Reliable Robotic Task Execution in the Face of Anomalies
Journal article, 2026

Learned robot policies have consistently been shown to be versatile, but they typically have no built-in mechanism for handling the complexity of open environments, making them prone to execution failures; this implies that deploying policies without the ability to recognise and react to failures may lead to unreliable and unsafe robot behaviour. In this letter, we present a framework that couples a learned policy with a method to detect visual anomalies during policy deployment and to perform recovery behaviours when necessary, thereby aiming to prevent failures. Specifically, we train an anomaly detection model using data collected during nominal executions of a trained policy. This model is then integrated into the online policy execution process, so that deviations from the nominal execution can trigger a three-level sequential recovery process that consists of (i) pausing the execution temporarily, (ii) performing a local perturbation of the robot's state, and (iii) resetting the robot to a safe state by sampling from a learned execution success model. We verify our proposed method in two different scenarios: (i) a door handle reaching task with a Kinova Gen3 arm using a policy trained in simulation and transferred to the real robot, and (ii) an object placing task with a UFactory xArm 6 using a general-purpose policy model. Our results show that integrating policy execution with anomaly detection and recovery increases the execution success rate in environments with various anomalies, such as trajectory deviations and adversarial human interventions.

learning from experience

visual learning

failure detection and recovery

Cognitive control architectures

Author

Bharath Santhanam

Neura Robotics GmbH

Aleksandar Mitrevski

Chalmers, Electrical Engineering, Systems and control

Santosh Thoduka

Fraunhofer IAIS

Sebastian Houben

Fachhochschule Bonn-Rhein-Sieg

Fraunhofer IAIS

Teena Hassan

Fachhochschule Bonn-Rhein-Sieg

IEEE Robotics and Automation Letters

23773766 (eISSN)

Vol. 11 1 314-321

Subject Categories (SSIF 2025)

Robotics and automation

Computer Sciences

DOI

10.1109/LRA.2025.3632090

More information

Latest update

12/6/2025