Feature Extraction Strategies based on Mathematical Morphology for the Analysis of Remotely Sensed Imagery
Date
2019
Authors
C. A, Rishikeshan
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The thesis evolves on the development of novel feature extraction methods for the
analysis of remotely sensed images which are enabled to enhance the robustness and
the generalization properties of the feature extraction system. Recent developments in
optical data sensors mounted on-board of both space-borne and airborne earth
observation platforms have led to increasing volume, acquisition speed and a variety of
sensed images. Therefore the feature extraction from remotely sensed imageries is a
major concern and challenge for the photogrammetry, remote sensing, and GIS
communities. The extensive survey of literatures expose the shortcomings overlooked
for the existing approaches utilized in the feature extraction of remote sensing images.
The automated extraction of features from the remotely sensed images has been an
active area of research for over a decade due to its substantial role in several application
areas viz. urban planning, transportation navigation, traffic management, emergency
handling, etc. Although the concept of feature extraction is relatively simple, the
reliability and accuracy remains a major challenge.
With advanced imaging technologies, there is an augmented demand for developing
new approaches which can exhaustively explore the information embedded in remote
sensing images. The past studies evidenced mathematical morphological tools as best
suited for the potential exploitation of the spatial information in the remote sensing
imageries. Priorly, mathematical morphology was applied only for the interpretation of
binary images. However, it was extended to analyze grey scale and colour images. The
thesis presents different spatial feature extraction methods which are developed based
on mathematical morphology for the analysis of remote sensing optical images
addressing to different applications such as urban feature detection, waterbody
extraction, crop field boundary extraction and shoreline extraction. The morphology
based feature extraction algorithms developed are effective and contribute to the
interpretation of high resolution remotely sensed images.This automatic, scalable, and
parallel processing methods can be used to analyze colossal remote sensing data within
the selected classification schemes of remote sensing image system. The proposed
methodologies contribute to the operational use of remote sensing datasets in manyii
practical applications related to monitoring and management of environmental
resources.
In this thesis, a novel approach is presented for extracting shoreline from remotely
sensed images. Shoreline extraction is inevitable for several studies such as coastal zone
management, coastline erosion monitoring, GIS database updating, watershed
definition, flood plain mapping and the evaluation of water resources. Multiple
techniques are proposed for the extraction of different types of waterbodies such as
lakes, rivers and glacier lakes. MM techniques have been exploited for the extraction
of crop field boundaries from multiple satellite imageries. UAV driven images are
beneficial as they facilitate a comprehensive description of the scenes, and concurrently
require pertinent image processing techniques to exploit the geometrical information
from the image datasets. This study introduces two innovative feature extraction
methods for UAV and satellite images
The novel feature extraction techniques proposed in the thesis have been investigated
and experimented in different datasets to test their degree of performance. The
experimental investigation performed with the developed techniques for analysis of
remotely sensed images are noted for its improved accuracy when compared against
other state of the art methods.
Description
Keywords
Department of Applied Mechanics and Hydraulics, Remote sensing, image processing, computer vision, mathematical morphology, classification, shoreline detection, waterbody extraction, crop field boundary delineation, building extraction, UAV, VHR images, urban features