Review of Soil Moisture and Plant Water Stress Models Based on Satellite Thermal Imagery

Artur Łopatka, Tomasz Miturski, Rafał Pudełko, Jerzy Kozyra, Piotr Koza

Abstract


The paper analyzes the advantages and disadvantages of the most commonly used groups of models of soil moisture and plant water stress based on satellite thermal imagery. We present a simple proof of linking NDTI and CWSI indicators with plants water stress and quantitative justification for the shape of the points cloud on the chart Ts-NDVI.


Keywords


soil moisture; plant water stress; remote sensing; thermal imagery; heat balance

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References


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DOI: http://dx.doi.org/10.17951/pjss.2016.49.1.73
Date of publication: 2017-01-03 00:00:00
Date of submission: 2017-01-11 12:33:29


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Copyright (c) 2017 Artur Łopatka, Tomasz Miturski, Rafał Pudełko, Jerzy Kozyra, Piotr Koza

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