Multimodal remote sensing for enhancing detection of spatial variability in agricultural fields

Victor Alchanatis, Avi Cohen, Yafit Cohen, Ofer Levi, Amos Naor

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Detection of variability in agricultural fields depends on the spatial scale of
the observed variable. Plant water status can be evaluated using thermal IR images that can provide valuable information on the water status, whereas visible RGB images can provide detailed information on the plants' color, which is not a good indicator of the water status. The informative mode (thermal IR images) has coarse resolution, as opposed to the excessive resolution of the less informative mode (visible RGB). In the present study, we present a method to enhance the information obtained from the thermal IR mode, by combining information from the visible RGB mode. We propose to un-mix the temperature of objects in the thermal images based on the information extracted from the high resolution RGB image.
Original languageAmerican English
Title of host publicationSpatial2 Conference: Spatial Data Methods for Environmental and Ecological Processes
EditorsBarbara Cafarelli
Place of PublicationBergamo
Pages1-4
Number of pages4
StatePublished - 2011
EventSpatial2: Spatial Data Methods for Environmental and Ecological processes. - Foggia , Italy
Duration: 1 Sep 20112 Sep 2011

Conference

ConferenceSpatial2: Spatial Data Methods for Environmental and Ecological processes.
Country/TerritoryItaly
CityFoggia
Period1/09/112/09/11

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