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A feature combination approach for the detection of early morning bathroom activities with wireless sensors
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International Conference On Mobile Systems, Applications And Services archive
Proceedings of the 1st ACM SIGMOBILE international workshop on Systems and networking support for healthcare and assisted living environments table of contents
San Juan, Puerto Rico
POSTER SESSION: Research posters table of contents
Pages: 61 - 63  
Year of Publication: 2007
ISBN:978-1-59593-767-4
Authors
Nuri F. Ince  University of Minnesota
Cheol-Hong Min  University of Minnesota
Ahmed H. Tewfik  University of Minnesota
Sponsors
ACM: Association for Computing Machinery
SIGMOBILE: ACM Special Interest Group on Mobility of Systems, Users, Data and Computing
Publisher
ACM  New York, NY, USA
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ABSTRACT

In this paper we investigate the use of wearable accelerometers and wireless home sensors for the detection of early morning daily activities to assist people with cognitive impairments. In particular we focus on the detection of brushing, washing face and shaving activities by using a wireless accelerometer sensor attached to the right wrist of the subjects to collect the hand movement data. We extracted time and frequency domain features of the accelerometer data for activity recognition. In order to compare the efficiency of different frequency domain features, we used fast Fourier transform and autoregressive modeling. The extracted time and frequency domain features are input to an ensemble of Gaussian mixture models (GMM) which represent individual activities we focus on. Finally, they are post processed by a finite state machine for classification. We show promising experimental results from 7 subjects while completing washing face, shaving and brushing activities. The proposed system achieved 93.5%, 92.5% and 95.6% classification accuracy in the recognition of these three tasks respectively.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
National Center for Injury Control and Prevention, http://www.cdc.gov/ncipc/tbi/TBI.htm. 2006.
 
2
Levinson, R. The Planning and Execution Assistant and Trainer. Journal of Head Trauma Rehabilitation, April, Aspen Press, 1997.
 
3
Ince, N. F., Min, C. -H. and Tewfik, A. H. Integration of Wearable Wireless Sensors and Static Home Sensors to Monitor the Activities of Daily Living. IEEE MDBS Symposium, MIT, Boston, 2006. http://www.ece.umn.edu/users/firat/
 
4
Ince, N. F., Min, C. -H. and Tewfik, A. H. In-Home Assistive System for Traumatic Brain Injury Patients. Proceedings of the IEEE International Conference on Acoustics, Speech, and Signal Processing, 2007.
 
5
Lester, J., Choudhury, T., Kern, N., Borriello, G. and Hannaford, B. A Hybrid Discrimitive/Generative Approach for Modeling Human Activities, International Joint Conference on Artificial Intelligence, 2005, pp. 766--772.

Collaborative Colleagues:
Nuri F. Ince: colleagues
Cheol-Hong Min: colleagues
Ahmed H. Tewfik: colleagues