Analysis and Improvement in Image Segmentation for CT Images
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Abstract
Image segmentation in medical images is a very complex task. Currently, brain diseases
are detected by imaging only after the appearance of neurological or nervous system
symptoms. Manual segmentation is a long and painful task. This method is not reliable
and error sensitive. The need for correct segmentation of the ailment is very important
for proper medications as any delay or wrong diagnosis may become fatal to the
patient. Many methods have been developed to segment tumor. In this work, we have
used Computed Tomography (CT) images for segmentation of abnormal portion. Two
techniques, modified region based active contour and hybrid level set method, have
been used in this thesis work. In the former method, the number of iterations reduced as
well as the time consumption drastically reduced. The latter method, overcomes the
problem of under segmentation as well as over segmentation.
