Application of Remote Sensing Data in Crop Yield and Quality: Systematic Literature Review
Abstract
Purpose: Covering current state of the art in the field of application of remotely sensed data in crop quality improvement.
Methodology/Approach: Systematic literature review using novel text mining techniques.
Findings: Relevance of topic, measured by number of relevant studies, is rising, best performing input data types and modelling techniques are identified.
Research Limitation/Implication: Review to a certain point of time in a rapidly evolving field of research.
Originality/Value of paper: There was no similar review article on the topic at the time of conducting this research.
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References
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Copyright (c) 2022 Anton Čorňák, Radoslav Delina
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