CROP IDENTIFICATION USING REMOTE SENSING METHODS AND ARTIFICIAL INTELLIGENCE

Remote Sensing & GIS for Environmental Monitoring

Authors

First and Last Name Academic degree E-mail Affiliation
Shamil Ibatullin Sc.D. shamilibatullin [at] gmail.com Land Management Institute of National Academy of Agrarian Sciences of Ukraine
Kyiv, Ukraine
Yosyp Dorosh Sc.D. dorosholgas [at] ukr.net Land Management Institute of National Academy of Agrarian Sciences of Ukraine
Kyiv, Ukraine
Oksana Sakal Sc.D. o_sakal [at] ukr.net Land Management Institute of National Academy of Agrarian Sciences of Ukraine
Kyiv, Ukraine
Olha Dorosh Sc.D. dorosholhas [at] gmail.com National University of Life and Environmental Sciences of Ukraine
Kyiv, Ukraine
Andriy Dorosh Ph.D. doroshandriy1 [at] gmail.com Land Management Institute of National Academy of Agrarian Sciences of Ukraine
Kyiv, Ukraine

I and my co-authors (if any) authorize the use of the Paper in accordance with the Creative Commons CC BY license

First published on this website: 14.08.2022 - 15:50
Abstract 

The research is aimed at monitoring the state of crops and their possible loss using remote sensing and artificial intelligence tools. Using these tools in the research process, the following results were achieved: the boundaries of agricultural land arrays were determined; identified boundaries of crops and their areas under individual agricultural crops by vegetation phase; analysed volumes of cultivated areas, their structure in a territorial section. It is proved, that using both Sentinel-1 and Sentinel-2 satelite images data give more accurate results. Crop porofiles are proven to be the key to improving the quality of crop classification results, as they allow algorithms to better distinguish between crops.

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