Noise Reduction in MRI Images
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Abstract
Real world signals usually contain departures from the ideal signal that would be
produced by our model of the signal production process. Such departures are referred
to as noise. Noise arises as a result of unmodelled processes going on in the
production and capture of the real signal. It is not part of the ideal signal and may be
caused by a wide range of sources, e.g. variations in the detector sensitivity,
environmental variations, the discrete nature of radiation, transmission or quantization
errors, etc. It is also possible to treat irrelevant scene details as if they are image noise.
The characteristics of noise depend on its source, as does the operator which best
reduces its effects.
In this study, we have tried to analyze the different types of noises present in MRI
images and to filter these noises using different digital filters. In the given figure, we
added poisson, salt & pepper, speckle, Gaussian, additive Gaussian and multiplicative
Gaussian noise. In the present study, we quantitatively establish the use of various
parameters which helps in analysing the filter performance that are otherwise difficult
to determine by other classical methods of image processing.
This study investigates which type of filter removes or reduces which noise properly
and if combination of filters are used then which type of filters give the desired
results. The present study focuses on max, min, median, cumulative mean, bilateral
and Gaussian filter. The parameters which determine the filter performance are
PSNR, WPSNR, Correlation, SNR.
Description
Master of Engineering
in
Electronic Instrumentation and Control
