2020
DOI: 10.31256/wg7ap8j
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Unsupervised Anomaly Detection for Safe Robot Operations

Abstract: Faults in robot operations are risky, particularly when robots are operating in the same environment as humans.Early detection of such faults is necessary to prevent further escalation and endangering human life. However, due to sensor noise and unforeseen faults in robots, creating a model for fault prediction is difficult. Existing supervised data-driven approaches rely on large amounts of labelled data for detecting anomalies, which is impractical in real applications. In this paper, we present an unsupervi… Show more

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