Anomaly Detection in a Digital Video Broadcasting System Using Timed Automata

24 May 2017  ·  Xiaoran Liu, Qin Lin, Sicco Verwer, Dmitri Jarnikov ·

This paper focuses on detecting anomalies in a digital video broadcasting (DVB) system from providers' perspective. We learn a probabilistic deterministic real timed automaton profiling benign behavior of encryption control in the DVB control access system. This profile is used as a one-class classifier. Anomalous items in a testing sequence are detected when the sequence is not accepted by the learned model.

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