Litcius/Paper detail

Safe Robot Navigation Via Multi-Modal Anomaly Detection

Lorenz Wellhausen, Rene Ranftl, Marco Hutter

2020IEEE Robotics and Automation Letters81 citationsDOIOpen Access PDF

Abstract

Navigation in natural outdoor environments requires a robust and reliable traversability classification method to handle the plethora of situations a robot can encounter. Binary classification algorithms perform well in their native domain but tend to provide overconfident predictions when presented with out-of-distribution samples, which can lead to catastrophic failure when navigating unknown environments. We propose to overcome this issue by using anomaly detection on multi-modal images for traversability classification, which is easily scalable by training in a self-supervised fashion from robot experience. In this work, we evaluate multiple anomaly detection methods with a combination of uni- and multi-modal images in their performance on data from different environmental conditions. Our results show that an approach using a feature extractor and normalizing flow with an input of RGB, depth and surface normals performs best. It achieves over 95% area under the ROC curve and is robust to out-of-distribution samples.

Topics & Concepts

Anomaly detectionArtificial intelligenceComputer scienceRobotComputer visionFeature (linguistics)ExtractorFeature extractionDomain (mathematical analysis)Pattern recognition (psychology)ScalabilityImage (mathematics)Image segmentationOutlierRobustness (evolution)Anomaly (physics)Object detectionTraining setBinary classificationData miningStability (learning theory)Fault detection and isolationAnomaly Detection Techniques and ApplicationsRobotics and Sensor-Based LocalizationRobotic Path Planning Algorithms
Safe Robot Navigation Via Multi-Modal Anomaly Detection | Litcius