Iqbal, Mehwish

Development of Edge Preserving Image Enhancement Techniques / Mehwish Iqbal - Rawalpindi, MCS (NUST), 2021 - xviii, 181 p

Due to some constraints in imaging techniques and computer graphics, images that
are captured have many problems like distorted edges, presence of noise, artifacts, and oversaturated
colours. Image enhancement plays a significant role in the preservation of edges,
minimization of noise, artifacts, thus have broad applications in domains of image smoothing,
filtering, contrast correction, de-hazing, de-blurring, rain-removal, and super-resolution.
Specifically, edge preservation techniques are considered for image enhancement to improve
the visual quality, which ultimately minimizes noise, artifacts and enhances the quality of
the image.
Existing image enhancement techniques mostly are inaccurate, result in noise, artifacts,
blurred edges, so they do not perform well for different applications. This leads to less
visually pleasing results having low quality. In this thesis, edge preservation techniques for
image enhancement are proposed for different domains, which include image smoothing,
filtering, de-blurring, de-hazing, rain removal, super-resolution, illumination normalization,
low light image enhancement, vessel segmentation, re-colouring, and underwater image enhancement.
Simple to implement techniques are proposed incorporating existing filters like
guided filter, L0 minimization filter etc and machine learning algorithms like PCA, k-means
clustering, etc. in different colour spaces like RGB and YCbCr to preserve edges, minimize
noise, artifacts, contrast correction and produce visually pleasing results. Image is segmented
for smoothing and deblurring, quad-tree decomposition for dehazing, specular band
decomposition for illumination normalization, undergoes DFT for recolouring, and Laplace
decomposition for underwater image enhancement. Operations such as histogram processing,
sharpening, de-noising, morphological operations, arithmetic operations, clustering,
color balancing, and white balancing are also performed to preserve edges and minimize
noise, artifacts. The proposed techniques produce results with minimum noise, artifacts, and
blurred edges.
Visual and quantitative comparison (with state of the art existing techniques) is performed
to verify the significance of the proposed methods. Simulation results reveal that
the proposed techniques are more accurate in edge preservation, minimization of noise, and
artifacts as compared to the state of the art techniques.


PhD Electrical Engineering Thesis


PhD EE Thesis

621.382,IQB