Abstract:
Soil moisture, surface roughness and soil texture are important soil parameters
in various applications, such as, agriculture, weather forecasting, soil erosion,
hydrological studies and flood and draught prediction. Studies in the field of active
microwave remote sensing have shown the feasibility to monitor these soil parameters
with ground based, airborne and spaceborne sensors. Therefore, this thesis has two
main objectives. First main aim is to analyze soil parameters, specifically soil texture
which is less reported in bistatic domain because it is well known that bistatic domain
provides several flexibilities over monostatic domain and very lesser experimental
studies have been carried out to characterize the soil parameters in this domain.
Second aim is to retrieve the soil moisture in vegetated area with SAR and optical
satellite data for minimizing the use ofapriori information.
Thesis has been composed of seven chapters. First chapter deals with the
introduction, experiment performed, data used and study area. The second chapter
presents the brief literature review, discussing the studies carried out in the field of
microwave remote sensing for the soil parameters retrieval and its limitations along
with the need of research in the present scenario.
Chapter 3 analyzes the effect of soil texture on specular scattering coefficient
at 10 GHz (X-band) in both like polarizations, i.e., HH- and VV-polarization for
various incidence angles (i.e., 30° to 70° in step of 10°). If ((9, <p) (where, 9 and (p are
the incidence angle and azimuthal angle respectively) define the incident direction of
the transmitted power Pp(6, (p) at polarization p, and (<9,, <ps) is the direction of the
received power Pq{6s, (ps) at polarization q then specular scattering is defined as: 6 =
9S, cp = 0 and <ps = 0. To study the soil texture effect on the specular scattering
coefficient, four different soil texture fields were prepared on the basis of variation in
soil constituent, i.e., the percentage of sand (i.e., 78.14% to 28.72%), silt (i.e., 33.16%
to 9.12%) and clay (i.e., 18.75% to 4.32%) was changed for different fields. The
major changes were observed for sand constituent. It is observed from the study of
dry and smooth soil that by changing soil texture there is a considerable amount of
change in specular scattering coefficient for both like polarizations. The effect was
more prominent at higher incidence angles (i.e., > 50°), i.e., better differentiation in
specular scattering coefficient for different soil texture field was observed at higher
incidence angles. The dynamic range of specular scattering coefficient with incidence
angle changes with the change is sand constituent in soil. The dynamic range of 8.7
dB and 10.5 dB was observed for higher sand content (i.e., 78.14%) and lower sand
content (i.e., 28.72%), respectively for dry and smooth soil in HH-polarization
whereas in case of VV-polarization dynamic range was 18.2 dB and 19.4 dB
respectively. Further, the effect of soil texture on specular scattering coefficient was
examined in the presence of four different soil moisture contents (i.e., dry to 0.21 cm
cm"3) and three different periodic surface roughness conditions (i.e., smooth to 1.4
cm). Thus in order to check the soil texture effect, 48 different field conditions were
considered for the observations of specular scattering coefficient in both like
polarizations at various incidence angles. The effect of soil texture on specular
scattering has been clearly observed at different soil moisture condition. A better
differentiation in specular scattering coefficient was observed for change in soil
texture with the increase in moisture content though the effect is more prominent at
higher incidence angles. Further, the effect of soil texture on specular scattering
coefficient has been observed in the presence of different periodic surface roughness
conditions. The observation has shown the difficulty in analyzing the effect of soil
texture on specular scattering at higher roughness values (i.e., 0.9cmand 1.4 cm).
Chapter 4 analyzes the effect of soil texture on microwave specular scattering
at 6 GHz (C-band) in both like polarizations, i.e., HH- and VV-polarization. A more
regress analysis was carried out because it is observed that soil constituents with
roughness and moisture are giving more effect on specular scattering coefficient at 6
GHz than 10 GHz. So, ten different soil texture fields were prepared and to check the
angular behavior, the incidence angle was changed from 25° to 70° degree in step of
5°. The percentage of sand (i.e., 85.3% to 2.3%), silt (i.e., 70.6% to 7.5%) and clay
(i.e., 81.6% to 2.5%) was changed for different soil texture fields. Six soil moisture
and five periodic roughness conditions were studied to get an understanding of the
soil texture effect on specular scattering in presence of various moisture contents and
periodic surface roughness conditions. Therefore, total 300 different field conditions
were analyzed. The study at 6 GHz is important as the longer wavelength is relatively
less sensitive to the roughness variation in comparison to the shorter wavelength.
Although the study of this chapter is concentrated for the bare soil only, it may be
tested for the vegetated area as a future work. The analysis part is subdivide, firstly
analyzing the effect of soil texture on specular scattering coefficient in the presence of
various soil moisture contents (i.e., 0.027 cm3 cm"3 to 0.425 cm3 cm"3) by keeping the
periodic surface roughness condition constant. Secondly, the effect of soil texture on
specular scattering coefficient while varying the periodic surface roughness (i.e., 0.43
cm to 2.46 cm) was studied. Furthermore, the combined effect of soil moisture and
periodic surface roughness on specular scattering coefficient for change in soil texture
has been considered. The observation in HH-polarization with dry and smooth field
has shown that the dynamic range of specular scattering coefficient with high sand
content (i.e., 85.3% sand) was 9.8dB whereas in case of high clay content (i.e., 81.6%
clay) the dynamic range was 13.6 dB. The differentiation among different soil texture
field based on specular scattering coefficient can be made when the volumetric soil
moisture content is less 0.368 cm3 cm"3 whereas, it is difficult to observe the soil
texture effect for higher soil moisture contents (i.e., > 0.368 cm3 cm"3) in both like
polarizations. Further, the surface roughness does not exhibit such kind of effect and
even at higher periodic roughness value (i.e., < 2.46 cm) the change in specular
scattering coefficient can be observed with the change in soil texture at 6 GHz. The
experimental observations carried out at 6 GHz points out that higher incidence angles
(i.e., > 45°) are more appropriate than the lower incidence angles for the study of soil
texture in presence of soil moisture and periodic surface roughness in both like
polarizations.
Chapter 5 deals with the retrieval of soil parameters at 6 GHz in association to
the observation made in specular direction. Specular scattering data at 6 GHz has been
considered for soil parameters retrieval studies instead of specular scattering data at
10 GHz due to its response for different soil texture field in the presence of periodic
surface roughness whereas, in case of 10 GHz it has been very difficult to distinguish
among different soil texture fields based on specular scattering coefficient in the
ix
presence of periodic surface roughness. Soil parameters retrieval in domain of
microwaveremote sensing is a challenging task owing to the dependence of many soil
parameters on one scattering coefficient value only. By the virtue of this, more sensor
parameters were utilized to minimize the effect of one or more soil parameters on
specular scattering coefficient, in consequence of which the desired soil parameters
can be retrieved easily and more accurately. In the first approach, copolarization ratio
has been utilized for minimizing the soil texture effect in order to retrieve the
volumetric soil moisture content. The periodic surface roughness condition during the
observation was kept constant whereas, the changes in soil texture and soil moisture
were considered. There was negligible changes in copolarization ratio with the change
in soil texture whereas, copolarization ratio changes with the change in soil moisture.
In accordance to the observations obtained with the copolarization ratio an empirical
relation between the copolarization ratio and volumetric soil moisture was developed.
The volumetric soil moisture content was retrieved with developed empirical
relationship along with the Kirchhoff scalar approximation (SA) to draw the
comparison. The RMSE for soil moisture retrieval was 0.021, 0.079 and 0.095 for
developed empirical relationship, SA in HH-polarization and VV-polarization,
respectively. The obtained results clearly signify that the developed empirical
relationship performed better than SA for retrieving the bare soil moisture. In next
approach, multi-incidence data have been used to retrieve the soil surface roughness.
These surface roughness values were subsequently used to retrieve the soil moisture
and soil texture. Ratio of specular scattering coefficient at two different incidence
angles provides the normalized specular scattering coefficient which depends on
surface roughness and shows negligible dependency on soil moisture and soil texture.
This property led to the development of a relationship between normalized specular
scattering coefficient and roughness parameters, rms surface height, s and correlation
length, /. The developed empirical relationship in conjunction with SA and empirical
relationship developed by Hallikainen et al. (1985) has been utilized for the retrieval
of roughness parameters, soil moisture and soil texture. The retrieved results were in
good agreement with the ground truth data. Root mean square error (RMSE) for the
retrieval of rms surface height, correlation length, volumetric soil moisture,
percentage of sand, and percentage of clay were 0.027, 0.051, 0.036, 5.94, and 8.15,
respectively. The developed approach reduces the need of apriori information which
is required in form of surface roughness characterization when the objective is to
retrieve the soil moisture and soil texture.
Till now we have concentrated our work for analyzing soil parameters in
bistatic domain but still satellite data for bistatic domain is awaited as TanDEM-X is
inprogress. The satellite data which is available are for the case of backscattering. So,
we have considered the satellite data such as PALSAR and MODIS for retrieval of
soil moisture in vegetated area. The retrieval of vegetation covered soil moisture is a
challenging task with the existing SAR sensors. Though, the backscattering
coefficient contains the information of vegetation as well as underlying soil moisture,
the complex scattering behavior of microwave form vegetated area give rise to the
development of complex relationship among backscattering coefficient, vegetation
parameter (e.g., leaf area index, biomass, plant height) and soil parameters (i.e., soil
moisture, surface roughness). The optical data which can characterize the vegetation
may be efficiently utilized in vegetation covered soil moisture retrieval algorithm with
SAR data.
The aim of the chapter 6 is to retrieve the soil moisture in vegetated area with
minimum apriori information by using satellite data like the ALOS-PALSAR
(Advanced Land Observation Satellite- Phased Array type L-band Synthetic
Aperture Radar), a SAR data and MODIS (Moderate-resolution Imaging
Spectroradiometer), an optical data. The PALSAR image is full polarimetric, L-band
(1.27 GHz) image and was acquired on April 06, 2009. The MODIS data used is of
band 1(620-670 nm) and band 2 (841-847 nm) and the date of image acquisition was
April 03, 2009. The area of study was Roorkee city (Uttarakhand, India) and its
surroundings. The first set of images (one PALASR and one MODIS) that lie between
longitudes 77.803° Eand 77.980° Eand latitudes 30.000° Nand 29.823° Nwere used
for the algorithm development and subsequently testing the developed algorithm for
soil moisture retrieval. The second set of images that were used for validating the
algorithm lie between longitudes 77.847° E and 78.024° E and latitudes 29.859° N
and 29.682° N. The date of acquisition of PALSAR and MODIS images were April 6,
2009 and April 3, 2009, respectively. The land cover is fairly flat and mostly consists
of the urban, water and agriculture classes. It is always the possibility to find the
mixed land cover classes therefore, as a first step PALSAR data was used to classify
the land cover in urban, water, vegetated land and bare soil by utilizing knowledge
based approach involving the various polarizations (linear, circular, linear 45°, coand
cross-polarized ratios for both linear and circular polarization) and subsequently
the urban and water region can be masked. The objective of this chapter is to analyze
the feasibility of the relating the information available from SAR data and optical data
to envisage such an approach that mostly rely on the information content of satellite
image and require minimum apriori information. The concept of such an approach
arises as the vegetation can be modeled through the SAR data as well as the optical
data. In case of SAR data the backscattering is affected by the vegetation cover and
contains the information regarding vegetation whereas, the normalized index
vegetation index (NDVI) provides a good estimate of the crop cover. The utilization
of the information content from the optical data reduces the requirement of apriori
information which is required in the vegetation parameters characterization.
Therefore, two different normalizing approaches have been used for scattering
coefficient of PALSARdata and then the empirical relationships have been developed
with NDVI to incorporate the vegetation effect in soil moisture retrieval. In first
approach, scattering coefficient of image is normalized with the scattering coefficient
of bare soil (calculated with in situ observation of moisture and roughness) making
the normalized data a function of vegetation cover which is represented by the NDVI.
A quadric relationship was observed between the normalized scattering coefficient
data and NDVI with coefficient of determination (R2) 0.83. This quadric relationship
sets the basis for the retrieval of soil moisture with the help of NDVI and normalized
scattering coefficient from the PALSAR image. The root mean square error (RMSE)
is 0.036 and 0.041 for retrieval of soil moisture when the algorithm is applied on test
image and validating image, respectively. In the second approach, scattering
coefficient of PALSAR data was normalized with the scattering coefficient of the dry
soil providing the normalized data as a function of the soil moisture and vegetation
cover defined by the NDVI. The relationship between normalized scattering
coefficient and NDVI was explored which provide a set of lines defining the different
range ofsoil moistures. The coefficient ofdetermination (R2) for all regressed lines
was greater than 0.81. Hence, the soil moisture is retrieved with the developed
empirical relationship between the normalized scattering coefficient of PALSAR data
andNDVI. The root mean square error(RMSE) is 0.039 and 0.052 for retrieval of soil
moisture when the algorithm is applied on test image and validating image,
respectively.
Finally chapter 7 draws the conclusion and contribution made in the thesis as
well as presents the future work of the study carried out in this thesis.