Identification of Structures in Medical Images

作者: Marina de Sa Rebelo , Sergio Shiguemi , Lincoln de Assis Moura Jr , Eduardo Tavares , Marco Antonio

DOI: 10.5772/26148

关键词: Image processingField (computer science)Human–computer interactionVisualizationFocus (computing)Image (mathematics)Identification (information)Medical diagnosisComputer scienceAutomation

摘要: The development of automatic systems for medical image processing, which can effectively act as an agent to aid diagnosis, is a goal that has been pursued by researchers since the first works on field processing in 80 s. automation analysis tasks produce very interesting results such less time spent specialists, decrease intra-and inter-observer differences, second opinions non-specialists and educational systems. Any system deployed visualization images involves identification objects often relationships among them. structures research area still great challenges. In involve primarily activities calculation, computer's power incomparably higher than humans. However, recognition tasks, human brain possesses strong ability not obtained any computational system. For given scene, humans possess unique distinguish are significant and, them, those represent focus interest particular situation.

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