People counting and occupancy sensor systems are used in diverse smart building applications like lighting controls, HVAC controls and workspace management. Anomalies in people counting and occupancy sensor data can… Click to show full abstract
People counting and occupancy sensor systems are used in diverse smart building applications like lighting controls, HVAC controls and workspace management. Anomalies in people counting and occupancy sensor data can result in undesirable application behavior. We address the problem of anomaly classification of sensor data using 3-class random forest classifiers in this work. We specifically consider sensor deployment scenarios where sensor fields-of-view may overlap. Depending on the sensor type, we devise signal features in time, frequency and spatio-temporal domains. The proposed random forest classifiers are evaluated using people counting and binary occupancy sensor data in an office environment, and are shown to have higher true positive rate and a lower false positive rate in comparison to an unsupervised ${k}$ -means method and a random forest classifier with a single signal energy feature.
               
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