Hierarchical generalized context inference or context-aware smart homes

Human activity is among the critical information for a context-aware smart home since knowing what activities are undertaken is important for providing appropriate services. Most of the prior works primarily focus on recognizing individual activity, thus requiring high cost to track people and performs not well when there are multiple users, which is common in a real home environment. Therefore, we propose hierarchical generalized context inference to infer multi-user contexts. By treating a multi-user context as a generalized context caused by an aggregated entity, our approach generalizes these multi-user contexts with different information granularity, and then dynamically infers and aggregates these generalized contexts. Based on the inference results of generalized contexts, a context-aware smart home can provide appropriate services as much as possible. Our experimental results demonstrate the effectiveness of the proposed approach.

[1]  Youtian Du,et al.  Recognizing Interaction Activities using Dynamic Bayesian Network , 2006, 18th International Conference on Pattern Recognition (ICPR'06).

[2]  Samy Bengio,et al.  Automatic analysis of multimodal group actions in meetings , 2005, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[3]  Jian Lu,et al.  Mining Emerging Patterns for recognizing activities of multiple users in pervasive computing , 2009, 2009 6th Annual International Mobile and Ubiquitous Systems: Networking & Services, MobiQuitous.

[4]  Rama Chellappa,et al.  "Shape Activity": a continuous-state HMM for moving/deforming shapes with application to abnormal activity detection , 2005, IEEE Transactions on Image Processing.

[5]  Christopher G. Atkeson,et al.  Simultaneous Tracking and Activity Recognition (STAR) Using Many Anonymous, Binary Sensors , 2005, Pervasive.

[6]  Alex Pentland,et al.  Coupled hidden Markov models for complex action recognition , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[7]  Diane J. Cook,et al.  How smart are our environments? An updated look at the state of the art , 2007, Pervasive Mob. Comput..

[8]  Li-Chen Fu,et al.  Robust Location-Aware Activity Recognition Using Wireless Sensor Network in an Attentive Home , 2009, IEEE Transactions on Automation Science and Engineering.

[9]  Tong Zhang,et al.  Fall Detection by Wearable Sensor and One-Class SVM Algorithm , 2006 .

[10]  Jennifer Healey,et al.  A Long-Term Evaluation of Sensing Modalities for Activity Recognition , 2007, UbiComp.