Publication | Closed Access
Learning in an Uncertain World: Representing Ambiguity Through Multiple Hypotheses
174
Citations
38
References
2017
Year
Unknown Venue
Artificial IntelligenceFew-shot LearningStructured PredictionMany Prediction TasksEngineeringMachine LearningMultiple Instance LearningHuman Pose EstimationCognitionUncertain ReasoningUncertainty FormalismSocial SciencesImage AnalysisData ScienceUncertainty QuantificationPattern RecognitionDeep UncertaintyRobot LearningDecision TheoryLearning ProblemCognitive ScienceMachine VisionFeature LearningObject DetectionComputer ScienceUncertainty RepresentationDeep LearningComputer VisionUncertain WorldAutomated ReasoningEpistemologyUncertainty ManagementLinguistics
Many prediction tasks contain uncertainty. In some cases, uncertainty is inherent in the task itself. In future prediction, for example, many distinct outcomes are equally valid. In other cases, uncertainty arises from the way data is labeled. For example, in object detection, many objects of interest often go unlabeled, and in human pose estimation, occluded joints are often labeled with ambiguous values. In this work we focus on a principled approach for handling such scenarios. In particular, we propose a frame-work for reformulating existing single-prediction models as multiple hypothesis prediction (MHP) models and an associated meta loss and optimization procedure to train them. To demonstrate our approach, we consider four diverse applications: human pose estimation, future prediction, image classification and segmentation. We find that MHP models outperform their single-hypothesis counterparts in all cases, and that MHP models simultaneously expose valuable insights into the variability of predictions.
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