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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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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.
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03 - 01 - 2017
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