Nature-Inspired Algorithms for Enhancement and Land-Cover Classification of Satellite Images
Date
2018
Authors
Suresh, Shilpa
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Satellite images are important for various applications in different domains
of remote sensing such as geographical information systems, geosciences,
land-cover mapping, change detection, etc. Land-cover classification of
satellite images is a very predominant area since the last few years. Multispectral (MS) and hyper-spectral (HS) satellite imagery are steadily growing in its popularity as a digital means for remote sensing, terrain analysis
and for detecting thermal signature. It is often used as a viable alternative
for mapping applications when standard mapping and geodesy products
become inadequate or outdated.
This thesis investigates the impact of various nature-inspired optimization algorithms in different phases of satellite image processing. Satellite
images normally possess relatively narrow brightness value ranges necessitating the requirement for contrast stretching, preserving the relevant
details before further image analysis. Most of the traditional enhancement
approaches are highly dependent on the image to be processed and hence
require manual human intervention. The automation of satellite image
enhancement process requires defining an evaluation criterion valid across
a wide range of such image datasets. A parameterized transformation
function evaluated by a fitness criterion is hence adopted for this process.
Nature-inspired optimization algorithms, a subclass of metaheuristic
algorithms, are largely exploited for different image processing applications
during the last few decades. The potential of such algorithms in following
a guided random search path proved to be very useful for solving complex
contrast enhancement problems. In this context, two new nature-inspired
optimization algorithm based methods are proposed for the purpose of
satellite image enhancement. Satellite image denoising is also essential
for enhancing the visual quality of images since it often gets affected by
noisy signals, thereby corrupting the original image. Two new natureinspired optimization algorithm based adaptive Wiener filtering methods
are proposed for denoising multi-spectral satellite images corrupted with
Gaussian noise. All the proposed contrast enhancement and denoising
methods achieved better qualitative and quantitative results as compared
ivwith the state-of-the-art methods.
The increase in the internal variability of land-cover units and weak
spectral resolution of satellite images, make the pixel level information
extraction very difficult. Therefore, a thresholding based image segmentation process prior to the classification of these diverse terrains presents
to be an appropriate approach. Satellite image segmentation is challenging due to the presence of weakly correlated and ambiguous multiple regions of interest. In the literature, several algorithms were developed to
generate optimum threshold values for segmenting such images efficiently.
But their exhaustive search nature makes them computationally expensive
when extended to multilevel thresholding. Hence, two new nature-inspired
algorithm based segmentation methods are proposed. The proposed algorithms evolved to be most promising, stable and computationally efficient
for segmenting satellite images.
Satellite images exhibit spatial and/or temporal dependencies in which
the conventional machine learning algorithms fail to perform well. Another
problem faced by satellite images acquired is the huge number of spectral bands they possess. Hence, a nature-inspired optimization algorithm
driven, dimensionality reduction framework for automated land-cover classification is proposed. Experiments are conducted on multi-spectral as well
as hyper-spectral satellite image datasets to demonstrate the robustness
of the proposed method. It outperforms all the state-of-the-art land-cover
classification methods, attaining an overall classification accuracy around
92 % and 99 % for different multi-spectral and hyper-spectral satellite
image datasets respectively.
Description
Keywords
Department of Electronics and Communication Engineering, Satellite images, Multi-spectral, Hyper-spectral, Image enhancement, Image denoising, Image segmentation, Metaheuristics, Natureinspired algorithms, Land-cover classification