BayesOD: A Bayesian Approach for Uncertainty Estimation in Deep Object Detectors

Ali Harakeh1, Michael Smart2, Steven Waslander

  • 1University of Toronto
  • 2University of Waterloo

Details

09:15 - 09:30 | Mon 1 Jun | Room T3 | MoA03.1

Session: Deep Learning in Robotics and Automation I

Abstract

When incorporating deep neural networks into robotic systems, a major challenge is the lack of uncertainty measures associated with their output predictions. Methods for uncertainty estimation in the output of deep object detectors (DNNs) have been proposed in recent works, but have had limited success due to 1) information loss at the detectors non-maximum suppression (NMS) stage, and 2) failure to take into account the multitask, many-to-one nature of anchor-based object detection. To that end, we introduce BayesOD, an uncertainty estimation approach that reformulates the standard object detector inference and Non-Maximum suppression components from a Bayesian perspective. Experiments performed on four common object detection datasets show that BayesOD provides uncertainty estimates that are better correlated with the accuracy of detections, manifesting as a significant reduction of 9.77%-13.13% on the minimum Gaussian uncertainty error metric and a reduction of 1.63%-5.23% on the minimum Categorical uncertainty error metric.