Registration-based Fuzzy Segmentation of MRI Head Images
نویسندگان
چکیده
A hybrid medical image segmentation framework (concentrating mainly on Magnetic Resonance Imaging and Computed Tomography head images) making use of information theory methods (image entropy, mutual-information-based registration), fuzzy logic and elements of atlas-based techniques is presented in the report. Information theory provides a way to create highly automated systems, while fuzzy logic gives a mathematical representation of expert knowledge.
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