Publication | Closed Access
Joint multi-label multi-instance learning for image classification
220
Citations
18
References
2008
Year
Unknown Venue
Artificial IntelligenceInstance-based LearningMultiple Instance LearningMachine VisionImage AnalysisData ScienceMachine LearningPattern RecognitionEngineeringFeature LearningImage ClassificationFusion LearningComputer ScienceReal WorldMsr CambridgeDeep LearningSemi-supervised LearningComputer Vision
In real world, an image is usually associated with multiple labels which are characterized by different regions in the image. Thus image classification is naturally posed as both a multi-label learning and multi-instance learning problem. Different from existing research which has considered these two problems separately, we propose an integrated multi-label multi-instance learning (MLMIL) approach based on hidden conditional random fields (HCRFs), which simultaneously captures both the connections between semantic labels and regions, and the correlations among the labels in a single formulation. We apply this MLMIL framework to image classification and report superior performance compared to key existing approaches over the MSR Cambridge (MSRC) and Corel data sets.
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