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Uso de SSIM como índice de calidad de imagen médica

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2009-06-10
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El objetivo de este trabajo ha sido estudiar el comportamiento del Índice de Similitud Estructural (SSIM) , en su versión Índice de Correlación Cruzada de Similitud Estructural Multiescala (R*) en la evaluación de imágenes médicas. Este modelo se basa en la hipótesis de que el sistema visual humano está muy adaptado para extraer información estructural de las imágenes, de tal forma que una medida de la información estructural puede dar una buena aproximación de la calidad de imagen percibida.
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