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Normalizing Flow based Feature Synthesis for Outlier-Aware Object Detection

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WorkingPaper, (Feb 1, 2023)
DOI: 10.48550/arXiv.2302.07106

Abstract

Real-world deployment of reliable object detectors is crucial for applications such as autonomous driving. However, general-purpose object detectors like Faster R-CNN are prone to providing overconfident predictions for outlier objects. Recent outlier-aware object detection approaches estimate the density of instance-wide features with class-conditional Gaussians and train on synthesized outlier features from their low-likelihood regions. However, this strategy does not guarantee that the synthesized outlier features will have a low likelihood according to the other class-conditional Gaussians. We propose a novel outlier-aware object detectio…(more)

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