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USF Tampa Graduate Theses and Dissertations

1998

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Knowledge-Guided Processing Of Magnetic Resonance Images Of The Brain, Matthew C. Clark May 1998

Knowledge-Guided Processing Of Magnetic Resonance Images Of The Brain, Matthew C. Clark

USF Tampa Graduate Theses and Dissertations

This dissertation presents a knowledge-guided expert system that is capable of applying routinesfor multispectral analysis, (un)supervised clustering, and basic image processing to automatically detect and segment brain tissue abnormalities, and then label glioblastoma-multiforme brain tumors in magnetic resonance volumes of the human brain. The magnetic resonance images used here consist of three feature images (T1-weighted, proton density, T2-weighted) and the system is designed to be independent of a particular scanning protocol. Separate, but contiguous 2D slices in the transaxial plane form a brain volume. This allows complete tumor volumes to be measured and if repeat scans are taken over time, …


An Application Of Artificial Neural Networks In Freeway Incident Detection, Sujeeva A. Weerasuriya Jan 1998

An Application Of Artificial Neural Networks In Freeway Incident Detection, Sujeeva A. Weerasuriya

USF Tampa Graduate Theses and Dissertations

Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. With the objective of reducing these traffic delays, traffic operation managers are focusing on detecting incident conditions and dispatching emergency management teams to the scene quickly. During the past few decades, a few number of conventional algorithms and artificial neural network models were proposed to automate the process of detecting incident conditions on freeways. These algorithms and models, known as automatic incident detection methods (AIDM), have experienced a varying degree of detection capability.

Of these AIDMs, artificial neural network-based approaches have illustrated better detection performance …