19 research outputs found
Smoothing FMRI Data Using an Adaptive Wiener Filter
The analysis of fMRI allows mapping the brain and identifying brain
regions activated by a particular task. Prior to the analysis, several steps are carried
out to prepare the data. One of these is the spatial smoothing whose aim is
to eliminate the noise which can cause errors in the analysis. The most common
method to perform this is by using a Gaussian filter, in which the extent of
smoothing is assumed to be equal across the image. As a result some regions
may be under-smoothed, while others may be over-smoothed. Thus, we suggest
smoothing the images adaptively using a Wiener filter which allows varying the
extent of smoothing according to the changing characteristics of the image.
Therefore, we compared the effects of the smoothing with a wiener filter and
with a Gaussian Kernel. In general, the results obtained with the adaptive filter
were better than those obtained with the Gaussian filter