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arxiv: 1807.06945 · v1 · pith:2SPZ5C66new · submitted 2018-07-02 · 📡 eess.SP · cs.LG· stat.ME· stat.ML

Cyclostationary Statistical Models and Algorithms for Anomaly Detection Using Multi-Modal Data

classification 📡 eess.SP cs.LGstat.MEstat.ML
keywords proposedalgorithmsdatacyclostationarydetectmodelmulti-modalanomalies
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A framework is proposed to detect anomalies in multi-modal data. A deep neural network-based object detector is employed to extract counts of objects and sub-events from the data. A cyclostationary model is proposed to model regular patterns of behavior in the count sequences. The anomaly detection problem is formulated as a problem of detecting deviations from learned cyclostationary behavior. Sequential algorithms are proposed to detect anomalies using the proposed model. The proposed algorithms are shown to be asymptotically efficient in a well-defined sense. The developed algorithms are applied to a multi-modal data consisting of CCTV imagery and social media posts to detect a 5K run in New York City.

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