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SAFE: Sensitivity-Aware Features for Out-of-Distribution Object Detection

Samuel H. Wilson, Tobias Fischer, Feras Dayoub, Dimity Miller, Niko Sünderhauf

202330 citationsDOI

Abstract

We address the problem of out-of-distribution (OOD) detection for the task of object detection. We show that residual convolutional layers with batch normalisation produce Sensitivity-Aware FEatures (SAFE) that are consistently powerful for distinguishing in-distribution from out-of-distribution detections. We extract SAFE vectors for every detected object, and train a multilayer perceptron on the surrogate task of distinguishing adversarially perturbed from clean in-distribution examples. This circumvents the need for realistic OOD training data, computationally expensive generative models, or retraining of the base object detector. SAFE outperforms the state-of-the-art OOD object detectors on multiple benchmarks by large margins, e.g. reducing the FPR95 by an absolute 30.6% from 48.3% to 17.7% on the OpenImages dataset.

Topics & Concepts

Computer scienceObject (grammar)Object detectionSensitivity (control systems)Artificial intelligenceTask (project management)Pattern recognition (psychology)ResidualConvolutional neural networkDetectorGenerative modelPerceptronComputer visionData miningMachine learningGenerative grammarArtificial neural networkAlgorithmEngineeringTelecommunicationsSystems engineeringElectronic engineeringAdversarial Robustness in Machine LearningAdvanced Neural Network ApplicationsAnomaly Detection Techniques and Applications
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