Título
Automatic mapping magnetic resonance images into multimedia database using SIFT
Autor
JENNIFER LYNN REYNOSO MUÑOZ
ALMA DELIA CUEVAS RASGADO
Farid García Lamont
ADOLFO GUZMAN ARENAS
Nivel de Acceso
Acceso Abierto
Materias
Resumen o descripción
This paper focuses on the representation of magnetic resonances of different parts of the human body, such as knees, spinal column, arms, elbows, etc., using ontologies. First, it maps the resonance images in a multimedia database. Then, automatically, using the SIFT pattern recognition algorithm, descriptors of the images stored in the database are extracted in order to recover useful data for the user; it uses the ontologies as an artificial intelligence tool and, in consequence, reduces generation of useless data. Why do we think this is an interesting task? Because, if the user requires information about any topics or (s)he has some illness or needs to undergo magnetic resonance, this tool will show him/her images and text to convey a better understanding, helping to obtain useful conclusions. Artificial intelligence techniques are used, such as machine learning, knowledge representation, and pattern recognition. The ontological relations introduced here are based on the common representation of language, using definition dictionaries, Roget’s thesaurus, synonym dictionaries, and other resources. The system generates an output in the OM ontological language [1]. This language represents a structure where our system adds the data scanned by the SIFT algorithm. The tests have been made in Spanish; however, thanks to the portability of our system, it is possible to extend the method to any language.
Proyecto UAEM 3454CHT/2013
Editor
IEEE Latin America Transactions
Fecha de publicación
1 de agosto de 2015
Tipo de publicación
Artículo
Recurso de información
Fuente
1548-0992
Idioma
Español
Relación
10.1109/TLA.2015.7332153;
Audiencia
Estudiantes
Investigadores
Repositorio Orígen
REPOSITORIO INSTITUCIONAL DE LA UAEM
Descargas
460