Can We Trust You? On Calibration of a Probabilistic Object Detector for Autonomous Driving
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Reliable uncertainty estimation is crucial for perception systems in safe autonomous driving. Recently, many methods have been proposed to model uncertainties in deep learning based object detectors. However, the estimated probabilities are often uncalibrated, which may lead to severe problems in safety critical scenarios. In this work, we identify such uncertainty miscalibration problems in a probabilistic LiDAR 3D object detection network, and propose three practical methods to significantly reduce errors in uncertainty calibration. Extensive experiments on several datasets show that our methods produce well-calibrated uncertainties, and generalize well between different datasets.
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Instance-Level Post Hoc Uncertainty Quantification in Object Detection
Proposes MC-GLM to deliver instance-level post-hoc uncertainty for object detectors via Laplace approximation plus constant-cost Monte Carlo sampling.
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