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Ghobadi et al., 2014 - Google Patents

Foot-mounted inertial measurement unit for activity classification

Ghobadi et al., 2014

Document ID
8812209385957737488
Author
Ghobadi M
Esfahani E
Publication year
Publication venue
2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society

External Links

Snippet

This paper proposes a classification technique for daily base activity recognition for human monitoring during physical therapy in home. The proposed method estimates the foot motion using single inertial measurement unit, then segments the motion into steps classify them by …
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