Publication | Open Access
Learning Membership Functions in a Function-Based Object Recognition System
12
Citations
11
References
1995
Year
Artificial IntelligenceEngineeringMachine LearningObject CategorizationLearning AlgorithmRecognition SystemMembership FunctionsImage AnalysisMembership FunctionData ScienceData MiningPattern RecognitionVision RecognitionSymbolic LearningMachine VisionFeature LearningKnowledge DiscoveryComputer ScienceMedical Image ComputingComputer VisionObject RecognitionLearning Classifier System
Functionality-based recognition systems recognize objects at the category level by reasoning about how well the objects support the expected function. Such systems naturally associate a ``measure of goodness'' or ``membership value'' with a recognized object. This measure of goodness is the result of combining individual measures, or membership values, from potentially many primitive evaluations of different properties of the object's shape. A membership function is used to compute the membership value when evaluating a primitive of a particular physical property of an object. In previous versions of a recognition system known as Gruff, the membership function for each of the primitive evaluations was hand-crafted by the system designer. In this paper, we provide a learning component for the Gruff system, called Omlet, that automatically learns membership functions given a set of example objects labeled with their desired category measure. The learning algorithm is generally applicable to any problem in which low-level membership values are combined through an and-or tree structure to give a final overall membership value.
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