness and moisture content indices are tested in a Mediterranean semiarid wetland environment to determine their appropriateness and potential for carrying redundant information.The results indicate that most vegetation indices used for biomass/greenness mapping produce similar information and are statistically well correlated. 

Keywords:

Greenness determination, Mediterranean wetland areas, Moisture estimation, Remote sensing, Vegetation spectral indices, Thematic Mapper sensor

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Dos Santos, G. M., Meléndez-Pastor, I., Navarro-Pedreño, J., & Lucas, I. G. (2019). A Review of Landsat TM/ETM based Vegetation Indices as Applied to Wetland Ecosystems. Journal of Geographical Research, 2(1), 34–48. https://doi.org/10.30564/jgr.v2i1.499

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