Michael Dambier
Bosch
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Publication
Featured researches published by Michael Dambier.
international conference on acoustics, speech, and signal processing | 2011
Padmini Jaikumar; Aca Gacic; Burton Warren Andrews; Michael Dambier
This paper presents a robust unsupervised learning approach for detection of anomalies in patterns of human behavior using multi-modal smart environment sensor data. We model the data using a Gaussian Mixture Model, where the features are weighted based on their discriminative ability and are simultaneously clustered. The number of clusters in this approach is automatically chosen using the Minimum Message Length (MML) criterion. The weight of non-discriminative features is driven towards zero which results in a form of dimensionality reduction. Our results indicate that, in practical applications involving unlabeled, high-dimensional multi-modal sensor data from smart building environments, feature weighting achieves higher accuracy in detecting anomalous events with lower false alarm rates compared to using traditional Gaussian Mixtures.
Archive | 2009
Wolfgang Krautter; Michael Dambier; Maria Rimini-Doering; Dietrich Manstetten
Archive | 2008
Tobias Altmueller; Michael Dambier; Axel Grzesik
Archive | 2011
Christoph Noack; Michael Dambier; Tobias Altmueller
Archive | 2010
Wolfgang Krautter; Michael Dambier; Maria Rimini-Doering; Dietrich Manstetten
Archive | 2008
Michael Dambier; Gernot Haf
Archive | 2014
Roland Klinnert; Naveen Ramakrishnan; Michael Dambier; Felix Maus; Diego Benitez
Archive | 2011
Christoph Noack; Frank Beruscha; Michael Dambier; Tobias Altmueller
Archive | 2010
Christoph Noack; Michael Dambier; Tobias Altmueller
Archive | 2010
Wolfgang Krautter; Michael Dambier