Publication | Closed Access
Inferring Spatial Uncertainty in Object Detection
22
Citations
29
References
2020
Year
Unknown Venue
EngineeringMachine LearningSpatial UncertaintyPoint Cloud ProcessingPoint CloudLocalization3D Computer VisionImage AnalysisData SciencePattern RecognitionUncertainty QuantificationSpatial DistributionRobot LearningMachine VisionObject DetectionJaccard IouComputer ScienceDeep Learning3D Object RecognitionComputer VisionSpatial VerificationObject RecognitionObject Detection Methods
The availability of real-world datasets is the prerequisite for developing object detection methods for autonomous driving. While ambiguity exists in object labels due to error-prone annotation process or sensor observation noises, current object detection datasets only provide deterministic annotations without considering their uncertainty. This precludes an in-depth evaluation among different object detection methods, especially for those that explicitly model predictive probability. In this work, we propose a generative model to estimate bounding box label uncertainties from LiDAR point clouds, and define a new representation of the probabilistic bounding box through spatial distribution. Comprehensive experiments show that the proposed model represents uncertainties commonly seen in driving scenarios. Based on the spatial distribution, we further propose an extension of IoU, called the Jaccard IoU (JIoU), as a new evaluation metric that incorporates label uncertainty. Experiments on the KITTI and the Waymo Open Datasets show that JIoU is superior to IoU when evaluating probabilistic object detectors.
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