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2016 | 49 | 1 |
Article title

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

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EN
Abstracts
EN
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.
Year
Volume
49
Issue
1
Physical description
Dates
published
2016
online
03 - 01 - 2017
Contributors
References
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Document Type
Publication order reference
Identifiers
YADDA identifier
bwmeta1.element.ojs-doi-10_17951_pjss_2016_49_1_73
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