dc.description.abstract |
In this thesis, a meta-classi cation ensemble approach is developed to improve the
prediction performance of snow covered area. The methodology adopted in this
case is based on neural network along with four state-of-the-art machine learning
algorithms: Support Vector Machine (SVM), Arti cial Neural Networks (ANN),
Spectral Angle Mapper (SAM), and k-means clustering. An AdaBoost Ensemble
algorithm related to decision tree (DT) for snow cover mapping is also proposed.
According to the available literature, these methods have been rarely used for snow
cover mapping. Employing the above techniques, study is conducted for Raktavarn
and Chaturangi Bamak glaciers, Uttarakhand, Himalaya using multi-spectral Landsat
7 Enhanced Thematic Mapper (ETM)+ image. The study also compares the
results with those obtained from statistical combination methods (Majority rule
and Belief functions) and accuracies of individual classi ers. Accuracy assessment
is performed by computing the quantity and allocation disagreement, analysing
statistic measures (accuracy, precision, speci city, Area Under the Curve (AUC),
sensitivity) and Receiver Operating Characteristic (ROC) curves. A total of 225
combinations of parameters for individual classi ers are trained and tested on the
dataset and results are compared with the proposed meta-classi er approach. It
is observed that the proposed methodology produced the highest classi cation accuracy
95%, close to 94% that is produced by the proposed AdaBoost Ensemble
algorithm. From the sets of observations, it is concluded that the ensemble of
classi ers produced better results compared to individual classi ers.
Extent of snow cover plays a vital role for better understanding of current and
future climatic, ecological, and water cycle conditions. This study depicts a multilayer
framework, employing hybrid classi cation approach based on integration
of deep features and hand-crafted features, for meticulous mapping of snow cover
area (SCA). It exploits diverse sensors, spatial, and temporal resolution satellite
imagery. The pillars of the architecture are Convolutional Neural Network (CNN)
for computing the deep spectral features and Random Forest (RF) classi er for peri
forming the classi cation. Experiments are conducted for Khiroi region, Chamoli
district, Uttarakhand for snow cover mapping using Sentinel 1/2 optical and Synthetic
Aperture Radar (SAR) satellite imagery, along with Advanced Spaceborne
Thermal Emission and Re
ection Radiometer (ASTER) Global Digital Elevation
Model (GDEM) derived topographic parameters. This framework with hybrid approach
resulted in a classi cation accuracy of (97%) outperforming the state-of-theart
algorithms, thereby providing an infrastructure for the future practical use of
remote sensing resources for snow cover mapping in the Himalayan region.
Glaciers present in the mountain regions constitute an important part of the
earth system. Glacier components are very important input parameters for studies
related to glacier mass balance, hydrological and climatological modelling and
studies related to glacier hazard. The study proposes a weighted ensemble framework
approach for glacier terrain mapping. The proposed methodology is based
on the hybrid of classi er via weighted majority of vote and four states-of-the-art
machine learning algorithms: Maximum Likelihood Classi cation (MLC), ANN,
SVM, and RF. The weights are assigned to the classi ers using a priori recognition
performance statistics. The study is conducted at the region near Khiroi, Uttarakhand,
Himalaya employing multispectral Sentinel-2 satellite imagery, and derived
topographic and texture parameters. It is observed that the proposed approach produced
the highest classi cation accuracy (95.81%) with kappa coe cient (0.953).
The results of the proposed hybrid techniques are compared with those of the individual
classi ers. Accuracy assessment is performed by analysing several statistic
measures and kappa coe cient. It is concluded that the ensemble of classi ers gives
the better prediction of glacier terrain classes compared to the individual classi ers
as it picks up the advantage of classi ers holding complementary information.
Mapping of glaciers and their constant monitoring is essential to assess the impact
of climate change on global coverage of glaciers. Even though studies mention
innumerable methods for mapping clean glaciers but still to discover the extent
of debris covered glaciers remains a challenge for researchers. The study proposes
a novel hybrid Deep Learning (DL) framework approach for e cient and accurate
mapping of debris covered glaciers. The framework comprises of integration
of several CNNs architecture, in which di erent combinations of Sentinel-2 multispectral
bands, topographic and texture parameters are passed as input for feature
extraction. The output of an ensemble of these CNNs is hybrid with RF model
for classi cation. The major pillars of the framework includes: 1) Technique for
implementing topographic correction (pre-processing), 2) The proposed Hybrid of
ii
ensemble of CNNs and RF classi er, and 3) Procedures to determine whether a
pixel predicted as snow is a cloud edge/shadow (post-processing). The proposed
approach is implemented on the multispectral Sentinel-2 and Landsat 8 Operational
Land Imager (OLI)/ Thermal infrared sensor (TIRS) data, and ASTER GDEM for
the part of the region situated in Alaknanda basin, Uttarakhand, Himalaya. The
proposed framework is observed to outperform (accuracy 96.79%) the current stateof-
the-art machine learning algorithms such as ANN, SVM, and RF.
The possibility of occurrence of snow avalanche depends both on the amount of
snow which has been accumulated in the region along with the intensity of snowfall
and other terrain parameters. In this study, an attempt has been made to compute
avalanche prone areas in Alaknanda basin. For this, rule based classi cation approach
is employed. Several parameters such as slope, surface curvature, elevation,
aspect and peak ground acceleration (PGA) due to earthquake are used. First,
snow accumulation of the region is computed which provides preliminary basis for
occurrence of snow avalanche. It is observed that the regions which are detected as
avalanche prone areas are very frequently a ected by snow avalanche occurrences.
Avalanches are very frequent in regions where snow cover is present throughout
the year. Damage caused by these avalanches is tremendous in the lives of humans
and animals. Hence, it is important for researchers to understand reasons for the
formation of avalanches and ways to control them. The study area is situated near
Badrinath region, Alaknanda basin, Himalayas as shown in gure 11. For this study
ve avalanche paths are detected, shed 1, shed 2, shed 3, shed 4 and shed 5. Both
Normalized Di erence Vegetation Index (NDVI) and Tasseled Cap Transformation
greenness method are applied in order to examine the amount of change in the
vegetation cover due to occurrence of avalanche. The area is also classi ed using
the supervised based classi cation method, to determine the amount of change in
the vegetation area. Hence, it is observed that avalanche
ow has a great impact
on the vegetation of the area. It is determined that the regions in which the loss of
vegetation is more, are subjected to more frequent occurrence of the avalanches.
Avalanches can be activated due to an overload generated from excess snowfall,
metamorphic transformations in ice-fall, rockfall, and snow pack. With their
capacity to take bulk of snow at a fast pace, avalanches can cause a signi cant
demolition to properties. In territories where snow avalanches constitute signi cant
risk to individuals and properties, precautionary measures like snow wall, unloading
avalanche potential snow packs by arti cial activation, and arti cial boundaries
are setup to reduce their hindrance potential. The study proposes a deep learning
iii
based architecture that exploits both the spatio-temporal characteristics for snow
avalanche classi cation. |
en_US |