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Biblioteca Time–space radiometric normalization of TM/ETM+ images for land cover change detection

Time–space radiometric normalization of TM/ETM+ images for land cover change detection

Time–space radiometric normalization of TM/ETM+ images for land cover change detection

Resource information

Date of publication
Dezembro 2011
Resource Language
ISBN / Resource ID
AGRIS:US201400106894
Pages
7539-7556

A novel approach to image radiometric normalization for change detection is presented. The approach referred to as stratified relative radiometric normalization (SRRN) uses a time-series of imagery to stratify the landscape for localized radiometric normalization. The goal is to improve the detection accuracy of abrupt land cover changes (human-induced, natural disaster, etc.) while decreasing false detection of natural vegetation changes that are not of interest. These vegetation changes may be associated with such phenomena as phenology, growth and stress (e.g. drought), which occur at varying spatial and temporal scales, depending on landscape position, vegetation type, season, precipitation history and historic episodes of local disturbance. The SRRN approach was tested for a study area on the Californian border between the USA and Mexico using Landsat Thematic Mapper and Enhanced Thematic Mapper Plus satellite imagery. Change products were generated from imagery radiometrically normalized using the SRRN procedure and with imagery normalized using a traditional empirical line technique. Reference data derived from high spatial resolution airborne imagery were utilized to validate the two change products. The SRRN procedure provided several benefits and was found to improve the overall accuracy of detecting abrupt land cover changes by nearly 20%.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Coulter, Lloyd L.
Hope, Allen S.
Stow, Douglas A.
Lippitt, Christopher D.
Lathrop, Steven J.

Publisher(s)
Data Provider
Geographical focus