Abstract:
This research work addresses a major denoising problem in Magnetic Resonance
(MR) Images. Magnetic Resonance Imaging (MRI) is a powerful and e ective di-
agnostic tool in basic research, clinical investigation, and disease diagnosis since it
provides both chemical and physiological information about the tissue. MR Images
are a ected by Rician noise during acquisition phase which decreases the image
quality, image analysis and becomes di cult to diagnose it accurately. This thesis
is an attempt to suppress low and high categories of Rician noise from MR data
in such a manner to enhance the diagnostically relevant image content. Supervised
and unsupervised ltering techniques are applied to suppress the Rician noise hence
improving its quality for diagnostic process. A new supervised ltering model, based
on genetic programming (GP), is proposed that evolves an optimal composite mor-
phological supervised lter (FOCMSF ) by combining the gray-scale mathematical
morphological operators. (FOCMSF ) is evolved through evaluating the tness of sev-
eral individuals over certain number of generations. The proposed method does not
need any prior information about the noise variance.
In the domain of unsupervised ltering, three techniques are proposed. These
are collaborative techniques based on statistical and fuzzy logic. Fuzzy similarity
based non local means lter (FSNLM) is designed to non-locally search out similar
and non-similar regions of a noisy pixel. Fuzzy weights are assigned to these regions
on the base of similarity. Then the noisy pixel is replaced with the fuzzy weighted
average of these regions. Another hybrid lter is proposed that combines FSNLM
and local order statistical lters to suppress Rician noise. This hybrid lter uses the
strengths of non-local and local lters and adaptively calculates the fuzzy weighted
estimation of the noisy pixels. Another non local fuzzy weighted Enhanced LMMSE
(Linear Minimum Mean Square Estimator) is designed. The aim of this approach
is to handle adaptively the low and high levels of variation of Rician noise and to
estimate a closed-form of Rician distributed signal. It estimates the noise free pixel
value based on similarity of the non-local neighborhood pixels around a window of
certain prede ned radius. Similarity is computed using fuzzy logic approach which
is served as fuzzy weights in enhanced LMMSE module for accurate estimation of
noise free pixel value.
The proposed schemes handle the problem with better accuracy than several
well known ltering schemes NLM, LMMSE, Wavelet based techniques etc. and
therefore can be considered as original contribution of this research work. The pro-
posed schemes handle the problem of Rician noise at low and high noise variances
on smooth as well as detailed regions where existing methods fail due to multifar-
ious nature of this noise. The improved performance of the developed lters are
investigated using the standard MRI dataset and its performance is compared with
previously proposed state-of-the art methods. Detailed experimentation has been
performed using simulated and real datasets based on well known quantitative mea-
sures. Comparative analysis demonstrates the superiority of the proposed schemes
over the existing techniques.