JAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India, 2002
phenomenon, however, could not be addressed. Spectral
measurements in thermal and microwave region of the spectrum
have shown some promise (Chase, 1969; Myers and Moore, 1972;
Huntley, 1978; Heilman and Moore, 1982) in the detection of
waterlogging due to rising ground water table.
A study was, therefore, taken up to evaluate the potential of
thermal sensor data for assessment of waterlogging due to rising
ground water table in part of Mahanadi stage-I command area,
Orissa state using day-and-night time Landsat-TM data acquired
on November 2, 2000.
The approach involves conversion of DN values of Landsat-TM
thermal band (Band-6) data into radiance after geo-referencing
and ultimately into at-satellite brightness temperature (Tb) using
pre-defined calibration constants provided along with the satellite
data, atmospheric correction, concurrent ground truth collection
and correlation of at-satellite brightness temperatures (Tb) with
the occurrence of waterlogging due to rising ground water table.
The Ground water table data was collected during field
verification campaign. Some observations were used for
establishing relationship between thermal response and the
incidence of waterlogging whereas the rest for validation of the
relationship thus established. The brightness temperatures values
were thresholded as per correlation results and satellite image was
colour sliced accordingly.
The standard false colour composite (FCC) image of the area
generated from green, red and near-infrared bands of day-time
Landsat-TM data along with corresponding day-time and night-
time thermal data are appended as Fig-l. As evident from the
Figure, areas with surface ponding, wetness or a thin film of water
appear in different shades of blue/cyan colour. By virtue of high
specific heat and thermal inertia, water warms up and cools down
gradually. Consequently, in the day-time thermal image (single
band image), areas with ground water closer to the surface, those
with thin film of water on the surface and wet surface appear
darker indicating thereby lower temperature as compared to
terrain background which is manifested as light to very light gray
tone (indicating higher temperature). During the night when
ambient temperature drops down due to gradual cooling, water
appear warmer (dull white to white colour) in the thermal image
as compared to terrain background, which exhibits various shades
of colour ranging from medium to dark gray. A comparison of
day-time optical and thermal with night-time thermal data reveals
an improved detectability of waterlogged areas in the latter than
the former.
Addtionally, an attempt has been made to correlate the areas with
high ground water (less than 2m below. the surface) as observed
during ground truth campaign and the thermal response as
measured by the Landsat-TM. The at-satellite brightness
temperature has been found to range from 18°C to 27°C at around
9.30 PM on November 2, 2000. The areas with ground water table
less than one meter have been found to be in the brightness
temperature (Ty) range of 23.1?C to 24.1?C, whereas areas with 1-
2 m ground water table had T, values between 22.3°C to 23.1°C.
The areas with standing water had T, values ranging between
25.1 to 26.1? C. And those with a thin film of water have Tb
values ranging from 24.1 to 25.1 °C. The overall accuracy of the
segmentation was 86.8%. From the foregoing it is quite evident
that night-time thermal image offers a great potential for detecting
potentially waterlogged areas.
732
2.2. The Impact of Mining on Agricultural Land
Optical sensor data have been operationally used to study the
dynamics of land disruption due to mining (Wier et al, 1973,
Irons et al, 1980; Parks et al, 1987), water pollution assessment
(Repic et al, 1991) and monitoring (Lathrop and Lillesand; 1986;
Lillesand et al, 1987), and detection of land subsidence
(Mechaffie and Seargent, 1985; Volk et al., 1990).
Realizing the potential of spaceborne multispectral data in
addressing various issues related to mining activities, a study was
taken up to assess the impact of opencast iron ore mining on
agricultural land in part of Goa, India using an erosion-deposition
model proposed by Mitasova et al (1996). The database used in
the study consists of IRS-1C LISS-III and PAN data with path -
row nos. 96 - 62, acquired on February 11, 1997, and Survey of
India topographic maps at 1:25,000 scale.
The approach involves database preparation, ground truth
collection, digital analysis as well as systematic visual
interpretation of satellite data. Initially, the IRS-1C LISS-III and
PAN data were georeferenced to 1:25,000 scale topographic maps
followed by data fusion using Principle Component data fusion
technique. Simultaneously, the contour information in Survey of
India (SOI) topographic maps at 1:25,000 scale were digitized
along with drainage line and a DEM was generated using
ARC/INFO software. The satellite data along with DEM was used
for visual interpretation of soil properties. For deriving
information on land use / cover through digital analysis,
resampled LISS-III (6 m resolution) and PAN individual data sets
were used. Various land cover categories that were identified
during ground truth campaign were used as training sets for
classifying entire image using Gaussian maximum likelihood per-
pixel classifier.
To study the impact of mining on agricultural lands, initially, the
spatial distribution of erosion and deposition rates need to be
estimated. The UPSED model developed by Mitasova et al.
(1996) was used in the present study to predict the erosion-
deposition zones. The model is simple and predicts the spatial
distribution of erosion / deposition as the divergence of sediment
flow under steady state conditions. The outline of model is as
follows:
D = div q = Kt [grad h ] * S Sin B - h[ kp + kt] (1)
where — D = Net rate of erosion / deposition
K = Transportability of sediment
h = Water depth estimated from upslope area
S = Unit vector in steepest slope direction
ß = Slope in degrees
kp = terrain curvature in the direction of steepest
slope
kt = curvature tangential to a contour line projected to
normal plane.
The land cover information was used for predicting the runoff,
cover and management factors. The information on soils was used
to generate erodibility factor grid, and the DEM for generation of
slope and aspect grids. For implementing the model in
ARC/INFO GRID environment, source code provided by
Mitasova and Mitas (1999) was used after incorporating