BAM: Box Abstraction Monitors for Real-time OoD Detection in Object Detection
Paper in proceeding, 2024

Out-of-distribution (OoD) detection techniques for deep neural networks (DNNs) become crucial thanks to their filtering of abnormal inputs, especially when DNNs are used in safety-critical applications and interact with an open and dynamic environment. Nevertheless, integrating OoD detection into state-of-the-art (SOTA) object detection DNNs poses significant challenges, partly due to the complexity introduced by the SOTA OoD construction methods, which require the modification of DNN architecture and the introduction of complex loss functions. This paper proposes a simple, yet surprisingly effective, method that requires neither retraining nor architectural change in object detection DNN, called Box Abstraction-based Monitors (BAM). The novelty of BAM stems from using a finite union of convex box abstractions to capture the learned features of objects for in-distribution (ID) data, and an important observation that features from OoD data are more likely to fall outside of these boxes. The union of convex regions within the feature space allows the formation of non-convex and interpretable decision boundaries, overcoming the limitations of VOS-like detectors without sacrificing real-time performance. Experiments integrating BAM into Faster R-CNN-based object detection DNNs demonstrate a considerably improved performance against SOTA OoD detection techniques, with a reduction in the false detection rate of over 10% in most cases.

out-of-distribution

object detection

Author

Changshun Wu

Grenoble Alpes University

Weicheng He

Grenoble Alpes University

Chih-Hong Cheng

Software Engineering 2

Xiaowei Huang

University of Liverpool

Saddek Bensalem

Grenoble Alpes University

IEEE International Conference on Intelligent Robots and Systems

21530858 (ISSN) 21530866 (eISSN)

2632-2638
979-8-3503-7770-5 (ISBN)

2024 IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2024
Abu Dhabi, United Arab Emirates,

Subject Categories (SSIF 2025)

Computer and Information Sciences

DOI

10.1109/IROS58592.2024.10801584

More information

Latest update

2/12/2025