Publication | Closed Access
Visual Concept Learning: Combining Machine Vision and Bayesian Generalization on Concept Hierarchies
42
Citations
20
References
2013
Year
Unknown Venue
Multiple Instance LearningEngineeringMachine LearningObject CategorizationVisual Concept LearningNatural Language ProcessingImage AnalysisVisual GroundingData ScienceData MiningPattern RecognitionVisual Question AnsweringBayesian GeneralizationHierarchical ClassificationMachine VisionAutomatic ClassificationFeature LearningVisual ConceptKnowledge DiscoveryVision Language ModelComputer ScienceDeep LearningComputer VisionBayesian Generalization ModelVisual Reasoning
Learning a visual concept from a small number of positive examples is a significant challenge for machine learning algorithms. Current methods typically fail to find the appropriate level of generalization in a concept hierarchy for a given set of visual examples. Recent work in cognitive science on Bayesian models of generalization addresses this challenge, but prior results assumed that objects were perfectly recognized. We present an algorithm for learning visual concepts directly from images, using probabilistic predictions generated by visual classifiers as the input to a Bayesian generalization model. As no existing challenge data tests this paradigm, we collect and make available a new, large-scale dataset for visual concept learning using the ImageNet hierarchy as the source of possible concepts, with human annotators to provide ground truth labels as to whether a new image is an instance of each concept using a paradigm similar to that used in experiments studying word learning in children. We compare the performance of our system to several baseline algorithms, and show a significant advantage results from combining visual classifiers with the ability to identify an appropriate level of abstraction using Bayesian generalization.
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