Reliable Robotic Task Execution in the Face of Anomalies
Bharath Santhanam, Alex Mitrevski, Santosh Thoduka, Sebastian Houben, Teena Hassan

TL;DR
This paper introduces a framework combining learned robot policies with visual anomaly detection and recovery strategies to enhance reliability and safety during task execution in unpredictable environments.
Contribution
It presents a novel integrated approach that detects anomalies during policy execution and performs recovery actions, improving robustness in real-world robotic tasks.
Findings
Increased success rate in anomaly-prone scenarios
Effective detection of deviations and adversarial interventions
Successful transfer from simulation to real robots
Abstract
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 paper, 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…
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