Abstract:
Medical imaging captures visual representation of human body’s structural and functional
aspects like tissues, bones, blood flow etc. for clinical analysis and medical intervention.
Optical Imaging, X-ray, Computer tomography, Magnetic Resonance Imaging (MRI), Ultrasound
etc. are common medical imaging techniques used by physicians. Among them ultrasound
is the most widely used imaging technique due to its cost effectiveness and human
health friendly characteristic. But ultrasound images are inherently corrupted with speckle
noise and thus makes physician’s interpretation complex and time-consuming. Therefore, in
medical image analysis image denoising has more clinical value since it helps the physicians
to reach correct, reliable and speedy diagnosis by mitigating noise from the image. Image
denoising also facilitate image segmentation, image fusion, object detection and target
recognition. Computer-aided image denoising and image enhancement techniques helps to
improve efficiency and accuracy of physician’s interpretation.
This research work focused on the development of reliable image denoising and enhancement
techniques for echocardiographic images. It aimed to denoise an echocardiographic
image without introducing noise distortion and loss of information. Fractional calculus has
been used to efficiently mitigate noise of various levels from the echocardiographic image.
Also rough set theory and fuzzy logic have been used to draw boundaries between image
regions. These concepts helped to handle uncertainty caused by the speckle noise. Three
image denoising methods have been proposed in thesis. First proposed denoising methodology
performs image denoising in two stages. Stage-1 applies weighted fuzzy mean filter
and stage-2 convolves every pixel of the image with a fractional integration filter. Second
proposed approach intelligently selects appropriate filter for every image region. Fractional
order differintegral filter is proposed in third image denoising methodology. All three proposed
denoising schemes not only preserve details in the denoised image but also efficiently
reduce noise. Image Enhancement further improves the visual quality of an image. This
research also proposes two echocardiographic image enhancement schemes to effectively
utilize gradient magnitude and eigenvalue hessian matrix calculations and fractional order
derivative concept.
Real echocardiographic b-mode images and standard images artificially corrupted with
speckle noise have been considered in simulations for this research. Visual and quantitative
analysis of simulation results presents significant improvement by the proposed schemes as
compared to state-of-the art image denoising and image enhancement techniques.