Publication | Closed Access
Unknown-Aware Object Detection: Learning What You Don't Know from Videos in the Wild
66
Citations
45
References
2022
Year
Scene AnalysisImage AnalysisMachine VisionData ScienceMachine LearningPattern RecognitionObject DetectionObject RecognitionReliable Object DetectorsOod ObjectsEngineeringComputer ScienceVideo UnderstandingUnknown-aware Object DetectionDeep LearningVideo TransformerVideo InterpretationComputer Vision
Building reliable object detectors that can detect out-of-distribution (OOD) objects is critical yet underexplored. One of the key challenges is that models lack supervision signals from unknown data, producing over-confident predictions on OOD objects. We propose a new unknown-aware object detection framework through Spatial-Temporal Unknown Distillation (STUD), which dis-tills unknown objects from videos in the wild and meaningfully regularizes the model's decision boundary. STUD first identifies the unknown candidate object proposals in the spatial dimension, and then aggregates the candidates across multiple video frames to form a diverse set of unknown objects near the decision boundary. Along-side, we employ an energy-based uncertainty regularization loss, which contrastively shapes the uncertainty space between the in-distribution and distilled unknown objects. STUD establishes the state-of-the-art performance on OOD detection tasks for object detection, reducing the FPR95 score by over 10% compared to the previous best method. Code is available at https://github.com/deep/earning-wisc/stud.
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