Chockalingam, Thiyagarajan, authorRajopadhye, Sanjay, advisorAnderson, Chuck, advisorPasricha, Sudeep, committee memberBohm, Wim, committee member2007-01-032007-01-032014http://hdl.handle.net/10217/82491With the increasing number and variety of camera installations, unsupervised methods that learn typical activities have become popular for anomaly detection. In this thesis, we consider recent methods based on temporal probabilistic models and improve them in multiple ways. Our contributions are the following: (i) we integrate the low level processing and the temporal activity modeling, showing how this feedback improves the overall quality of the captured information, (ii) we show how the same approach can be taken to do hierarchical multi-camera processing, (iii) we use spatial analysis of the anomalies both to perform local anomaly detection and to frame automatically the detected anomalies. We illustrate the approach on both traffic data and videos coming from a metro station. We also investigate the application of topic models in Brain Computing Interfaces for Mental Task classification. We observe a classification accuracy of up to 68% for four Mental Tasks on individual subjects.born digitalmasters thesesengCopyright and other restrictions may apply. User is responsible for compliance with all applicable laws. For information about copyright law, please see https://libguides.colostate.edu/copyright.brain computing interfacesDirichlet priorPLSAPLSMsurveillancetopic modellingLocalized anomaly detection via hierarchical integrated activity discoveryText