1. Introduction
Globally, declining soil quality poses a significant challenge to improving agricultural productivity, economic growth and a healthy environment [
1,
2]. In coastal areas, soil salinity and alkalinity are major soil limiting factors for agricultural and land degradation [
3]. Soil salinization not only reduces soil quality and land productivity, leading to a decline in crop yield, but also threatens ecological security and sustainable land use [
4,
5,
6]. With the change of natural environment and the disturbance of human behavior, regional salinization becomes more and more serious, which affects the sustainable development of agriculture coastal areas to a great extent [
7]. It is of great significance for agricultural production and sustainable development to accurately extract the soil salinization status and grasp its spatial distribution law in the main crop corn planting area of coastal areas.
To improve the accuracy and efficiency of obtaining regional soil salinization spatial distribution information is a prerequisite for rational management and utilization of salinized soil [
8]. The traditional method of obtaining soil salinity information in the corn planting area is mainly through field survey sampling and laboratory testing, which is time consuming and laborious. Remote sensing technology has become a frequently used method for the quantitative analysis of soil salinization information because of its advantages of fast, large-scale, and non-destructive acquisition of ground feature information [
9]. At present, ground, UAV and satellite remote sensing technologies provide a powerful means for monitoring the salt content of surface soils and have been widely used in the monitoring of farmland soil salinization [
10,
11,
12,
13]. Mohammad et al. [
14] implemented the monitoring of soil salinity in a large area of Qom County, Qom Province, Iran, based on Sentinel-2A data. Wei et al. [
15] took advantage of UAV equipped with Micro-MCA multispectral sensors to obtain images and realized the estimation of soil salinity in a small area of Hetao Irrigation District. Wang et al. [
16] utilized a portable spectrometer ASD to obtain soil hyperspectral to construct a soil salinity inversion model in Baidunzi Basin, China, and achieved high model accuracy. However, most satellite images have low spatial resolution, so it is hard to achieve high precision real-time monitoring; UAV technology can obtain images with high temporal and spatial resolution, but the observation range is small, and it is unable to realize large scale monitoring; hyperspectral data can build high precision inversion models, but point information is incapable of monitoring soil salinity in a continuous spatial range. Therefore, due to the mutual constraints between the spatial resolution, spectral resolution and imaging width of the sensor, it is difficult for a single sensor to meet the requirements of large-scale, high precision and rapid soil salinity monitoring simultaneously [
17]. Making full use of the complementary advantages of multi-source remote sensing data to carry out satellite-UAV-ground integrated inversion is an possible way to improve the accuracy of remote sensing inversion of regional soil salinity [
18,
19,
20].
At present, Satellite-UAV-ground multi-source optical remote sensing data fusion has been applied to regional soil salinity inversion [
21,
22,
23,
24,
25]. Solmaz et al. [
26] constructed an inversion model through Landsat 8 and ASTER image fusion to obtain the spatial distribution of soil salinity in the Balikhli-Chay watershed, which improved the accuracy of soil salinity monitoring in the watershed. However, by the affection of inconsistency of sensor bands and satellite data acquisition time, the accuracy of soil salinity inversion after data fusion still needed to be improved. Zhang et al. [
27] took advantage of band correction coefficients to normalize the reflectivity of satellite images based on the correlation between UAV and satellite image reflectivity, which improved the accuracy of soil salinity inversion, but the relationship between UAV and satellite image band spectrum information is nonlinear, and it was unable to accurately express the relationship between the two using only normalized coefficients. Sun et al. [
28] used the measured soil hyperspectral data and Landsat-8 OLI multispectral data fusion to improve the retrieval accuracy of soil salt, and analyzed the differences of salt remote sensing in different seasons. Jia et al. [
29] built a soil salinization estimation model based on the fusion of ASD hyperspectral and Landsat-8 OLI images, which expanded hyperspectral data from isolated point information to pixel and regional scale; however, due to the large spectral differences, it was difficult to effectively establish the corresponding relationship between the two samples, limiting the improvement of the inversion accuracy. In conclusion, the satellite-UAV-ground integration of regional soil salinity inversion is subject to the following limitations at present. First of all, the discrete hyperspectral observation data cannot accurately match the continuous spatial scale of UAV and satellite data; second, the simple linear method is used to fuse remote sensing data of different scales, and the accuracy of the inversion model built therefrom is limited; third, until now most of the inversion research based on satellite-UAV-ground multi-source remote sensing data fusion is based on the data fusion of two platforms, and the research of soil salinity inversion systems based on the integration of remote sensing data of three platforms still needs further exploration.
The overall objective of this research is to to explore the nonlinear fusion method of ground imaging hyperspectral and UAV multi-spectral images, build a soil salinity inversion model based on the fused UAV images, and then to try to construct a high accuracy inversion model based on satellite image through the upscaling method, so as to realize satellite-UAV-ground integrated soil salinity monitoring in a coastal corn planting area.
4. Discussion
(1) In coastal soil salinization areas, soil salinity is the main factor affecting the growth of corn and other crops, and other factors such as soil texture, fertility and nutrients, and soil moisture have relatively balanced effects on crop growth. Therefore, the difference of vegetation indexes only considers the influence of soil salinity, and the soil salinity is indirectly inverted through the vegetation index, which has been confirmed by previous studies [
46,
47,
48,
49]. The relationship between vegetation index and soil salinity of crops under different environmental conditions and at different times is distinct, so the established satellite-UAV-ground integrated inversion model is more suitable for the inversion of soil salinity in the corn seedling stage in coastal areas. The model was used to invert corn soil salinity at the seedling stage in 2019, and the results confirmed the universal applicability of the model.
(2) Francos et al. found that the traditional field non-imaging spectral data are discrete and easily affected by the soil background [
50], while the ground hyperspectral imaging technology has the characteristics of image and spectrum integration, which can accurately determine the spectral information of the corn at the sampling point. The fusion of spectral information of ground hyperspectral and UAV image effectively improves the ability of UAV images to accurately express corn spectral information. Therefore, the accuracy of the soil salt inversion model which was constructed by UAV images fused with hyperspectral imaging data has been significantly improved.
(3) The four bands of the UAV image were fused with the ground hyperspectral image, and the degree of fitting was improved. However, the highest degree of fitting was 0.801, which was still different from the spectral information of the ground hyperspectral image. This is consistent with the results of previous studies [
51,
52]. Firstly, the divergence, probably due to the quadratic polynomial model used in image fusion, fails to fully explore the internal relationship between the data. The second possibility is the uncertainty of remote sensing data, and the band response functions of different sensors are different. When spectral response function is used for UAV band spectral matching, spectral information will be lost. Therefore, the next step of research should adopt more effective deep-level and high-level feature mining methods, such as deep learning methods [
53], and improve the matching accuracy of the spectrum and space of the image to be fused to reduce the influence of radiation and spatial characteristics on the fusion accuracy. The data fusion method in this research has conducted a preliminary study on the fusion of images of different widths and provided a reference for ideas and methodology.
(4) The focus of this research was the exploration of the integration method of satellite, UAV and ground. Therefore, only the PLS inversion model was constructed. By the foundation of the effectiveness of integrated satellite-UAV-ground inversion in this research, the next step will be to integrate multi-dimensional features such as spectral features, spatial textures, and crop parameters to construct higher-precision models such as machine learning [
54,
55], and to screen the optimal model to further improve the accuracy of the regional soil salinity inversion.
(5) The heterogeneity of the surface space seriously affects the spatial scale conversion. The trend surface analysis method uses the multivariate statistical method to fit the distribution of spatial elements. In this research, the trend surface was used to simulate the spatial change trend of soil salinity, and the residual surface was used to simulate and quantify the spatial variability of the residual. As the scale increases, the variability of the soil salt residual becomes weaker and the standard deviation decreases; this agrees with the multi-scale variation law of soil salinity in the study area [
56]. The influence of information loss and variation in the process of spatial scale upscaling is unavoidable [
57,
58]. The formulation description of scale transformation and the construction of a better continuous model are worthy of exploration.
(6) The satellite-UAV-ground integrated approach proposed in this study improves the monitoring accuracy of regional soil salinization. Compared with the previous satellite-UAV upscale inversion method, the inversion quality of the satellite-UAV-ground integration was better [
59,
60,
61]. Although satellite-UAV upscaling improves the spatial resolution of satellite images, the improvement of inversion accuracy was still limited by the restriction of spectral information. Compared with the traditional scaling up method, the spectral information of the original remote sensing data can be improved, and the spatial structure characteristics can be maintained by introducing the high-resolution spectral information fusion and constructing the trend surface to realize the ascending scale conversion. The integrated satellite-UAV-ground method proposed in this research can be used for large-scale inversion of other surface parameters for reference.
5. Conclusions
In this research, ground-based hyperspectral imaging and UAV were fused to construct an inversion model of corn soil salinity, and the model was scaled up to Sentinel-2A satellite scale; the satellite-UAV-ground integrated inversion of soil salinity in the coastal corn planting area was realized. The main conclusions are as follows:
- (1)
The fusion of the four bands of the UAV image with the ground hyperspectral improved the degree of fitting with the hyperspectral data. The vegetation indexes based on the UAV band after fusion had a high correlation with soil salinity. According to the correlation coefficient and variance expansion factor, three sensitive vegetation indexes, NDVI, DVI, and GRVI, were selected as independent variables for PLS modeling and R2 = 0.743; thus, the inversion results were coincident with the actual distribution of soil salinity in the test area.
- (2)
The PLS model S0.05 = 7.375–8.683 × NDVI − 3.083 × DVI + 0.211 × GRVI constructed with the fused UAV images was used as the trend surface conversion function, and the PLS model of the residual ΔS10 was constructed as ΔS10 = −1.161 + 2.347 × NDVI1 − 4.505 × DVI1 − 0.08 × GRVI1. Thus, the Sentinel-2A satellite scale PLS inversion model of soil salinity in the coastal corn planting area of S10 = 6.214–6.336 × NDVI1 − 7.588 × DVI1 + 0.131 × GRVI1 was obtained.
- (3)
The actual soil salinity in the corn planting area was used to verify the inversion results of satellite-UAV-ground integration and satellite-UAV ascending scale, and the inversion results of satellite-UAV-ground were better than those of satellite-UAV inversion and had high consistency with the actual salt distribution. The Sentinel-2A image of corn growing area on 19 July 2019 was used to verify the universality of the model; the R2 of soil salt inversion and measured soil salt was 0.605, which indicated that the model had an excellent universality.
- (4)
The distribution of non-salinized soil in the study area was small, and the majority was mild and moderate salinized soil, accounting for 88.36% of the total area, which was concentrated in the southwest and central part of Kenli District, while the distribution of severe salinized soil and salinized soil was small and scattered in the corn planting area.
In this research, we proposed a satellite-UAV-ground integrated soil salinity inversion method in the coastal corn planting area, which provides an effective means for quickly and accurately obtaining soil salinity information in the corn area.