Safety-Aware Hardening of 3D Object Detection Neural Network Systems

25 Mar 2020Chih-Hong Cheng

We study how state-of-the-art neural networks for 3D object detection using a single-stage pipeline can be made safety aware. We start with the safety specification (reflecting the capability of other components) that partitions the 3D input space by criticality, where the critical area employs a separate criterion on robustness under perturbation, quality of bounding boxes, and the tolerance over false negatives demonstrated on the training set... (read more)

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