Abstract
This paper describes a project to compare two feature classification algorithms used in activity recognition in relation to accelerometer and heart rate data. Data was collected from six male and female subjects using a single tri-axial accelerometer and heart monitor attached to each subject’s dominant thigh. Subjects carried out eight activities and the data was labelled semi-automatically. Features (mean, standard deviation, energy, correlation and mean heart rate) were extracted from the data using a window of 256 (3.4 seconds) and an overlap of 50%. Two classifers, k-NN and J48, were evaluated for activity recognition with 10-fold validation with k-NN (k = 1) achieving a better overall score of 90.07%.
| Original language | English |
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| DOIs | |
| Publication status | Published - 2009 |
| Externally published | Yes |
| Event | 9th IT & T Conference - Dublin, Ireland Duration: 22 Oct 2009 → 23 Oct 2009 |
Conference
| Conference | 9th IT & T Conference |
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| Country/Territory | Ireland |
| City | Dublin |
| Period | 22/10/09 → 23/10/09 |
Keywords
- feature classification
- activity recognition
- accelerometer
- heart rate data
- k-NN
- J48