Developing A Satellite Based Automatic System For Crop Monitoring: Kenya's Great Rift Valley A Case Study
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Date
2016Author
Luciani, Roberto
Giovanni, Laneve
Munzer, Jahjah
Collins, Mito
Type
PresentationLanguage
enMetadata
Show full item recordAbstract
The crop growth stage represents essential information
for agricultural areas management. In this study we
investigate the feasibility of a tool based on remotely
sensed satellite (Landsat 8) imagery, capable of
automatically classify crop fields and how much
resolution enhancement based on pan-sharpening
techniques and phenological information extraction,
useful to create decision rules that allow to identify
semantic class to assign to an object, can effectively
support the classification process. Moreover we
investigate the opportunity to extract vegetation health
status information from remotely sensed assessment of
the equivalent water thickness (EWT). Our case study
LVWKH.HQ\D¶V*UHDW5LIWYDOOH\ in this area a ground
truth campaign was conducted during August 2015 in
order to collect crop fields GPS measurements, leaf
area index (LAI) and chlorophyll samples.
URI
https://profiles.uonbi.ac.ke/collins/publications/developing-satellite-based-automatic-system-crop-monitoring-kenyas-great-rift-vhttp://erepository.uonbi.ac.ke/handle/11295/107285
Citation
Luciani R, Laneve G, Mito C, Jahjah M. "Developing a satellite based automatic system for crop monitoring: Kenya's Great Rift valley a case study.". In: ESA SP 740, LPS16, Proceedings of the conference held 9–13 May 2016. L. Ouwehand. Vol. 740.; 2016:.Rights
Attribution-NonCommercial-NoDerivs 3.0 United StatesUsage Rights
http://creativecommons.org/licenses/by-nc-nd/3.0/us/Collections
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