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Informatics and Automation, 2024, Issue 23, volume 4, Pages 1221–1245
DOI: https://doi.org/10.15622/ia.23.4.11
(Mi trspy1320)
 

This article is cited in 1 scientific paper (total in 1 paper)

Artificial Intelligence, Knowledge and Data Engineering

Using SAR data for monitoring of agricultural crops in the south of the Russian Far East

A. Verkhoturova, A. Stepanovb, L. Illarionovaa

a Computing Center of the Far Eastern Branch of the Russian Academy of Sciences (CC FEB RAS)
b Far Eastern Research Institute of Agriculture (FEARI)
Abstract: The use of SAR data to monitoring agricultural crops is a promising area of research designed to complement existing methods and technologies based on the analysis of multispectral images. The main advantages of vegetation indices calculated from SAR data include their sensitivity to the polarimetric properties of the backscatter intensity, its scattering characteristics, and independence from cloud cover. This is especially important for the territory of the south of the Russian Far East, whose monsoon climate provides humid and cloudy weather during the period when crops gain maximum biomass. For arable lands in the Khabarovsk Territory and the Amur Region, a total of 64 Sentinel-1 SAR images were obtained from May to October 2021. For each date, the values of the DpRVI, RVI, VH/VV indices were calculated and time series were constructed for the entire observation period for individual fields (342 fields in total). NDVI time series were constructed from Sentinel-2 multispectral images using a cloud mask. The characteristics of time series extremes were calculated for different types of arable land: soybeans, oats, and fallows. It was shown that for each crop the seasonal curves DpRVI, RVI, VH/VV had a characteristic appearance. It was found that the DpRVI demonstrated the highest stability – the coefficients of variation of the seasonal variation of DpRVI were significantly lower than those for RVI and VH/VV. It was also revealed that the similarity between the curves of these indices remained for regions quite distant from each other - the Khabarovsk Territory and the Amur Region. The main characteristics of the seasonal variation of time series of radar indices were calculated in comparison with NDVI - the magnitude of the maximum, the date of the maximum and the values of the coefficient of variation for these indicators. It was found, firstly, that the values of these indicators in different regions are similar to each other; secondly, the variability of the maximum and the day of the maximum for DpRVI is lower than for RVI and VH/VV; thirdly, the variability of the maximum and the day of the maximum for DpRVI is comparable to NDVI. Thus, time series of radar indices DpRVI, RVI, VH/VV for the main types of agricultural lands in the south of the Far East have distinctive features and can be used in classification problems, yield modeling and crop rotation control.
Keywords: remote sensing data, Far East, agricultural land monitoring, radar vegetation indices, variability, arable land, crops, time series.
Received: 04.04.2024
Document Type: Article
UDC: 528.8.044.2
Language: Russian
Citation: A. Verkhoturov, A. Stepanov, L. Illarionova, “Using SAR data for monitoring of agricultural crops in the south of the Russian Far East”, Informatics and Automation, 23:4 (2024), 1221–1245
Citation in format AMSBIB
\Bibitem{VerSteIll24}
\by A.~Verkhoturov, A.~Stepanov, L.~Illarionova
\paper Using SAR data for monitoring of agricultural crops in the south of the Russian Far East
\jour Informatics and Automation
\yr 2024
\vol 23
\issue 4
\pages 1221--1245
\mathnet{http://mi.mathnet.ru/trspy1320}
\crossref{https://doi.org/10.15622/ia.23.4.11}
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  • This publication is cited in the following 1 articles:
    Citing articles in Google Scholar: Russian citations, English citations
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    Informatics and Automation
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