Open Access
18 November 2022 Bias correction of Sentinel-2 with unmanned aerial vehicle multispectral data for use in monitoring walnut fruit forest in western Tien Shan, Kyrgyzstan
Erkin Isaev, Maksim Kulikov, Evgenii Shibkov, Roy C. Sidle
Author Affiliations +
Abstract

The scope of our work is to compare Sentinel-2 and unmanned aerial vehicles (UAV) imagery from Western Tian Shan for monitoring applications in walnut fruit forests. Because acquiring field data on walnut fruit forests is difficult due to access limitations in the Tian Shan, remote sensing offers a unique opportunity to increase spatial and temporal coverage of ecological parameters. Sentinel-2 satellites launched in 2015 have been providing images at spatial resolutions of 10 to 20 m; however, difficulties remain as information retrieved from Sentinel pixels result from a mixture of objects that affect reflectance signals. We used submeter multispectral UAV images to assess the sensitivity of Sentinel-2 normalized difference vegetation index (NDVI) to subpixel vegetation. Results showed that Sentinel-2 data overestimates NDVI in regions with open terrain and grass, and underestimates NDVI in areas with trees. By implementing a bias correction method, the accuracy of the Sentinel-2 derived NDVI increased; R2 values increased from 0.59 to 0.88 (p value < 0.001). We also showed that drought index derived from Sentinel-2 vegetation condition index (VCI) is well correlated with the ground-based standard precipitation index (SPI). Using this bias correction method, on average the correlation increased by 3% between VCI and SPI.

1.

Introduction

Kyrgyzstan is a mountainous country with rich biodiversity. Although it occupies only 0.13% of the Earth land surface, Kyrgyzstan has about 2% of the world’s floral and 3% of its faunal diversity.1 Also many wild fruits and flowers originate from this region with a wide range of genetic diversity related to widely cultivated plants like tulips2,3 and apples.4 Moreover, Kyrgyzstan is a poor country with more than 60% of its population residing in rural areas.5 Wild walnut-fruit forests in the south play an important role in the rural economy, which are effectively the main sources of income for many families in the villages, surpassing animal husbandry. Walnut (Juglans regia) is the main crop, which is being harvested on annual basis by local residents; however, wild apples also contribute to the incomes of rural families. Forest products contribute from 22% to 61% of local incomes with walnut collection being the most significant source followed by wild apples.6,7

The most numerous wild apple species is Malus sieversii; red apples (Malus niedzwetzkyana) are far less abundant (<10% of apple trees). Both Malus species are included in the Red Data Book of Kyrgyzstan.1 Malus niedzwetzkyana is rated as “vulnerable” in national Red Data Book and “endangered” by the IUCN Global Red List; Malus sieversii is categorized as “least concern” and “vulnerable,” respectively, on the two lists. Malus sieversii is considered an ancestor of Malus orientalis and Malus domestica, a domestic variety of apple trees,4 which makes it a valuable genetic resource for new varieties.

Livestock that browse freely in these forests destroy young trees and damage stems and branches of adult trees.810 Overgrazing and selective cutting for firewood contributes to suppression of natural regeneration and loss of genetic diversity.11,12 In addition to these anthropogenic influences, climate change is increasing drought occurrence frequency and thus changing natural habitats.1316 Kyrgyzstan is the third most vulnerable country in Eastern Europe and Central Asia to climate change, mainly owing to its climate-sensitive agricultural systems and a lack of an adaptive capacity.17

If no measures are taken, the sparse populations of wild apples can be severely damaged and further decreased. Thus accurate spatial and temporal monitoring of trees is important to protect natural ecosystems. In addition, accurate estimates of the extent of degraded forests and forest clearing are key components of international climate change initiatives, such as reducing emissions from altered and transformed forests in developing countries (REDD+) within the context of the UN framework convention on climate change.18 As selective logging and collection of nontimber forest products are widespread, it is imperative to develop a national or subnational system that accurately monitors forest canopy openings, intensity of use, and contributes to improved forest management to recover forest biomass (carbon stocks) and natural regeneration.19

Remotely sensed data provide a great potential for analyzing Earth surface dynamics at various spatiotemporal scales, particularly in areas that are challenging to access.20 Knowledge of spatial variability among and within forest parcels is a key factor for the users of walnut fruit forests to estimate yield and quality.21 In this context, remote sensing (RS) has already shown its potential and effectiveness in spatiotemporal vegetation monitoring.19,2224 Additionally, many satellite platforms (e.g., Landsat, MODIS, Aster, SPOT, Sentinel-1, and Sentinel-2) are now providing free datasets, thus promoting satellite imagery for many agricultural applications,14,22,23,2527 including those with multisensor data fusion approachs.28 For example, remotely sensed images from Sentinel-2 used in our research offer decametric resolution in terms of space and time, with a ground sample distance of up to 10 m and a revisit time of 6 days. Misregistration of Sentinel-2 imageries was addressed in the processing baseline (version 02.04)21 and deployed by the European Space Agency on June 15, 2016.29

However, when considering vegetation over complex terrain, such as mountainous Kyrgyzstan with 94% of the land occurring above 1000 m a.s.l.,30 RS becomes more challenging. Indeed, steep and complex orography leading to varying lighting conditions may deeply affect the computation of the overall spectral indices leading to a biased vegetation status assessment. Therefore, approaches and algorithms using unmanned aerial vehicles (UAV) have been developed for satellite-based multispectral vegetation pixel calibration over mountainous regions. Low-altitude platforms, such as UAV and airborne sensors, provide imagery with high spatial resolution (up to a few cm) and flexible flight scheduling31 facilitating vegetation monitoring at high resolution in complex terrain.

Recent studies applied UAVs in assessing forest condition,19,3234 precision agriculture,21,23,24,35 and mapping, modeling, and monitoring landslides.3643 Several approaches have been employed to calibrate satellite imagery with UAV multispectral data and field radiometric measurements. These focus on improving the satellite multispectral imagery to facilitate use in precise monitoring of large agricultural areas by calibrating spectral bands44,45 or calibrating vegetation indices.35,46 Some studies have improved satellite reconnaissance data on physical characteristics of vegetation (e.g., leaf area index) using UAV data.47,48 Other studies solve the practical issue of mapping of invasive species with combinations of UAV and Sentinel imagery and application of machine learning approaches.49 Our understanding of forest vegetation phenology has also improved by calibrating satellite-derived vegetation and imagery index time series with images derived from UAV and spectral reflectance sensors.50 Another study used RGB (red, green, and blue) images derived from consumer grade UAVs to more precisely identify riparian forests from Sentinel image time series.51 Other recent investigations focused on the alignment among different spectral bands of Landsat, Sentinel, PlanetScope, and UAV (MicaSense) images on various surface categories in urban areas, providing an exhaustive comparison of spectral band matching,52 and atmospheric correction of satellite images with UAV-sensed normalized difference vegetation index (NDVI).53 All these studies show the viability and practical applicability of employing satellite imagery correction with UAV imagery because UAV imagery is more accurate due to its proximity to the observation point and there is no need for atmospheric correction.

The scope of this work is to compare Sentinel-2 and UAV imagery from Western Tian Shan for monitoring applications in walnut fruit forests with a practical aim to improve forest management and species conservation. In this research, a detailed analysis and comparison of products provided by a decametric resolution satellite and a low-altitude centimetric resolution UAV platform is presented. We developed an RS-based approach to calibrate Sentinel-2 data at a study site in Western Tian Shan using UAV data. The effectiveness of Sentinel-2 data bias correction was evaluated by considering the well-known relation between the NDVI, vegetation condition index (VCI), and standard precipitation index (SPI).

2.

Materials and Methods

2.1.

Study Site

The study was conducted in the western Tian Shan (Fig. 1) on slopes of the Fergana and Chatkal ranges. More specifically, the investigated areas are: Sary-Chelek biosphere reserve, Padysha-Ata nature reserve, and Kara-Alma forestry unit. These areas are recognized as key biodiversity areas (KBA) by the Critical Ecosystem Partnership Fund (Table 1).

Fig. 1

Study site locations: (a) within Kyrgyzstan; (b) Jalal-Abad region with croplands and area covered by UAV; (c) UAV image example from Padysha-Ata nature reserve; and (d) Pacha-Ata meteorological station showing the study polygon.

JARS_17_2_022204_f001.png

Table 1

West Tian-Shan KBA.

NameKBA_IDCoordinatesArea (km2)Description
Sary-ChelekKGZ06Lon: E71.933132°237.96UNESCO biosphere reserve on south slope of Chatkal range in the south of Kyrgyzstan
Lat: N41.868115°
Padysh-AtaKGZ05Lon: E71.683163 deg680.55Padysha-Ata nature reserve on the south slope of Chatkal range
Lat: N41.717878 deg
Kara-AlmaKGZ18Lon: E73.341518 deg267.6Kara-Alma forestry unit has the largest population of wild apple trees, on the western slope of Fergana range
Lat: N41.249517 deg

The western slopes of Fergana range and southern slopes of Chatkal range in the south of Kyrgyzstan are covered with unique fruit and nut forests, occupying elevations ranging from about 1000 to 2500 m a.s.l. These semiwild forests are dominated by walnut (Juglans regia) trees with patches of wild apple (Malus sieversii and M. niedzwetzkyana) and wild pear (Pyrus korshinskyi), which are globally threatened. Abies semenovii and Picea schrenkiana can be found in mixed forests on hillslopes. Other scattered tree species also grow in this forest, but they do not develop forest patches and are distributed sporadically within the walnut and apple forests. These scattered species include Acer turkestanicum, Pyrus turcomanica, Crataegus spp., Betula spp., Populus spp., Fraxinus spp., Prunus sogdiana, Lonicera spp., Berberis spp., Cotoneaster spp., Rosa spp., and among others.

2.2.

Datasets

UAV images were acquired using a built-in multispectral camera onboard a DJI Phantom 4 Multispectral. The drone’s camera features one RGB sensor and five multispectral sensors red (R), green (G), blue (B), red edge (RE), and near-infrared (NIR). It can provide cm-scale mapping accuracy using high-resolution multispectral images. The drone also has a sunlight sensor on the top to capture lighting intensity, which is used for lighting correction, thus providing more consistent and comparable data collection results.

The flights were conducted in July and August 2021, each covering an area of 105×105  m, at an altitude of 50 m above the take-off point with a 90% front overlap, and an 80% side overlap. This results in 2.6  cm resolution on the ground and potentially higher resolution at treetops. The plots were selected to cover the greatest vegetation variability in the study region. In total, we conducted 59 drone flights over different 11,025  m2 plot areas.

Sentinel-2 images (Sentinel-2 MSI: MultiSpectral Instrument, Level-1C) (Table 2) available from the Google Earth Engine platform were used in this analysis. We used all available data from Sentinel-2 scenes with <5% cloud cover acquired between April and September of 2016 to 2021.

Table 2

Characteristics of the RS UAV and Sentinel-2: MSI, multispectral instrument, level-1C datasets.

Sentinel-2 A/BDJI Phantom 4 multispectral
NamePixel size (m)Wavelength (nm)Wavelength (nm)Pixel size (cm)Description
B160443.9 (S2A)/442.3 (S2B)Aerosols
B210496.6 (S2A)/492.1 (S2B)450 ± 162Blue
B310560 (S2A)/559 (S2B)560 ± 162Green
B410664.5 (S2A)/665 (S2B)650 ± 162Red
B520703.9 (S2A)/703.8 (S2B)Red edge 1
B620740.2 (S2A)/739.1 (S2B)730 ± 162Red edge 2
B720782.5 (S2A)/779.7 (S2B)Red edge 3
B810835.1 (S2A)/833 (S2B)840 ± 262 cmNIR
B8A20864.8 (S2A)/864 (S2B)Red edge 4
B960945 (S2A)/943.2 (S2B)Water vapor
B10601373.5 (S2A)/1376.9 (S2B)Cirrus
B11201613.7 (S2A)/1610.4 (S2B)SWIR 1
B12202202.4 (S2A)/2185.7 (S2B)SWIR 2
QA1010Always empty
QA2020Always empty
QA6060Cloud mask

Data on annual crop yields for the Jalal-Abad region were obtained from Kyrgyz Statistic Comity.5 These datasets include information on grains, wheat, barley, corn, rice, sugar-beet, cotton, tobacco, vegetable oils, potatoes, vegetables, melons, fruits and berries, and grapes from 1990 until 2021. These data were used for verification, which is described later.

Meteorological data were obtained from the previous research by Kyrgyzhydromet on droughts in Kyrgyzstan13 and from decadal agrometeorological bulletins.54 The data represent monthly precipitation from 1981 to 2021 collected by Kyrgyzhydromet at Pacha-Ata meteorological station.

2.3.

Methodological Approach

2.3.1.

Automatic photogrammetric adjustments

Photogrammetric adjustments and the development of orthomosaic UAV images were conducted using Agisoft Metashape 1.8.3 Professional Edition.55 This software uses the coordinates of exposure centers of each image performing aerial triangulation in each cell and reconstructs the photogrammetric blocks.19 It also conducts automatic lightning adjustments of scenes based on the information from the UAV lightning sensor. These adjustments ensure data consistency among flights. Finally, we obtained 59 multispectral orthomosaics, which were resampled to a 2-cm spatial resolution and 100×100  m tile size. Specific information regarding the camera and image overlays of the UAV image processing is presented in Table 3.

Table 3

Parameters used in the Agisoft Metashape software for image orthomosaic generation and georeferencing the UAV image of the study site.

AttributeValue
Number of scenes per tile410
Number of tiles59
Flight altitude50 m
Image resolution0.02  m  pixel1
Coverage area (tile size)100 × 100 m
Spectral channelsRed, green, blue, red edge, and NIR

NDVI was calculated in Agisoft Metashape with a raster calculator as follows:

Eq. (1)

NDVI=(NIRRed)(NIR+Red),
where NIR is the near-infrared band and Red is the red band. We used only NDVI images in the analysis. The UAV image composite [Fig. 2(a)] allowed us to identify individual trees, whereas the corresponding NDVI image sections derived from Sentinel-2 [Fig. 2(b)] imagery showed much less detail.

Fig. 2

One tile of the remotely sensed images of the study site (August 2021): (a) UAV NDVI image (0.02 m spatial resolution) and (b) Sentinel-2 NDVI image (10 m spatial resolution).

JARS_17_2_022204_f002.png

2.3.2.

Data processing

In this section, specific methods for data processing developed to compare and investigate the imagery derived from the two platforms with different spatial resolutions are presented and discussed in detail.

We calculated NDVI with Sentinel-2 data according to Eq. (1) in Google Earth Engine for the dates closest to the UAV flights with <10% of the scene covered with clouds. As a result, 59 Sentinel-2 NDVI tiles with areas of about 100×100  m were obtained [Fig. 3(a)], which were overlapped with UAV NDVI tiles. However, because the spatial resolution of Sentinel-2 images is 10 m and that of UAV images is 0.02 m, the pixels did not always overlap—i.e., not all UAV pixels fell entirely into Sentinel-2 pixels, and sometimes Sentitel-2 tiles were larger than UAV tiles because pixel size caused a fragmentation problem (Fig. 3). Thus we omitted these fragmented pixels from further analysis. For each, tile we generated a polygon grid with each cell exactly representing pixels of Sentinel-2 images overlayed on the UAV images [Figs. 3(a) and 3(b)]. For each unfragmented cell, the mean NDVI value of each UAV image was calculated.

Fig. 3

(a) Ordered grid of pixels from Sentinel-2 and (b) polygon grid example highlighted with black.

JARS_17_2_022204_f003.png

2.3.3.

Bias correction

To assess the spatial patterns on bias distribution, we calculated NDVI difference between Sentinel and UAV mean values for each Sentinel pixel as

Eq. (2)

NDVIdiff(x,y)=NDVISent(x,y)NDVIUAV(x,y),
where (x,y) are the pixel coordinates in Sentinel-2 and the overlayed UAV NDVI, NDVIdiff is the difference in NDVI values between Sentinel-2 and UAV images, NDVISent are NDVI values calculated from Sentinel-2 images, and NDVIUAV are NDVI values calculated from UAV images. To assess potential errors, mean error (ME)

Eq. (3)

ME=1ni=1n(NDVISentNDVIUAV)
and the square root-mean-squared error (RMSE) were calculated:

Eq. (4)

RMSE=1ni=1n(NDVISentNDVIUAV)22.

To assess systematic patterns in errors for overestimation and underestimation of NDVI, we selected all the pixels with absolute values of NDVIdiff greater then RMSE (i.e., pixels with significant error) and divided them into pixels with positive (NDVIdiff>0) and negative (NDVIdiff<0) errors, comprising overestimation and underestimation of NDVI by Sentinel-2. For all pixels with significant negative NDVIdiff, we have calculated spatial maximum and minimum NDVI values (NDVImax and NDVImin), comprising the upper and lower NDVI envelopes of underestimated values [see Eqs. (5) and (6)]. Likewise, for all the pixels with significant positive NDVIdiff, we calculated spatial maximum and minimum NDVI values (NDVImax and NDVImin), comprising the upper and lower NDVI envelopes of overestimated values [see Eqs. (7) and (8)]:

Eq. (5)

UNE=NDVImax(x,y)  (x,y)(|NDVIdiff(x,y)|>RMSE)(NDVIdiff(x,y)<0),

Eq. (6)

LNE=NDVImin(x,y)  (x,y)(|NDVIdiff(x,y)|>RMSE)(NDVIdiff(x,y)<0),

Eq. (7)

UPE=NDVImax(x,y)  (x,y)(|NDVIdiff(x,y)|>RMSE)(NDVIdiff(x,y)>0),

Eq. (8)

LPE=NDVImin(x,y)  (x,y)(|NDVIdiff(x,y)|>RMSE)(NDVIdiff(x,y)>0),
where (x,y) are the values at pixel coordinates x, y, UNE represents the upper negative envelope, LNE is the lower negative envelope, UPE is the upper positive envelope, and LPE is the lower positive envelope.

As previously noted, we developed different bias correction rates for values of NDVI (LNE, UNE) and NDVI (LPE, UPE). All the NDVI values outside of these ranges are assumed not to require bias correction, as the error is less than RMSE. We used RMSE and ME for bias correction to compare which of these metrics perform better. The following equation represents this approach with RMSE; the same was conducted with ME:

Eq. (9)

NDVISentcorr={NDVISent+RMSE,NDVISent(LNE,UNE),NDVISentRMSE,NDVISent(LPE,UPE),NDVISent,NDVISent¬(LPE,UPE)(LNE,UNE),
where NDVISentcorr is the bias-corrected Sentintel-2 NDVI.

2.4.

Verification of Bias Correction

2.4.1.

Verification of bias correction with VCI and SPI

To verify the accuracy gained from bias correction, we calculated VCI using a method proposed by Kogan56 for NDVI values with and without correction:

Eq. (10)

VCI(x,y,t)=NDVI(x,y,t)NDVImin(x,y,n)NDVImax(x,y,n)NDVImin(x,y,n)×100%,
where (x,y,t) are the values at pixel coordinates x, y at a certain time t (month), (x,y,n) are the vector values at pixel coordinates x, y for the entire period of observation n, VCI(x,y,t) are the vegetation condition index values for specified pixels at times (month), and NDVImin(x,y) and NDVImax(x,y) are the monthly minimum and maximum NDVI values for many years (from April to September from 2016 to 2021) for each pixel.

The area near Pacha-Ata meteorological station [Fig. 1(d)] was selected to assess and verify the bias correction methods for Sentinel-2 because it is representative of the ecosystem and proximate to UAV plots and the meteorological station. Monthly SPI values were calculated using monthly precipitation data from Pacha-Ata meteorological station for the period 1981 to 2021. We used SPI drought index, which was verified in a Kyrgyzhydromet study13 as the best drought index for Kyrgyzstan.

In 2009, the World Meteorological Organization (WMO) recommended using SPI for drought monitoring, which has been adopted in research or operational practice by more than 70 countries.57 “SPI depth” denotes the precipitation sum for the number of months used in the calculation. WMO recommends using the following SPI depth classification for detecting different drought types: 1 or 2 months for meteorological drought, 3 to 6 months for agricultural drought, 6 to 12 months, or more for monitoring hydrological drought.57

We calculated NDVI from Sentinel-2 and then conducted NDVI bias correction with two methods (RSME and ME) [Eq. (11)] for vegetation growing season April to September 2016 to 2021. Next, we calculated the spatial mean of corrected NDVI images for each month followed by calculating Pearson’s correlation coefficients between corrected NDVI spatial means and SPI with different depths (1 to 12). The delayed response of vegetation to precipitation creates correlation lags in the time series, thus, correlation coefficients were calculated with different monthly shifts of corrected NDVI and VCI versus SPI.58

2.4.2.

Verification of bias correction with crop yield

To verify corrected NDVI from Sentinel-2 with ground data, we compared mean annual corrected NDVI on croplands of Jalal-Abad province for the vegetation growing season (April to September of 2016 to 2021) with the crop yield productivity for the province (from the National Statistical Committee of Kyrgyz Republic). We conducted correlation analysis of yield of different crops and SPI for September with different SPI depths to identify which crops are most related to precipitation and drought; these crops were then used to validate the NDVI correction. Only September was selected for the SPI calculation as this month is most representative for yield approximations.13 However, since only six annual NDVI observations (2016 to 2021) were available, we could not conduct a proper significant correlation analysis, so we applied a qualitative visual assessment of the relation between NDVI and crop yield data.

3.

Results

3.1.

Bias Correction

After our qualitative visual analysis of NDVIdiff [Eq. (2)] on 59 UAV images, we determined that Sentinel-2 overestimates NDVI in the areas with open terrain and grass (low NDVI values), and underestimates NDVI in the areas with trees (high NDVI values). The error analysis [Eqs. (3) and (4)] resulted in the following: RMSE=0.1228 and ME=0.077. The relation between NDVISent and NDVIUAV is positive [Figs. 4(a) and 4(b)]. The linear regression model yielded an R2=0.59 and a pvalue<0.001 [Fig. 4(a)] on uncorrected data. The envelope interval estimates were: LNE=0.6, UNE=0.8, LPE=0.5, and UPE=0.6. After implementation of the bias correction with RMSE and ME for Sentinel-2 using Eq. (9), the accuracy of the Sentinel-2 derived NDVI increased [Fig. 4(b)].

Fig. 4

Relation between NDVI derived from Sentinel-2 and NDVI derived from UAV imagery; number of pixels = 6486: (a) Sentinel-2 without bias correction and (b) Sentinel-2 with bias correction.

JARS_17_2_022204_f004.png

Verification with VCI indicates that using RMSE for bias correction of NDVI provides better results than ME (Table 4). After correction, R2 increased to 0.88 with pvalue<0.001 [Fig. 4(b)]. Thus we describe the bias correction by the following conditional equation:

Eq. (11)

VISentcorr={NDVISent+0.1228,NDVISent[0.6,0.8],NDVISent0.1228,NDVISent[0.5,0.6),NDVISent,NDVISent¬[0.5,0.6)[0.6,0.8].

Table 4

Correlation coefficients between Sentinel-2 derived corrected and uncorrected NDVI and VCI with 0- and 1-month lag, and SPI indices with depth from 1 to 12 months; bold coefficients are the significant ones with p<0.05.

 SPI1SPI2SPI3SPI4SPI5SPI6SPI7SPI8SPI9SPI10SPI11SPI12
VCI0.130.400.310.300.260.280.250.330.370.360.360.34
VCICorr-RMSE0.130.410.310.310.270.310.270.350.390.370.370.35
VCICorr-ME0.130.400.310.300.260.280.250.330.370.360.360.34
VCI+1month0.410.360.280.210.250.220.280.350.370.380.360.39
VCICorr-RMSE+1month0.420.360.290.220.280.240.290.370.370.400.370.42
VCICorr-ME+1month0.410.360.280.210.250.220.280.350.370.380.360.39
NDVI0.050.090.120.110.110.070.100.080.100.170.130.13
NDVICorr-RMSE0.020.110.140.130.120.100.130.110.130.190.160.15
NDVICorr-ME0.050.090.120.110.110.070.100.080.100.170.130.13
NDVI+1month0.220.290.170.170.140.160.170.220.250.250.210.19
NDVICorr-RMSE+1month0.200.270.160.160.140.170.180.220.250.250.200.21
NDVICorr-ME+1month0.220.290.170.170.140.160.170.220.250.250.210.19

3.2.

Verification of Bias Correction with VCI

To verify the bias-corrected NDVI with VCI, we calculated correlations between SPI indices and NDVI with VCI for the area near Pacha-Ata meteorological station [Fig. 1(d)] and the climatic data from that station indicates that correlation increases between VCI and SPI when corrected NDVI Sentinel-2 data are used (Table 4). In general, correction of NDVI with RMSE indicates in better results than with ME (Table 4). Therefore, RMSE correction was used for the final bias correction [Eq. (11)].

When calculated vegetation indices are shifted by one month the correlation relationship increased because precipitation affects vegetation with approximately a 2- to 3-week lag period. The highest correlation was obtained between VCI corrected with RMSE and a 1-month lag with SPI1 and SPI12 (r=0.42, p<0.05), which shows the rate of precipitation in one month relative to the multiyear norm (Table 4). The correlation coefficients between vegetation indices with 2- and 3-month lags, and SPI were less than those with a 1-month lag, so they are not reported in the results.

3.3.

Verification of Bias Correction with Crop Yields

Using yield productivity data for different crops in Jalal-Abad province together with correlating with SPI indices for September, we identified that wheat and barley are the crops most related to precipitation and drought (Table 5). Thus these crops were used for verification of NDVI correction.

Table 5

Correlation coefficients between yield productivity (metric tons per hectare from 1991 to 2021) and SPI indices; SPI with depth from 1 to 12 months; Bold coefficients are significant (p<0.05).

SPI1SPI2SPI3SPI4SPI5SPI6SPI7SPI8SPI9SPI10SPI11SPI12
Grains0.150.09−0.13−0.09−0.08−0.02−0.04−0.09−0.08−0.21−0.21−0.21
Wheat0.250.320.200.140.160.260.140.090.050.220.220.22
Barley0.260.330.110.240.290.350.270.220.19-0.01-0.02-0.01
Corn0.150.140.070.050.040.130.110.070.08-0.08-0.09-0.09
Rice0.190.16−0.13−0.09−0.12−0.06−0.09−0.14−0.10−0.15−0.16−0.16
Cotton0.110.13−0.11−0.02−0.040.030.02−0.03−0.02−0.08−0.08−0.08
Tobacco0.140.210.300.020.040.000.02-0.02-0.040.100.100.10
Vegetable oils0.180.180.05−0.01−0.05−0.01−0.02−0.07−0.03−0.06−0.06−0.06
Potatoes0.220.16−0.01−0.05−0.05−0.01−0.01−0.030.00−0.12−0.12−0.12
Vegetables0.150.16−0.11−0.03−0.030.010.00−0.05−0.01−0.16−0.16−0.16
Melons0.130.13−0.05−0.05−0.05−0.03−0.03−0.09−0.04−0.17−0.17−0.17
Fruits and berries0.110.00−0.10−0.15−0.13−0.11−0.12−0.17−0.13−0.16−0.16−0.16
Grapes−0.21−0.12−0.04−0.09−0.12−0.09−0.14−0.14−0.180.150.150.16

The highest correlation coefficients between yield and SPI are between barley/wheat and SPI6. The significant correlation is between barley and SPI6 with r=0.35, p<0.05. A qualitative visual assessment of yield related to bias corrected NDVI was only possible due to insufficient sample size (Fig. 5).

Fig. 5

Crop yield and NDVI time series for Jalal-Abad region (spatially averaged).

JARS_17_2_022204_f005.png

The same tendency of the bias corrected NDVI and yield productivity is evident (Fig. 5). The corrected annual NDVI curve is smoother than the uncorrected one and is in closer agreement with the annual yield curve of barley and wheat (Fig. 5). The maximum yields for wheat and barley in 2018 were 2.7 metric tons per hectare and 2.1 metric tons per hectare, respectively, and NDVI with bias correction was 0.38. The minimum yields for wheat and barley in 2021 were 2.2 metric tons per hectare and 1.7 metric tons per hectare, respectively, and NDVI with bias correction was 0.31.

4.

Discussion

Although most of forest, cropland, and pasture datasets are based on RS observations, the analysis of vegetation succession still relies largely on fieldwork in a space-for-time framework without the benefit of important historical remotely sensed information, with some exceptions.26 Nonetheless, challenges remain in the search of an optimal and reliable relationship between remotely detected changes in vegetation indices (e.g., NDVI and VCI) and actual vegetation changes on the ground.

We found that decametric resolution satellite imagery had limitations in directly providing reliable information on the status of walnut-fruit forests in the Western Tian Shan. This effect was confirmed by the improved relation found between the corrected satellite derived NDVI and the NDVI derived from UAV surveys in contrast to the original relation [Fig. 4(a)]. Sentinel-2 data overestimates NDVI in areas with open terrain and grass, and underestimates NDVI in areas with trees. However, the accuracy of Sentinel-2 derived NDVI increased by implementing a bias correction based on RMSE for different NDVI intervals: 0.5<NDVI<0.6 with negative RMSE and 0.6<NDVI<0.8 with positive RMSE [Fig. 4(b)], and R2 increased to 0.88 with a pvalue<0.001 [Fig. 4(b)]. However, using UAV together with field spectroradiometry can yield a greater spectral band coherence of RSME<1%.44 High LAI estimation accuracy (R2 values up to 0.88) was also obtained in other studies.47

In addition, we found that drought index derived from RS, data are well correlated with ground-based SPI drought index. Using our proposed bias correction method, the correlation between VCI and SPI increased by 3% on average (Table 4). Moreover, shifting VCI by 1-month ahead of precipitation data yielded the highest correlation with SPI indices. This shift in vegetation response relative to precipitation has also been observed by other studies.5861

The highest correlation relations between crop yield and SPI drought indices were obtained for barley and wheat. A significant correlation was found between barley yield and SPI6 (r=0.35). Barley and wheat are mostly cultivated on unirrigated lands; thus they tend to be more correlated with drought index SPI. According to WMO recommendations, SPI6 determines agriculture drought (soil drought) which is indicative of yield response to drought. Other crops, such as corn, rice, cotton, tobacco, vegetables, potatoes, vegetable oil crops, melons, fruits, and berries, are grown in flatter, irrigated lands and thus their yields are less affected by meteorological and soil droughts. Bias corrected NDVI replicated barley and wheat yield productivity well (Fig. 5).

We assumed that the extremely high spatial resolution due to the near ground surface UAV surveys provided a “ground truth” quality layer with respect to Sentinel-2 imagery. Nonetheless, true field data collection coupled with hyperspectral imagery would still be required to further investigate the effects of complex and steep topography on Sentinel derived NDVI values. Furthermore, the spectral bands of DJI Phantom 4 Multispectral and Sentinel-2 a/b are not identical (Table 2), which contributes some uncertainty. However, our findings are a clear step forward from previous studies that used Phantom quadcopters adapted and equipped with third-party cameras,46 notwithstanding the results of this research.

Despite the lack of consideration of certain factors discussed herein, we are confident that our work is an advance in understanding how the combination of UAV and satellite RS methods can improve the monitoring of droughts, pastures, croplands, and walnut fruit forest conditions. Because other investigations obtained similar results in terms of Sentinel-2 sensitivity to vegetation cover,23,24 we are confident that our analysis is relevant for other mountains regions and that the bias correction method can be used to correct the Sentinel-2 images to obtain improved results in other similar contexts. Our findings can thus be used to improve management of forest resources and contribute to conservation of rare and threatened tree species.

5.

Conclusions

In this study, Sentinel-2 satellite images were compared with imagery from a UAV equipped with a multispectral camera to evaluate both techniques based on NDVI and VCI indices.

The statistical comparison between Sentinel-2 and UAV imagery shows that the followings.

  • The trend of the average NDVI is almost identical for both RS techniques.

  • There is a strong correlation of the NDVI indices between the two techniques.

  • The implementation of a bias correction method significantly increases NDVI and VCI indices derived from Sentinel-2.

Both UAV and Sentinel-2 platforms provide important information for the vegetation cover of mountains, and they are important tools for the monitoring and managing walnut-fruit forests, pastures, and croplands in Kyrgyzstan and similar mountainous regions. The choice of the most appropriate technology (UAV or satellite) depends on the use and the aim of the data collection, as they have different spatial and temporal characteristics, costs, and requirements. But using proposed bias correction method, we can significantly increase accuracy of the Sentinel-2 data.

Acknowledgments

This research was funded by the project Conservation and Research of Wild Fruit Species in Western Tian Shan, Kyrgyz Republic, funded by Critical Ecosystem Partnership Fund (Grant No. CEPF-110679). The authors declare no conflict of interest.

Code, Data, and Materials Availability

The data that support the findings of this study are available from the corresponding author, upon reasonable request.

References

1. 

SAEPF, IBP-NAS-KR, and Aleine, Kyrgyz Republic Red Data Book, 2nd ed.FAO NFPF, Bishkek (2006). Google Scholar

2. 

Z. P. Botschantzeva and H. Q. Varekamp, Tulips: Taxonomy, Morphology, Cytology, Phytogeography and Physiology, Balkema( (1982). Google Scholar

3. 

B. J. M. Zonneveld, “The systematic value of nuclear genome size for ‘all’ species of Tulipa L. (Liliaceae),” Plant Syst. Evol., 281 (1–4), 217 –245 https://doi.org/10.1007/s00606-009-0203-7 (2009). Google Scholar

4. 

A. Cornille et al., “The domestication and evolutionary ecology of apples,” Trends Genet., 30 (2), 57 –65 https://doi.org/10.1016/j.tig.2013.10.002 TRGEE2 0168-9525 (2014). Google Scholar

5. 

NatStatCom, Kyrgyzstan. Brief Statistical Handbook, Bishkek( (2018). Google Scholar

6. 

K. Dzhakypbekova et al., “The contribution of the underutilised species in the walnut-fruit forests to the local livelihoods in Kyrgyzstan,” in Tropentag, Ghent, (2018). Google Scholar

7. 

J. Shigaeva et al., “Profitability of forest products of walnut-fruit forest of Kyrgyzstan vs agricultural production, case study from Kyzyl Unkur villages,” Bishkek (2018). Google Scholar

8. 

A. Orozumbekov, E. Cantarello and A. C. Newton, “Status, distribution and use of threatened tree species in the walnut-fruit forests of Kyrgyzstan,” Forest Trees Livelihoods, 24 (1), 1 –17 https://doi.org/10.1080/14728028.2014.928604 (2014). Google Scholar

9. 

E. Cantarello et al., “Human impacts on forest biodiversity in protected walnut-fruit forests in Kyrgyzstan,” J. Sustain. Forest, 33 (5), 454 –481 https://doi.org/10.1080/10549811.2014.901918 (2014). Google Scholar

10. 

, “Preserving Wild Apple Species in Western Tian Shan,” https://ucentralasia.org/news/2022/march/preserving-wild-apple-species-in-western-tian-shan (2022). Google Scholar

11. 

R. Beer et al., “Vegetation history of the walnut forests in Kyrgyzstan (Central Asia): natural or anthropogenic origin?,” Quat. Sci. Rev., 27 (5–6), 621 –632 https://doi.org/10.1016/j.quascirev.2007.11.012 QSREDU 0277-3791 (2008). Google Scholar

12. 

P. Borchardt, M. Schmidt and U. Schickhoff, “Vegetation patterns in Kyrgyzstan’s walnut-fruit forests under the impact of changing forest use in post-soviet transformation,” Erde, 141 (3), 255 –275 (2010). Google Scholar

13. 

E. Isaev and S. Omurzakova, “On the possibility of drought detection and modeling in Kyrgyzstan (in Russian),” Bull. Kyrg. Russ. Slav. Univ., 11 172 –176 (2019). Google Scholar

14. 

S. Park et al., “Assessing climate change impact on cropland suitability in Kyrgyzstan: where are potential high-quality cropland and the way to the future,” Agronomy, 11 (8), 1490 https://doi.org/10.3390/agronomy11081490 AGRYAV 0065-4663 (2021). Google Scholar

15. 

Z. Kretova, “Assessment of climate change in the Kyrgyz Republic under the IFAD project ‘Livestock Development and Market-2’,” (2020). Google Scholar

16. 

“Climate change adaptation in Europe and central Asia: adapting to a changing climate for resilient development,” https://www.adaptation-undp.org/sites/default/files/resources/climate_change_adaptation_in_europe_and_central_asia.pdf (2018). Google Scholar

17. 

K. Erkin Isaev et al., “Reconstruction of hydrometeorological data using dendrochronology and machine learning approaches to bias-correct climate models in northern Tien Shan, Kyrgyzstan,” Water, 14 (15), 2297 https://doi.org/10.3390/w14152297 (2022). Google Scholar

19. 

G. Vicente et al., “Assessment of selective logging impacts using UAV, Landsat, and Sentinel data in the Brazilian Amazon rainforest,” Proc. SPIE, 17 (1), 014526 https://doi.org/10.1117/1.JRS.16.014526 PSISDG 0277-786X (2022). Google Scholar

20. 

R. Walcker et al., “Contribution of meandering rivers to natural carbon fluxes: evidence from the Ucayali River, Peruvian Amazonia,” Sci. Total Environ., 776 146056 https://doi.org/10.1016/j.scitotenv.2021.146056 (2021). Google Scholar

21. 

A. Khaliq et al., “Comparison of satellite and UAV-based multispectral imagery for vineyard variability assessment,” Remote Sens., 11 (4), 436 https://doi.org/10.3390/rs11040436 (2019). Google Scholar

22. 

I. Botvich, A. Shevyrnogov and D. Emelyanov, “Crop yield map development based on satellite and UAV data,” E3S Web Conf., 333 01001 https://doi.org/10.1051/e3sconf/202133301001 (2021). Google Scholar

23. 

N. Bollas, E. Kokinou and V. Polychronos, “Comparison of sentinel-2 and UAV multispectral data for use in precision agriculture: an application from northern Greece,” Drones, 5 (2), 35 https://doi.org/10.3390/drones5020035 (2021). Google Scholar

24. 

A. Mancini, E. Frontoni and P. Zingaretti, “Satellite and UAV data for precision agriculture applications,” in Int. Conf. Unmanned Aircr. Syst. ICUAS 2019, 491 –497 (2019). https://doi.org/10.1109/ICUAS.2019.8797930 Google Scholar

25. 

M. Bobrowski et al., “Application of thermal and phenological land surface parameters for improving ecological niche models of Betula Utilis in the Himalayan region,” Remote Sens., 10 (6), 814 https://doi.org/10.3390/rs10060814 (2018). Google Scholar

26. 

A. Bayle et al., “Sensitivity of Landsat NDVI to subpixel vegetation and topographic components in glacier forefields: assessment from high-resolution multispectral UAV imagery,” Proc. SPIE, 15 (4), 044508 https://doi.org/10.1117/1.JRS.15.044508 PSISDG 0277-786X (2021). Google Scholar

27. 

M. Der Yang, S. C. Chen and H. P. Tsai, “A long-term vegetation recovery estimation for Mt. Jou-Jou using multi-date SPOT 1, 2, and 4 images,” Remote Sens., 9 (9), 893 https://doi.org/10.3390/rs9090893 (2017). Google Scholar

28. 

K. A. Semmens et al., “Monitoring daily evapotranspiration over two California vineyards using Landsat 8 in a multi-sensor data fusion approach,” Remote Sens. Environ., 185 155 –170 https://doi.org/10.1016/j.rse.2015.10.025 (2016). Google Scholar

29. 

“New processing baseline (02.04) for Sentinel-2A products – Sentinel Online,” Google Scholar

30. 

E. Isaev et al., “Impact of climate change and air pollution forecasting using machine learning techniques in Bishkek,” Aerosol Air Qual. Res., 22 (3), 210336 https://doi.org/10.4209/aaqr.210336 (2022). Google Scholar

31. 

S. Jay et al., “Exploiting the centimeter resolution of UAV multispectral imagery to improve remote-sensing estimates of canopy structure and biochemistry in sugar beet crops,” Remote Sens. Environ., 231 110898 https://doi.org/10.1016/j.rse.2018.09.011 (2019). Google Scholar

32. 

A. Ozdarici-Ok et al., “Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models,” http://www.tandfonline.com/action/journalInformation?show=aimsScope&journalCode=tgsi20#.VsXpLiCLRhE (2022). Google Scholar

33. 

J. A. Navarro et al., “Integration of UAV, sentinel-1, and sentinel-2 data for mangrove plantation aboveground biomass monitoring in Senegal,” Remote Sens., 11 (1), 77 https://doi.org/10.3390/rs11010077 (2019). Google Scholar

34. 

C. E. Akumu, E. O. Amadi and S. Dennis, “Application of drone and WorldView-4 satellite data in mapping and monitoring grazing land cover and pasture quality: pre- and post-flooding,” Land, 10 (3), 321 https://doi.org/10.3390/land10030321 (2021). Google Scholar

35. 

M. Sozzi et al., “Comparing vineyard imagery acquired from Sentinel-2 and unmanned aerial vehicle (UAV) platform,” OENO One, 54 (2), 189 –197 https://doi.org/10.20870/oeno-one.2020.54.1.2557 (2020). Google Scholar

36. 

L. Kuşak et al., “Modelling of a landslide site with satellite and UAV,” in Cilicia International Symposium on Engineering and Technology At: Mersin, (2019). Google Scholar

37. 

M. R. M. Mokhtar et al., “Assessing UAV landslide mapping using unmanned aerial vehicle (UAV) for landslide mapping activity,” Appl. Mech. Mater., 567 669 –674 https://doi.org/10.4028/www.scientific.net/AMM.567.669 (2014). Google Scholar

38. 

A. Alptekin et al., “Illustrating of a landslide site with photogrammetric and LIDAR methods,” Advances in Science, Technology & Innovation, 303 –305 Springer, Cham (2022). Google Scholar

39. 

J. Qi, H. Chen and F. Chen, “Extraction of landslide features in UAV remote sensing images based on machine vision and image enhancement technology,” Neural Comput. Appl., 34 (15), 12283 –12297 https://doi.org/10.1007/s00521-021-06523-4 (2022). Google Scholar

40. 

H. He et al., “Multisource data fusion and adversarial nets for landslide extraction from UAV-photogrammetry-derived data,” Remote Sens., 14 (13), 3059 https://doi.org/10.3390/rs14133059 (2022). Google Scholar

41. 

K. Tempa et al., “UAV technique to localize landslide susceptibility and mitigation proposal: a case of Rinchending Goenpa landslide in Bhutan,” Nat. Hazards Res., 1 (4), 171 –186 https://doi.org/10.1016/j.nhres.2021.09.001 (2021). Google Scholar

42. 

P. C. Pesántez, “Land movement detection from UAV images,” Int. Arch. Photogramm. Remote Sens. Sp. Inf. Sci., XLIII-B2-2 1071 –1076 https://doi.org/10.5194/isprs-archives-XLIII-B2-2022-1071-2022 1682-1750 (2022). Google Scholar

43. 

R. Pati, K. Rajesh and D. Kanungo, “Application of UAV for landslide mapping, modelling and monitoring,” in Proc. Int. Conf. EGCON - 2021, (2021). Google Scholar

44. 

J. C. Padró et al., “Radiometric correction of landsat-8 and sentinel-2A scenes using drone imagery in synergy with field spectroradiometry,” Remote Sens., 10 (11), 1687 https://doi.org/10.3390/rs10111687 (2018). Google Scholar

45. 

S. Zhang et al., “Integrated satellite, unmanned aerial vehicle (UAV) and ground inversion of the SPAD of winter wheat in the reviving stage,” Sensors, 19 (7), 1485 https://doi.org/10.3390/s19071485 SNSRES 0746-9462 (2019). Google Scholar

46. 

M. Pla et al., “Calibrating sentinel-2 imagery with multispectral UAV derived information to quantify damages in mediterranean rice crops caused by western Swamphen (Porphyrio porphyrio),” Drones, 3 (2), 45 https://doi.org/10.3390/drones3020045 (2019). Google Scholar

47. 

A. Revill et al., “Quantifying uncertainty and bridging the scaling gap in the retrieval of leaf area index by coupling sentinel-2 and UAV observations,” Remote Sens., 12 (11), 1843 https://doi.org/10.3390/rs12111843 (2020). Google Scholar

48. 

X. Guo et al., “Estimating mangrove leaf area index based on red-edge vegetation indices: a comparison among UAV, WorldView-2 and Sentinel-2 imagery,” Int. J. Appl. Earth Observ. Geoinf., 103 102493 https://doi.org/10.1016/j.jag.2021.102493 (2021). Google Scholar

49. 

T. Gränzig et al., “Mapping the fractional coverage of the invasive shrub Ulex europaeus with multi-temporal Sentinel-2 imagery utilizing UAV orthoimages and a new spatial optimization approach,” Int. J. Appl. Earth Observ. Geoinf., 96 102281 https://doi.org/10.1016/j.jag.2020.102281 (2021). Google Scholar

50. 

S. Thapa, V. E. Garcia Millan and L. Eklundh, “Assessing forest phenology: a multi-scale comparison of near-surface (UAV, spectral reflectance sensor, PhenoCam) and satellite (MODIS, Sentinel-2) remote sensing,” Remote Sens., 13 (8), 1597 https://doi.org/10.3390/rs13081597 (2021). Google Scholar

51. 

A. Daryaei et al., “Fine-scale detection of vegetation in semi-arid mountainous areas with focus on riparian landscapes using Sentinel-2 and UAV data,” Comput. Electron. Agric., 177 105686 https://doi.org/10.1016/j.compag.2020.105686 CEAGE6 0168-1699 (2020). Google Scholar

52. 

J. Jiang et al., “Multi-sensor and multi-platform consistency and interoperability between UAV, Planet CubeSat, Sentinel-2, and Landsat reflectance data,” GISci. Remote Sens., 59 (1), 936 –958 https://doi.org/10.1080/15481603.2022.2083791 (2022). Google Scholar

53. 

D. Moravec et al., “Effect of atmospheric corrections on NDVI: intercomparability of Landsat 8, Sentinel-2, and UAV Sensors,” Remote Sens., 13 (18), 3550 https://doi.org/10.3390/rs13183550 (2021). Google Scholar

54. 

“Early warning portal of KG,” https://sropasture.kg/ (). Google Scholar

55. 

“Agisoft Metashape: Installer,” https://www.agisoft.com/downloads/installer/ (2022). Google Scholar

56. 

F. N. Kogan, “Application of vegetation index and brightness temperature for drought detection,” Adv. Sp. Res., 15 (11), 91 –100 https://doi.org/10.1016/0273-1177(95)00079-T ASRSDW 0273-1177 (1995). Google Scholar

57. 

M. Svoboda and B. A. Fuchs, Handbook of Drought Indicators and Indices, World Meteorological Organization, Geneva (2016). Google Scholar

58. 

M. Kulikov and U. Schickhoff, “Vegetation and climate interaction patterns in Kyrgyzstan: spatial discretization based on time series analysis,” Erdkunde, 71 (2), 143 –165 https://doi.org/10.3112/erdkunde.2017.02.04 ERDKA6 (2017). Google Scholar

59. 

N. P. Nezlin, A. G. Kostianoy and B. L. Li, “Inter-annual variability and interaction of remote-sensed vegetation index and atmospheric precipitation in the Aral Sea region,” J. Arid Environ., 62 (4), 677 –700 https://doi.org/10.1016/j.jaridenv.2005.01.015 JAENDR (2005). Google Scholar

60. 

P. A. Propastin et al., “Remote sensing based study on intra-annual dynamics of vegetation and climate in drylands of Kazakhastan,” Basic Appl. Dryland Res., 1 (2), 138 –154 https://doi.org/10.1127/badr/1/2007/138 (2007). Google Scholar

61. 

U. Gessner et al., “The relationship between precipitation anomalies and satellite-derived vegetation activity in Central Asia,” Glob. Planet. Change, 110 74 –87 https://doi.org/10.1016/j.gloplacha.2012.09.007 GPCHE4 0921-8181 (2013). Google Scholar

Biography

Erkin Isaev received his diploma degree in hydrometeorology from the Russian State Hydrometeorological University in 2014 and his PhD in meteorology, agrometeorology, and climatology from the same university in 2017. He is a research fellow at the Mountain Societies Research Institute (MSRI) of the University of Central Asia (UCA). His current research interests include remote sensing, meteorology, natural hazards, dynamics and physics of the atmosphere, air pollution, and modeling and predictive analysis using machine learning (ML).

Maksim Kulikov received his BSc degree in information systems from Kyrgyz State Technical University, his MSc degree in environmental management from the International University of Kyrgyzstan, and his PhD in excellence in geography and natural sciences from the Institute of Geography, University of Hamburg, Germany. He is a research fellow at the MSRI of the UCA. His current research interests include soil, vegetation, as well as remote sensing, geographic information system (GIS), and modeling of natural ecosystem processes.

Evgenii Shibkov received his bachelor’s degree in world economy from the Faculty of International Relations, Kyrgyz-Russian Slavic University, Bishkek, Kyrgyzstan, and his MS degree in geomarketing, geodata modeling, and cartography in 2014 from Kyrgyz State University of Construction, Transport, and Architecture. He is a research associate at the MSRI of the UCA. His current research interests include forest, pasture, and water resources management, including GIS and remote sensing applications.

Roy C. Sidle is a director of the MSRI and a professor of the Earth and Environmental Sciences at UCA. His interests include hydrological processes, climate change impacts, natural hazards, cryosphere, land degradation, and food security. He has more than 220 publications in journals and more than 300 book chapters. These works have been cited more than 16,500 times. He was elected as a fellow in AGU (2010), received the international award from the Japan Society of Hydrology and Water Resources (2014), and presented the hydrological sciences distinguished lecture at the 2017 Asia Oceania Geosciences Society meeting.

CC BY: © The Authors. Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
Erkin Isaev, Maksim Kulikov, Evgenii Shibkov, and Roy C. Sidle "Bias correction of Sentinel-2 with unmanned aerial vehicle multispectral data for use in monitoring walnut fruit forest in western Tien Shan, Kyrgyzstan," Journal of Applied Remote Sensing 17(2), 022204 (18 November 2022). https://doi.org/10.1117/1.JRS.17.022204
Received: 29 July 2022; Accepted: 31 October 2022; Published: 18 November 2022
Lens.org Logo
CITATIONS
Cited by 1 scholarly publication.
Advertisement
Advertisement
KEYWORDS
Unmanned aerial vehicles

Bias correction

Vegetation

Satellites

Spatial resolution

Remote sensing

Meteorology

Back to Top