Activity Recognition and Activity Level Estimation for Context-Based Prompting System of Mild Cognitive Impairment Patients

The number of elderly people, who are unable to live independently and need assistance due to cognitive impairment, will rise rapidly in the aging society. To assist the independent living of these individuals and decrease the caregiver burden have become an important public health concern in the future. Mild Cognitive Impairment (MCI) is an intermediate state between normal cognitive function and dementia. The symptoms of MCI include difficulty remembering recent events or recently acquired information, depression and anxiety. MCI also increases the fall risk and affects patients’ social function and behavior. Sufficient physical activities can improve health of brain and reduce the risk of MCI. Since the context-aware computing technologies for assisting living have gained great popularity. We proposed a context-based activity prompting system to improve quality of life for MCI patients. The proposed system utilizes a smart phone as a sensor device to transmit sensing data to cloud server for activity recognition and activity level estimation, and uses context-based technique to provide activity prompting message to MCI patients. The activity prompting service supplies the activities self-management for MCI patients and helps them living independently. The system also provides real time fall detection mechanism to shorten the rescue time when accident happened. The experimental results have demonstrated that the proposed system achieves high accuracy on activity recognition and activity level estimation.

[1]  Kenneth Meijer,et al.  Activity identification using body-mounted sensors—a review of classification techniques , 2009, Physiological measurement.

[2]  Hans Förstl,et al.  Physical activity and incident cognitive impairment in elderly persons: the INVADE study. , 2010, Archives of internal medicine.

[3]  Katarzyna Wac,et al.  Phone in the Pocket: Pervasive Self-Tracking of Physical Activity Levels , 2012, AAAI Spring Symposium: Self-Tracking and Collective Intelligence for Personal Wellness.

[4]  David Andre,et al.  Recent Advances in Free-Living Physical Activity Monitoring: A Review , 2007, Journal of diabetes science and technology.

[5]  U. Ekelund,et al.  Global physical activity levels: surveillance progress, pitfalls, and prospects , 2012, The Lancet.

[6]  K. Ottenbacher,et al.  The effects of exercise training on elderly persons with cognitive impairment and dementia: a meta-analysis. , 2004, Archives of physical medicine and rehabilitation.

[7]  Nigel H. Lovell,et al.  Implementation of a real-time human movement classifier using a triaxial accelerometer for ambulatory monitoring , 2006, IEEE Transactions on Information Technology in Biomedicine.

[8]  Michael Vassallo,et al.  Fall risk factors in elderly patients with cognitive impairment on rehabilitation wards , 2009, Geriatrics & gerontology international.

[9]  Ilias Tachtsidis,et al.  Estimating a modified Grubb's exponent in healthy human brains with near infrared spectroscopy and transcranial Doppler , 2009, Physiological measurement.