Litcius/Paper detail

Using Visual Anomaly Detection for Task Execution Monitoring

Santosh Thoduka, Jüergen Gall, Paul G. Plöger

20212021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)10 citationsDOIOpen Access PDF

Abstract

Execution monitoring is essential for robots to detect and respond to failures. Since it is impossible to enumerate all failures for a given task, we learn from successful executions of the task to detect visual anomalies during runtime. Our method learns to predict the motions that occur during the nominal execution of a task, including camera and robot body motion. A probabilistic U-Net architecture is used to learn to predict optical flow, and the robot’s kinematics and 3D model are used to model camera and body motion. The errors between the observed and predicted motion are used to calculate an anomaly score. We evaluate our method on a dataset of a robot placing a book on a shelf, which includes anomalies such as falling books, camera occlusions, and robot disturbances. We find that modeling camera and body motion, in addition to the learning-based optical flow prediction, results in an improvement of the area under the receiver operating characteristic curve from 0.752 to 0.804, and the area under the precision-recall curve from 0.467 to 0.549.

Topics & Concepts

Computer scienceAnomaly detectionTask (project management)Anomaly (physics)Real-time computingArtificial intelligenceEngineeringSystems engineeringPhysicsCondensed matter physicsAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques
Using Visual Anomaly Detection for Task Execution Monitoring | Litcius