Recognition Framework for Inferring Activities of Daily Living Based on Pattern Mining

Ambient assisted living applications are very much dependent on robust activity recognition frameworks, which allow these applications to provide services based on the contextual information that has been discovered. Existing frameworks have generally focused on the application of traditional classifiers and semantics reasoning to recognize activities. Nevertheless, being able to recognize unexpected actions remains a challenge. The work in this paper presents an approach that is able to recognize activities that have been conducted in an unordered manner. The recognition framework extends an existing approach that recognizes activities by exploiting the different levels of abstraction within an activity. A frequent pattern mining algorithm has been applied to the recognition framework in order to find patterns within the stream of captured events, which in turn increases the adaptive learning ability of the proposed recognition framework. This paper also presents experimental results that validate the recognition ability of the recognition framework. The motivation of this work is to be able to detect the functional decline among elderly people suffering from Alzheimer’s disease by recognizing their daily activities.

[1]  Ling Bao,et al.  Activity Recognition from User-Annotated Acceleration Data , 2004, Pervasive.

[2]  Shengrui Wang,et al.  A Frequent Pattern Mining Approach for ADLs Recognition in Smart Environments , 2011, 2011 IEEE International Conference on Advanced Information Networking and Applications.

[3]  John Bigham,et al.  Activity recognition using a hierarchical framework , 2008, Pervasive 2008.

[4]  Mohammed J. Zaki Scalable Algorithms for Association Mining , 2000, IEEE Trans. Knowl. Data Eng..

[5]  Christian Borgelt,et al.  EFFICIENT IMPLEMENTATIONS OF APRIORI AND ECLAT , 2003 .

[6]  Kathryn Ziegler-Graham,et al.  Forecasting the global burden of Alzheimer’s disease , 2007, Alzheimer's & Dementia.

[7]  Yuval Shahar,et al.  AsbruView: Capturing Complex, Time-Oriented Plans - Beyond Flow Charts , 2002, Diagrammatic Representation and Reasoning.

[8]  K. J. Miller,et al.  Smart-Home Technologies to Assist Older People to Live Well at Home , 2013 .

[9]  Jian Lu,et al.  A Pattern Mining Approach to Sensor-Based Human Activity Recognition , 2011, IEEE Transactions on Knowledge and Data Engineering.

[10]  O. Gemikonakli,et al.  A Framework to Recognise Daily Life Activities with Wireless Proximity and Object Usage Data , 2012 .

[11]  Qiang Yang,et al.  CIGAR: Concurrent and Interleaving Goal and Activity Recognition , 2008 .

[12]  Henry A. Kautz,et al.  Fine-grained activity recognition by aggregating abstract object usage , 2005, Ninth IEEE International Symposium on Wearable Computers (ISWC'05).

[13]  Diane J. Cook,et al.  Human Activity Recognition and Pattern Discovery , 2010, IEEE Pervasive Computing.

[14]  John Bigham,et al.  Activity recognition in the home using a hierarchal framework with object usage data , 2009, J. Ambient Intell. Smart Environ..

[15]  Jian Lu,et al.  epSICAR: An Emerging Patterns based approach to sequential, interleaved and Concurrent Activity Recognition , 2009, 2009 IEEE International Conference on Pervasive Computing and Communications.