Title :
Decision-tree-based human activity classification algorithm using single-channel foot-mounted gyroscope
Author :
McCarthy, M.W. ; James, D.A. ; Lee, J.B. ; Rowlands, D.D.
Author_Institution :
Sports & Biomed. Eng. Lab., Griffith Univ., Brisbane, QLD, Australia
Abstract :
Wearable devices that measure and recognise human activity in real time require classification algorithms that are both fast and accurate when implemented on limited hardware. A decision-tree-based method for differentiating between individual walking, running, stair climbing and stair descent strides using a single channel of a foot-mounted gyroscope suitable for implementation on embedded hardware is presented. Temporal features unique to each activity were extracted using an initial subject group (n = 13) and a decision-tree-based classification algorithm was developed using the timing information of these features. A second subject group (n = 10) completed the same activities to provide data for verification of the system. Results indicate that the classifier was able to correctly match each stride to its activity with >90% accuracy. Running and walking strides in particular matched with >99% accuracy. The outcomes demonstrate that a lightweight yet robust classification system is feasible for implementation on embedded hardware for real-time daily monitoring.
Keywords :
decision trees; gyroscopes; sensors; decision-tree-based human activity classification algorithm; human activity measurement; human activity recognition; running; single-channel foot-mounted gyroscope; stair climbing; stair descent stride; walking; wearable device;
Journal_Title :
Electronics Letters
DOI :
10.1049/el.2015.0436