An Outlier Exposure Approach to Improve Visual Anomaly Detection Performance for Mobile Robots
We consider the problem of building visual anomaly detection systems for mobile robots. Standard anomaly detection models are trained using large datasets composed only of non-anomalous data. However, in robotics applications, it is often the case that (potentially very few) examples of anomalies ar...
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creator | Mantegazza, Dario Giusti, Alessandro Gambardella, Luca Maria Guzzi, Jérôme |
description | We consider the problem of building visual anomaly detection systems for mobile robots. Standard anomaly detection models are trained using large datasets composed only of non-anomalous data. However, in robotics applications, it is often the case that (potentially very few) examples of anomalies are available. We tackle the problem of exploiting these data to improve the performance of a Real-NVP anomaly detection model, by minimizing, jointly with the Real-NVP loss, an auxiliary outlier exposure margin loss. We perform quantitative experiments on a novel dataset (which we publish as supplementary material) designed for anomaly detection in an indoor patrolling scenario. On a disjoint test set, our approach outperforms alternatives and shows that exposing even a small number of anomalous frames yields significant performance improvements. |
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subjects | Anomalies Computer Science - Artificial Intelligence Computer Science - Computer Vision and Pattern Recognition Computer Science - Robotics Data analysis Datasets Exposure Outliers (statistics) Performance enhancement Robotics Robots |
title | An Outlier Exposure Approach to Improve Visual Anomaly Detection Performance for Mobile Robots |
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