Title :
Wearable Sensor-Based Behavioral Anomaly Detection in Smart Assisted Living Systems
Author :
Chun Zhu ; Weihua Sheng ; Meiqin Liu
Author_Institution :
Microsoft Corp., Sunnyvale, CA, USA
Abstract :
Detecting behavioral anomalies in human daily life is important to developing smart assisted-living systems for elderly care. Based on data collected from wearable motion sensors and the associated locational context, this paper presents a coherent anomaly detection framework to effectively detect different behavioral anomalies in human daily life. Four types of anomalies, including spatial anomaly, timing anomaly, duration anomaly, and sequence anomaly, are detected using a probabilistic theoretical framework. This framework is based on complex activity recognition using dynamic Bayesian network modeling. The maximum-likelihood estimation algorithm and Laplace smoothing are used in learning the parameters in the anomaly detection model. We conducted experimental evaluation in a mock apartment environment, and the results verified the effectiveness of the proposed framework. We expect that this behavioral anomaly detection system can be integrated into future smart homes for elderly care.
Keywords :
assisted living; maximum likelihood estimation; sensors; wearable computers; Laplace smoothing; complex activity recognition; duration anomaly; dynamic Bayesian network modeling; elderly care; locational context; maximum likelihood estimation algorithm; mock apartment environment; probabilistic theoretical framework; sequence anomaly; smart assisted living system; smart homes; spatial anomaly; timing anomaly; wearable motion sensors; wearable sensor-based behavioral anomaly detection; Assisted living; Intelligent sensors; Robot sensing systems; Smart homes; Wearable sensors; Anomaly detection; assisted living; smart home; wearable computing;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2015.2474743