MIRACLE at ImageCLEFanot 2007: Machine Learning Experiments on Medical Image Annotation

نویسندگان

  • Sara Lana-Serrano
  • Julio Villena-Román
  • José Carlos González
  • José Miguel Goñi-Menoyo
چکیده

FIRE is used as a black-box algorithm to extract different groups of image features that are later used for training different classifiers in order to predict the IRMA code. Three types of classifiers are built. The first type is a single classifier that predicts the complete IRMA code. The second type is a two level classifier composed of four classifiers that individually predict each axis of the IRMA code. The third type is similar to the second one but predicts a combined pair of axes. The main idea behind the definition of our experiments is to evaluate whether an axis-by-axis prediction is better than a prediction by pairs of axes or the complete code, or vice versa.

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تاریخ انتشار 2007